Three-dimensional scanning has recently become popular. However, many of the scanners used for such scanning trade-off between cost of acquisition and/or use, accuracy, ease-of-use and/or speed of acquisitions. Many commercial 3-D scanners emphasize the accuracy over all other parameters.
Scanners such as the Cyberware scanner may use an active illumination system in a fixed installation with controlled lighting. The object is transported using a motorized transport system. This can significantly increase the cost of the system. Moreover, this can make the system difficult to use in many installations, such as outdoors, where lighting may be difficult to control.
The present application teaches a system which allows scanning of 3D objects using shadow imaging.
In an embodiment, the system requires only a computer and a camera. The computer may be programmed to image shadows, and determine three dimensional information of an object from the imaged shadows.
These and other aspects will now be described in detail with reference to the accompanying drawings, wherein:
The present application describes capturing three-dimensional surfaces using a simplified system. In one embodiment, the lighting can be “weakly structured”, i.e, any light source can be used.
The general principle is shown in
A camera 110 monitors the image of the scene including the shadows, and produces an output which is sent to a processor 120. The processor estimates the three-dimensional shape of the scene from the sequence of images of the shadow as deformed by three-dimensional elements of the scene. The processing operates to extract scene depth at least at a plurality of pixels in the image, more preferably at every pixel in the image. It should be understood, however, that the pixels could be of any size.
More detail about the acquisition, including the geometry of the acquisition, is shown in
In
The end goal is to obtain three-dimensional coordinates of each point P in the three-dimensional scene. This may be done one pixel at a time. The three-dimensional location of the point P in space will be estimated corresponding to every pixel p at coordinates xc in the image obtained by the camera. Effectively, the user projects a succession of N shadows on the scene, thereby generating N shadow edges ξI, where I=1 . . . N. The points on this edge are estimated through triangulation, as described herein.
The shadow time t is defined as the time when the shadow boundary passes by a given pixel along a line xc. Πt represents the corresponding shadow plane at that time t. The leading edge of the shadow is represented by the value Λ.
The projection of Λ on the image plane λ is obtained by the camera at 305. This is done by a temporal processing operation of estimating the shadow time ts(xc) at each pixel xc. This temporal processing is followed by a spatial processing, in which the projection of Λ that is seen by the camera is represented by values λ. Therefore, the two portions of the shadow projected on the two planes Πh and Πv are visible on the image as the lines λh and λv. After extracting these two lines, the location in space of the two corresponding lines Λh and Λv are obtained at 310. This can be done by forming a plane between the camera and the λ lines. In
At 320, the actual point P corresponding to the pixel xc is retrieved by triangulating Π of T with the optical ray Oc from the camera.
If the light source S is at a known location in space, then the shadow plane Π(t) may be directly inferred from the point S and the line Λh. Consequently, no calculation of the additional plane Π(t) is not required. Therefore, two different embodiments are contemplated: a first having two calibrated planes (Πhand Πv) and an uncalibrated light source, and the second having one calibrated plane and a calibrated light source.
Camera Calibration
Camera calibration can be used to recover the location of the ground plane Πh and the intrinsic camera parameters. The intrinsic camera parameters may include focal length, principal point, and radial distortion factor. A first embodiment of the calibration technique herein uses a planar checkerboard pattern.
The projections on the image planes of the known grid corners are matched to the expected projection that is directly on the image. This is described in more detail in Tsai “A Versatile Camera Calibration Technique for High Accuracy 3-D Machine Vision Metrology using off-the-shelf TV cameras and Lenses”. A first order symmetric radial distortion model is used for the lens. When this technique is used with a single image, the principal point, that is the intersection of the optical axis with the image plane, cannot be easily recovered. This principal point is therefore assumed to be identical with the image center. A full camera model may be used which integrates multiple images of the planar grid at different locations in space with different orientations, e.g., using three or four images.
It has been found that the quality of reconstruction is relatively insensitive to errors in the principal point position. Therefore, either of the calibration techniques can be used.
As described above, when a single reference plane, e.g. Πh, is used for scanning, the location of the light source must be known in order to infer the shadow plane location Πt. Another embodiment allows calibration in the light source using an item, e.g. a pencil or a stake of known length. The operation and geometric theory is shown in
By taking a second view, with the pencil at different locations on the plane, a second independent constraint with another line Λ prime can be obtained. A closed form solution for the 3-D coordinates of S may then be derived by intersecting the two lines Λ and Λ prime using a least squared combination.
Two views may provide sufficient information. However since the problem is linear, the estimation can be made more accurate by obtaining more than two views.
Operation 305 in
These processing tasks allow finding the edge of the shadow. However, the search domains for the spatial and temporal processing tasks may be different. The spatial task operates on the spatial coordinates or image coordinate system, while the temporal task operates on the temporal coordinates system. One aspect of the present system enables making the two search procedures more compatible so that at any time to when the shadow passes through a pixel xc, the two searches still find the exact same point (x, y, t0) in space-time.
A technique is described herein called spatio-temporal thresholding. This thresholding is based on the observation that, as the shadow is scanned across the scene, each pixel x,y sees its brightness intensity going from an initial maximum value Imax down to a minimum value Imin. The pixel then returns to its initial value as the shadow goes away. This profile is characteristic even when there is a non-neglible amount of internal reflections in the scene.
For any given pixel {overscore (x)}c=(x,y), define Imin(x,y) and Imax(x,y) as its minimum and maximum brightness throughout the entire sequence:
The shadow is defined as to be the locations (in space-time) where the image I(x,y,t) intersects with the threshold image Ishadow(x,y); defined as the mean value between Imax(x,y) and Imin(x,y):
This may be also regarded as the zero crossings of the difference image ΔI(x,y,t) defined as follows:
ΔI(x,y,t)≐I(x,y,t)−Ishadow(x,y)
The concept of dual space may assist in certain calculations.
Shadow Plane Estimation Π(t)
Denote by {overscore (ω)}(t), {overscore (λ)}v(t) and {overscore (λ)}v(t) the coordinate vectors of the shadow plane Π(t) and of the shadow edges λh(t) and λv(t) at time t. Since λh(t) is the projection of the line of intersection Λh(t) between Π(t) and Πh, then (t) lies on the line passing through {overscore (ω)}h with direction {overscore (λ)}h(t) in dual-space (from proposition 1 of section 2.2.2). That line, denoted Λh(t), is the dual image of Λh(t) in dual-space as described above (see section 2.2.2). Similarly, {overscore (ω)}(t) lies on the line Λv(t) passing through {overscore (ω)}v with direction {overscore (λ)}v(t) (dual image of Λv(t)). Therefore, in dual-space, the coordinate vector of the shadow plane {overscore (ω)}(t) is at the intersection between the two known lines Λh(t) and Λv(t). In the presence of noise, these two lines might not exactly intersect (equivalently, the 3 lines λi, λh(t) and λv(t) do not necessarily intersect at one point on the image plane, or their coordinate vectors {overscore (λ)}i, {overscore (λ)}h(t) and {overscore (λ)}v(t) are not coplanar). However, one may still identify {overscore (ω)}(t) with the point that is closest to the lines in the least-squares sense. The complete derivations for intersecting a set of lines in space may be found in section 4.1.2. When interesting the two lines Λh(t) and Λv(t) in space, the solution reduces to:
where A is a 2×2 matrix and b is a 2-vector defined as follows (for clarity, the variable t is omitted):
Note that the two vectors {overscore (ω)}1(t) and {overscore (ω)}2(2) are the orthogonal projections, in dual-space, of {overscore (ω)}(t) onto Λh(t) and Λv(t) respectively. The norm of the difference between these two vectors may be used as an estimate of the error in recovering Π(t). If the two edges λh(t) and λv(t) are estimated with different reliabilities, a weighted least square method may still be used.
Using the additional vertical plane Πv enables extracting the shadow plane location without requiring the knowledge of the light source position. Consequently, the light source is allowed to move during the scan. This may allow use of natural light, e.g. the sun, for example.
When the light source is of fixed and known location in space, the plane Πv is not required. Then, one may directly infer the shadow plane position from the line λh(t) and from the light source position S:
{overscore (ω)}(t)={overscore (ω)}h+{overscore (λ)}h(t)
where
where {overscore (X)}s=[Xs Ys Ys]T is the coordinate vector of the light source S in the camera reference frame. In dual-space geometry, this corresponds to the intersecting the line Λh(t) with plane Ŝ, dual image of the source point S. Notice that <{overscore (λ)}h(t), {overscore (X)}s>=0 corresponds to the case where the shadow plane contains the camera center projection Oc. This is singular configuration that may make the triangulation fail (∥{overscore (ω)}(t)∥→∞). This approach requires an additional step of estimating the position of S using light source calibration. This reconstruction method was used in experiments 2 and 3.
The quantity 1−<{overscore (ω)}h, {overscore (X)}s> reduces to hs/dh where hs and dh are the orthogonal distances of the light source S and the camera center Oc to the plane Πh.
Since {overscore (ω)}h is the coordinate vector of plane Πh, the vector {overscore (n)}h=dh{overscore (ω)}h is the normal vector of the plane Πh in the camera reference frame. Let P be a point in Euclidean space (E) of coordinate vector {overscore (X)}. The quantity dh−<{overscore (n)}h, {overscore (X)}> is then the (algebraic) orthogonal distance of P to Πh (positive quantity if the point P is on the side of the camera, negative otherwise). In particular, if P lies on Πh, then <{overscore (n)}h,{overscore (X)}>=dh, which is equivalent to <{overscore (ω)}h, {overscore (X)}>=1. The orthogonal distance of the light source S to Πh is denoted hs. Therefore hs=dh−<{overscore (n)}h, {overscore (X)}>, or equivalently 1−<{overscore (ω)}h, {overscore (X)}s>=hs/dh.
According to that claim, the constant ah of equation 6.10 may be written as:
This expression highlights the fact that the algebra naturally generalizes to cases the light source is located at infinity (and calibrated). Indeed, in those cases, the ratio {overscore (X)}s/hs reduces to {overscore (d)}s/sin φ where {overscore (d)}s is the normalized light source direction vector (in the camera reference frame) and φ the elevation angle of the light source with respect to the Πh. In dual-space, the construction of the shadow plane vector {overscore (ω)}(t) remains the same: it is still at the intersection of Λh(t) with Ŝ. The only difference is that the dual image Ŝ is a plane crossing the origin in dual-space. The surface normal of that plane is simply the vector {overscore (d)}s.
Triangulation
Once the shadow time ts({overscore (x)}c) is estimated at a given pixel {overscore (x)}c=[xc yc 1]T (in homogeneous coordinates), the corresponding shadow plane Π(ts({overscore (x)}c)) is identified (its coordinate vector {overscore (ω)}c≐{overscore (ω)}(ts({overscore (x)}c))) by triangulation at 320. The point P in space associated to {overscore (x)}c is then retrieved by intersecting Π(ts({overscore (x)}c)) with the optical ray (0c, {overscore (x)}c):
If {overscore (X)}c=[Xc Yc Zc]T is defined as the coordinate vector of P in the camera reference frame.
Notice that the shadow time ts({overscore (x)}c) acts as an index to the shadow plane list Π(t). Since ts({overscore (x)}c) is estimate at sub-frame accuracy, the plane Π(ts({overscore (x)}c)) (actually it coordinate vector {overscore (ω)}c) results from linear interpolation between the two planes Π(t0−1) and Π(t0) if t0−1<ts({overscore (x)}c)<t0 and t0 integer:
{overscore (ω)}c=Δt{overscore (ω)}(t0−1)+(1−Δt){overscore (ω)}(t0),
where Δt=t0−ts({overscore (x)}c), 0≦Δt<1.
Pixels corresponding to occluded regions in the same cannot provide substantive information. Therefore, only pixels that have a contrast value larger than a predetermined threshold are used. In the experiments giving herein, where intensity values are encoded between zero and 255, this threshold may be 30. The threshold may also be proportional to the level of noise in the image.
Once the shadow time is estimated at any given pixel, the shadow plane can be triangulated from its coordinate vector. The point in space (P) associated to the given pixel is then retrieved by intersecting the shadow plane with this optical ray. This is shown in
the shadow time therefore ask as an index to the shadow plane list. This effectively provides range data to the actual object.
The recovered range data is used to form a mesh by connecting neighborhood points in triangles. Connectivity is directly given by the image. Two vertices become neighbors if their corresponding pixels are neighbors in the image. Moreover, since each vertex corresponds to a unique pixel, the texture mapping can be relatively easily carried out.
Observe that the calibration of the vertical plane Πv is also illustrated in the dual-space diagram: its coordinate vector {overscore (ω)}v is at the intersection of the Λi and the set of plane vectors orthogonal to {overscore (ω)}h (defining a plane in dual-space). The line Λi is at the intersection of the two planes Πh and Πv, and it dual image Λi is uniquely defined by the horizontal plane vector {overscore (ω)}h and the vector {overscore (λ)}i, coordinate vector of the line λi observed on the image plane. This calibration process is described above.
Once {overscore (ω)}v is known, the shadow plane vector {overscore (ω)}(t) associated to the shadow edge configuration at time t is at the intersection between the two lines Λh(t) and Λv(t), dual images of Λh (t) and Λv(t). Those two dual lines are defined by the two reference plane vectors {overscore (ω)}h and {overscore (ω)}v and the direction vectors {overscore (λ)}h(t) and {overscore (λ)}v(t) (vector coordinate of the two image lines λh(t) and λv(t)). This processing step is described in detail.
The final step consisting of identifying the point P in space by intersecting the optical ray (0c, p) with the shadow plane Π is also illustrated on the dual-space diagram. In dual-space, that stage corresponds to finding the dual image of P that is the unique plane in dual-space containing the point {overscore (ω)}(t) (shadow plane vector) with orthogonal vector {overscore (x)}c (homogeneous coordinate vector of the image point p).
An alternative embodiment uses a single reference plane (Πh without Πv) with a calibrated light source is summarized on
The point P in space is determined by intersecting the optical ray Oc, P with the shadow plane Π. This corresponds to finding the dual image of P that is the unique plane in dual space that contains the point including the shadow plane vector with the orthogonal vector. This is done by triangulation as described above.
The alternate setup uses a single reference plane with a calibrated light source as shown in
The accuracy of this system is not necessarily increased by decreasing the scanning speed. However, the scanning speed must be sufficiently slow to allow each temporary pixel profile to be sufficiently sampled. A sharper shadow edge will require slower scanning so that the temporal profile at each pixel can be properly sampled. The reality, however, is that the speed of moving the shadow is really limited by the response speed of the image acquisition element.
In this system, range data can only be retrieved for pixels that correspond to regions in the scene that are illuminated by the light source and imaged by the camera. Better coverage of the scene may be obtained from multiple scans of the same scene keeping the light source at different locations each time and keeping the camera position fixed.
The previous system has described accurately characterizing 3-D surface based on projection of shadows on a known reference plane. Another embodiment describes operating without using a background plane as the reference plane, and instead using a calibrated light source.
A summary of the scanning scenario for a flat reference plane is shown in
A curved edge shadow ξ is projected on the image during scanning. All points in space P are estimated as the curved edge moves across the image, by estimating from the points p on ξ. Π denotes the corresponding shadow plane. The image 930 corresponds to that image which is seen by the camera. The corresponding points A and B in the scene may be found by intersecting Πd with the optical rays (Oc, a) and (Oc, b) from the image. The shadow plane Π may then be inferred from the three points in space: S, A and B.
For a given position of the shadow, once the shadow plane Π is identified, the 3-D image of the entire shadow edge ξ can be determined by geometric triangulation using, among other things, the known position of the reference plane Πd. This embodiment describes finding the 3D image, using a similar overall technique to that described above, but without knowing Π.
The extension to this embodiment takes into account a number of issues about the image. First, depth information at two distinct points on an edge propagates along the entire edge. Also, if depths Z of two distinct points a and b of this shadow edge ξ are known, then the depth at any other point in the image ZP can also be found. Depth at two distinct points propagates over the whole image.
Let {overscore (x)}A and {overscore (x)}B be the homogeneous coordinate vectors of the two points α and b on the image plane {overscore (x)}A=[xA VA 1]T. Then if the two depths ZA and ZB are know, then so are the full coordinate vectors of the associated points A and B in the 3D scene: {overscore (X)}A=ZA{overscore (x)}A and {overscore (X)}B=ZB{overscore (x)}B. Therefore the associated shadow plane Π is the unique plane passing through the three points A, B and S. Once Π is recovered, any point p along the edge ε may be triangulated leading to Zp.
The depths of two points a and b may be known if they lie on the known reference plane Πd. Consequently, following Property 1, depth information at a and b propagate to every point p along the edge ε.
Depths can also propagate from edge to edge. This concept is used here to allow the depths to propagate over the entire image. According to the present embodiment, knowledge of the depth of three distinct points in the image can be used to recover the entire scene depth map. Hence, knowledge of these three distinct points can be used in place of knowledge of the reference plane Πd.
A, b and c are defined as three distinct points in the scannable area of the image. For purposes of this explanation, it can be assumed their depths Za, ZB and Zc are known. By appropriate shadow scanning, the depth of any point p in the image can be obtained.
This can be demonstrated using a constructive example. A shadow edge ξ1 that goes through points a and B can be projected. A second shadow edge ξ2 can be projected through points a and c. This is shown in
For every point p on the image, there can be an edge ξp that passes through p and intersects both ε1 and ε2 at distinct points P1 and P2 which points are each different than a. Since P1 and P2 each lie on the two known edges at ε1 and ε2, the depths of ξ1 and ξ2 must also be known. Therefore, since two points on the shadow edge εp. are known, the depth of every point along ξp may also be computed. In particular, the depth of the point p can be computed as shown in
As stated above, this means that knowledge of the depth at three distinct points in the image becomes sufficient to recover the entire scene depth map. To propagate depth information from {a, b, c} to p uses intersecting points p1 and p2 of the shadow edges.
The system uses edges ξ. An edge ξ is an isolated edge if and only if it does not intersect with at least two other edges on the image. Depth information can not be propagated to any isolated edge from the rest of the edges. Isolated edges, therefore, can not be used in this system.
This embodiment follows the summary flowchart of
At 1110, a set of shadow images is obtained. The shadows are extracted, and their intersections are computed.
Let Πi be the ith shadow plane generated by the stick (i=1, . . . , N), with corresponding plane vector {overscore (ω)}i=[wxi wyi wzi]T (in dual space). For all vectors {overscore (ω)}t to be well defined, it is required that none of the planes ΠI contain the camera center 0c. Denote by εI the associated shadow edge observed on the image plane. The N vectors {overscore (ω)}I constitute then the main unknowns in the reconstruction problem. Once those vectors are identified, all edges can be triangulated in space. Therefore, there is apparently a total of 3N unknown variables. However, given the scanning scenario, every shadow plane Πi must contain the light source point S. Therefore, {overscore (X)}s=[Xs Ys ZS]T the light source coordinate vector in the camera reference frame (known), provides
∀i=1, . . . , N, <{overscore (ω)}i,{overscore (X)}S>=1
Equivalently, in dual-space, all shadow plane vectors {overscore (ω)}i must lie on the plane Ŝ, dual-image on the light source point S. One may then explicitly use that constraint, and parameterize the vectors {overscore (ω)}i using a two-coordinate vector ūi=[uxi uyi]T such that:
{overscore (ω)}i=Wūi+{overscore (ω)}0=[{overscore (ω)}s1 {overscore (ω)}s2]ūi+{overscore (ω)}0
where {overscore (ω)}0, {overscore (ω)}s1, and {overscore (ω)}s2 are three vectors defining the parameterization. For example, if XS≠0, one may then keep the last two coordinates of {overscore (ω)}hd i as parameterization: ūi=[wyi wzi]T, picking {overscore (ω)}s1=[−YS/XS 1 0]T, {overscore (ω)}s2=[−ZS/XS 0 1]T and {overscore (ω)}0=[1/XS 0 0]T. Any other choice of linear parameterization is acceptable (there will always exist one give that is S≠0c). In order to define a valid coordinate change, the three non-zero vectors {overscore (ω)}0, {overscore (ω)}s1, and {overscore (ω)}s2 must only satisfy the three conditions (a) <{overscore (ω)}0, {overscore (X)}S>=1, (b) <{overscore (ω)}s1, {overscore (X)}S>=0, (c) {overscore (ω)}s1≠{overscore (ω)}s2. In dual-space, {{overscore (ω)}s1, {overscore (ω)}s2} (or W) may be interpreted as a basis vector of the plane Ŝ and {overscore (ω)}0 as one particular point on that plane.
After that parameter reduction, the total number of unknown variables reduces to 2N: two coordinates uxi and uyi per shadow plane Πi. Given that reduced plane vector parameterization (called ū-parameterization), global reconstruction can be carried out.
Intersecting points between the edges themselves depth information that propagates from edge to edge. These points provide geometrical constraints that may be extracted from the images. Therefore, a first operation may be carried out by studying the type of constraint provided by an elementary edge intersection.
Assume that the two edges εn and εm intersect at the point pk on the image (n≠m), and let Πn and Πm be the two associated shadow planes with coordinate vectors {overscore (ω)}n and {overscore (ω)}m as shown in
<{overscore (x)}k,{overscore (ω)}n−{overscore (ω)}m>=0
This unique equation captures then all the information that is contained into an elementary edge intersection. There is a very intuitive geometrical interpretation of that equation: Let Λk be the line of intersection between the two planes Πn and Πm, in space, and let λk be the perspective projection of that line onto the image plane. Then, the vector {overscore (λ)}={overscore (ω)}n−{overscore (ω)}m is one coordinate vector of the line λk. Therefore, equation 7.3 is merely <{overscore (x)}k, {overscore (λ)}k>=0, which is equivalent to enforcing the point pk to lie on λk (see
<{overscore (y)}K,ūN−ūm>=0
where {overscore (y)}k=WT{overscore (x)}k (a 2-vector). Notice that this new equation remains linear and homogeneous in that reduced parameter space.
Let Np be the total number of intersection points pk (k=1, . . . , Np) existing in the edge-web (the entire set of edges). Assume that a generic pk lies at the intersection of the two edges εn(k) and εm(k) (n(k) and m(k) are the two different edge indices).
The total set of constraints associated to the Np intersections may then be collected in the form of Np linear equations:
∀k=1, . . . Np, <{overscore (y)}k,ūm(k)−ūn(k)>=0
which may also be written in a matrix form:
AŪ=0Np
where 0Np is a vector of Np zeros, A is an Np×2N matrix (function of the {overscore (y)}k coordinate vectors only) and Ū is the vector of reduced plane coordinate (of length 2N):
The vector Ū={ūi}i . . . N.
According to this equation, the solution for the shadow plane vectors lies in the null space of the matrix A. The rank of that matrix or equivalently the dimension of its null space are identified at 1120, isolated edges and isolated group of edges are rejected. This forms an edge web which is fully connected, resulting in a set of an edges ξI and NP intersection points pK.
An edge-web is fully connected if and only if it cannot be partitioned into two groups of edges which have less that two (zero or one) points in common. In particular a fully connected edge-web does not contain any isolated edge. Notice that under the condition only, depth information can freely propagate though the entire web. A normal scanning scenario is then defined as a scenario where the edge-web is fully connected and the total number of intersections is larger than 2N (this last condition will be relaxed later on).
In a normal scanning scenario, the rank of the matrix A is exactly 2N-3 (or alternatively, the null space of A is of dimension 3).
This is because in a normal scanning scenario, the reconstruction problem has at most three parameters. Consequently the dimension of the null space of A is at most 3, or equivalently, A is of rank at least 2N-3 in fact, usually exactly 2N-3. At 1130, a unitary seed vector U0 is calculated. The scene factor is calculated using singular value decomposition or SVD.
For every solution vector Ū={ūi} to the equation, there exists three scalars α, β and λ such that:
∀i=1, . . . , N, ūi=yūi0+ū0
which are also obtained at 1130 with ū0=[α β]T. Conversely, for any scalars α, β and ç, the vector Ū={ūi} given by the equation is solution of a linear system. The vector Ū0 is called a “seed” solution from which all solutions of the linear system may be identified.
Any non-trivial solution vector Ū0={ūi0} may be used as seed as long as it is one solution of the equation the solution vector (called the unitary seed vector) that satisfies the two extra normalizing conditions: (a)
(b)
(unit norm) may be used. Those conditions assure a non trivial solution meaning that all ūI cannot be identical. The unitary seed vector Ū0 satisfies the linear equation BŪ0=on2-0, where b is the following augmented (Np−2)×2N matrix:
The last two rows of B enforce the zero-mean constraint, bringing the rank of B to 2N−1 (=(2N−3)+2). Therefore, the dimension of null space of B is one, leading to Ū0 being the unitary eigenvector associated to the unique zero eigenvalue of B. Consequently, a standard singular value decomposition (SVD) of B allows to naturally retrieve Ū0. Such a decomposition leads to the following relation:
B=U S VT
where U and V=[V1 V2 . . . V2N] are two unitary matrices of respective sizes (Np+2)×(Np+2) and 2N×2N, and S is the (Np+2)×2N matrix of singular values. The unitary seed vector Ū0 is then the column vector of V associated to the zero singular value. Without loss of generality, assume it is the last column vector: Ū0={ūi0}=V2N. Alternatively, one may retrieve the same V matrix by applying the same decomposition on the smaller 2N×2N symmetric matrix C=BTB. Such a matrix substitution is advantageous because the so-defined matrix, C, has a simple block structure:
where each matrix element Cij is of size 2×2.
Two shadow edges can only intersect once (two shadow planes intersect along a line that can only interest the scene at a single point). All matrices Cij have the following expressions:
where I2 is the 2×2 identity matrix. Observe that, every off-diagonal matrix element Cij (i≠j) depends only on the intersection point pk(ij) between edges εI and εj. Every diagonal block Ci,i however is function of all the intersection points of ε1 with the rest of the edge-web (the sum is over all points pk(i,n), for n=(1, . . . , N).
Once the C matrix is built, V is retrieved by singular value decomposition (1130;
leading the set of all possible solutions of the equation. Euclidean reconstruction is thus achieved up to the three parameters α, β and λ.
Once the seed solution Ū0={ūi0} is found (by SVD), one may identify the final “Euclidean” solution Ū={ūI} at 1140 if the depth of (at least) three points in the scene are known. Without loss of generality, assume that these points are pk for k=1, 2, 3 (with depths Zk). Those points provide then three linear equations in the unknown coefficient vector {overscore (α)}=[α, β γ]T
for k=1, 2, 3 resulting into a linear system of three equations and three unknowns. This system may then be solved, yielding the three coefficients α, β and λ, and therefore the final solution vector Ū. Complete Euclidean shape reconstruction is thus achieved. If more points are used as initial depths, the system may be solved in the least squares sense (once again optimal in the inverse depth error sense). Notice that the reference depth points do not have to be intersection points as the equation contends. Any three (or more) points in the edge-web may be used.
While the above has described strict reconstruction, other clues about the scene may also be used. These clues may include planarity of portions on the scene, angles between the different planes, or mutual distances between points in space. Any of these geometric clues can help either simplify the calculations, or make the calculations more strictly Euclidean. Another embodiment, shown in
Two shadow planes Πn and Πm are generated from the two light sources as shown in
The notation in the foregoing refers to “Dual Space” and “B-shape”. The meaning of this notation is further described herein. All definitions are given in Euclidean space as well as in projective geometry. A mathematical formalism called B-dual-space geometry is derived from projective geometry. This formalism enables us to explore and compute geometrical properties of three-dimensional scenes with simple and compact notation. This will be illustrated in the following chapter when applying that formalism to the problem of camera calibration.
Let (E) be the 3D Euclidean space. For a given position of a camera in space we define =(Oc, Xc, Yc, Zc) as the standard frame of reference (called “camera reference frame”) where Oc is the camera center of projection, and the three axes (Oc, Xc), (Oc, Yc) and (Oc, Zc) are mutually orthogonal and right-handed ((Oc, Xc) and (Oc, Yc) are chosen parallel to the image plane).
We may then refer to a point P in space by its corresponding Euclidean coordinate vector {overscore (X)}=[X Y Z]T in that reference frame . The Euclidean space may also be viewed as a three-dimensional projective space 3. In that representation, the point P is alternatively represented by the homogeneous 4-vector {overscore (X)}≃[X Y Z 1]T. The sign ≃ denotes a vector equality up to a non-zero scalar. Therefore, any scaled version of [X Y Z 1]T represents the same point in space.
A plane Π in space is defined as the set of points P of homogeneous coordinate vector {overscore (X)} that satisfy:
<{overscore (π)},{overscore (X)}>=0 (2.1)
where π≃[πxπyπzπt] is the homogeneous 4-vector parameterizing the plane Π (<.> is the standard scalar product operator). Observe that if {overscore (π)} is normalized such that πx2+πy2+πz2=1, then {overscore (n)}x=[πxπyπz]T is the normal vector of the plane Π (in the camera reference frame ) and dπ=−πt its orthogonal (algebraic) distance to the camera center Oc
Image Plane and Perspective Projection
Let (I) be the 2D image plane. The image reference frame is defined as (c, xc, yc) where c is the intersection point between (Oc, Zc) (optical axis) and the image plane, and (c, xc) and (c, yc) are the two main image coordinate axes (parallel to (Oc, Xc) and (Oc, Yc)). The point c is also called optical center or principal point.
Let p be the projection on the image plane of a given point P of coordinates {overscore (X)}=[X Y Z]T, and denote {overscore (x)}=[x y]T its coordinate vector on the image plane. Then, the two vectors {overscore (X)} and {overscore (x)} are related through the perspective projection equation:
This projection model is also referred to as a “pinhole” camera model.
In analogy to Euclidean space, it is sometimes useful to view the image plane as a two-dimensional projective space 2. In that representation, a point p on the image plane has homogeneous coordinate vector {overscore (x)}≃[x y 1]T. Similarly to 3, any scaled version of [x y 1]T describes the same point on the image plane.
One advantage of using projective geometry is that the projection operator defined in equation 2.2 becomes a linear operator from 3 to 2.
{overscore (x)}≃P{overscore (X)} with P=[I3×3 03×1] (2.3)
where {overscore (X)} and {overscore (x)} are the homogeneous coordinates of P and p respectively, I3×3 is the 3×3 identify matrix and 03×1 is the 3×1 zero-vector. Observe from equation 2.3 that {overscore (x)} is equal (up to a scale) to the Euclidean coordinate vector {overscore (X)}=[X Y Z] of P:
{overscore (x)}≃{overscore (X)} (2.4)
Therefore {overscore (x)} is also referred to as the optical ray direction associated to P.
A line λ on the image plane is defined as the set of points p of homogeneous coordinate vectors {overscore (x)} that satisfy:
<{overscore (λ)},{overscore (x)}>=0 (2.5)
where {overscore (λ)}=[λx λy λz]T is the homogeneous 3-vector defining the line λ. Observe that if {overscore (λ)} is normalized such that λx2+λy2=1, then {overscore (n)}λ=[λx λy]T is the normal vector of the line λ (in the image reference frame) and dλ=−λz its orthogonal (algebraic) distance to the principal point c.
There exists useful relations between lines on the image plane and planes in space, as illustrated by the two following examples.
Consider a line λ on the image plane of coordinate vector {overscore (λ)}=[λx λy λz]T. Then, the set of points P in space that project onto λ is precisely the plane Πλ spanned by λ and the camera Oc. Let {overscore (π)}λ be the coordinate vector of Πλ. Let us compute {overscore (π)}λ as a function of {overscore (λ)}. According to equations 2.3 and 2.5, a point P of homogeneous coordinate vector {overscore (X)} will lie on Πλ if and only if:
<{overscore (λ)},P{overscore (X)}>=0 (2.6)
this relation enforces the projection of P to lie on λ. This may be alternatively written:
<PT{overscore (λ)},{overscore (X)}>=0 (2.7)
Therefore the plane coordinates {overscore (π)}λ has the following expression:
Consider two planes in space Π1 and Π2 of respective coordinate vectors {overscore (π)}1≃[πx
This system yields:
(πt
Since the homogeneous coordinate vector of p is {overscore (x)}≃{overscore (X)}=[X Y Z]T, equation 2.10 reduces to a standard image line equation:
<{overscore (λ)},{overscore (x)}>=0 (2.11)
where
that is the coordinate vector of λ, projector of Λ=Π1∩Π2.
Rigid Body Motion Transformation
Consider a set on N points Pi in space (i=1, . . . , N), and let {overscore (X)}i=[Xi Yi Zi]T be their respective coordinate vectors in the camera reference frame . Suppose the camera moves to a new location in space, and let {overscore (X)}i′=[Xi′ Yi′ Zi′]T be the coordinate vectors of the same points Pi in the new camera reference frame ′. Then {overscore (X)}i and {overscore (X)}′i are related to each other through a rigid body motion transformation:
∀i=(1, . . . N), {overscore (X)}i′=R{overscore (X)}i+T (2.13)
Where RεSO(3), which is a special orthogonal 3×3 matrix, and T are respectively a 3×3 rotation matrix and a 3-vector that uniquely define the rigid motion between the two camera positions. The matrix R is defined by a rotation vector {overscore (Ω)}=[Ωx Ωy Ωz]T such that:
R=e{overscore (Ω)}Λ (2.14)
where {overscore (Ω)}Λ is the following skew-symmetric matrix:
Equation 2.14 may also be written in a compact form using the Rodrigues' formula:
where θ=∥{overscore (Ω)}∥, and {overscore (Ω)}{overscore (Ω)}T is the following semi-positive definite matrix:
The fundamental rigid body motion equation 2.13 may also be written in projective space 3. In 3, the point Pi has homogeneous coordinate vectors {overscore (X)}i ≃[Xi Yi Zi 1]T and {overscore (X)}i′≃[Xi′ Yi′ Zi′ 1]T in the first () and second (′) reference frames respectively. Then, equation 2.13 may be written:
where 01×3 is a 1×3 zero row vector. Observe that the inverse relation may also be written as follows:
Let pi′ be the projection of Pi onto the second camera image plane, and let {overscore (x)}i′ be the homogeneous coordinate vector. Then, following the equation 2.3, we have:
{overscore (x)}i′≃P{overscore (X)}i′ (2.20)
which may be also written:
{overscore (x)}i′≃P′{overscore (X)}i (2.21)
where: which may be also written:
P′=PD=[RT] (2.22)
The matrix P′ is the projection matrix associated to the second camera location.
Consider now a plane Π of homogeneous coordinate vectors {overscore (π)} and {overscore (π)}′ in both camera reference frames and ′. How do {overscore (π)} and {overscore (π)}′ relate to each other? Consider a generic point P on Π with homogeneous coordinate vectors {overscore (X)} and {overscore (X)}′ in both reference frames. According to equation 2.1, we have:
<{overscore (π)}, {overscore (X)}>=0 (2.23)
which successively implies:
<{overscore (π)},D−1{overscore (X)}i′>=0 (2.24)
<D−T{overscore (π)},{overscore (X)}i′>=0 (2.25)
Therefore:
Similarly, the plane coordinate vector before motion {overscore (π)} may be retrieved from {overscore (π)}′ through the inverse expression:
In order to put in practice these concepts, let us go through the following example:
In the second reference frame ′ (after camera motion), consider a line λ′ on the image plane, and the plane Π that this line spans with the camera center (similarly to example 1. Let {overscore (λ)}′ and {overscore (π)}′ be the homogeneous coordinate vectors of λ′ and Π in ′. Let us compute {overscore (π)}, the coordinate vector of Π in the initial camera reference frame (before motion) as a function of {overscore (λ)}′, R and T.
According to equation 2.8, {overscore (π)}′ and {overscore (λ)}′ are related through the following expression:
Then, {overscore (π)} may be calculated from {overscore (π)}′ using equation 2.27:
where P′ is the projection matrix associated to the second camera location (eq. 2.22). Observe the similarity between equations 2.8 and 2.29.
Definition of B-Dual-Space
As presented in the previous section, a plane Π in space is represented by an homogeneous 4-vector {overscore (π)}≃[πx πy πz πt]T in the camera reference frame =(0c,Xc,Yc,Zc) (see equation 2.1). Alternatively, if Π does not contain the camera center Oc (origin of ) then it may be represented by a 3-vector {overscore (ω)}=[ωx ωy ωz]T, such that:
<{overscore (ω)}, {overscore (X)}>=1 (2.30)
for any point PεΠ of coordinate vector {overscore (X)}=[X Y Z]T in . Notice that {overscore (ω)}={overscore (n)}π/dπ where {overscore (n)}π is the unitary normal vector of the plane and dπ≠0 its distance to the origin. Let (Ω)=3. Since every point {overscore (ω)}ε(Ω) corresponds to a unique plane Π in Euclidean space (E), we refer to (Ω) as the ‘plane space’ or ‘B-dual-space’. For brevity in notation, we will often refer to this space as the dual-space. There exists a simple relationship between plane coordinates in projective geometry and dual-space geometry:
In that sense, dual-space geometry is not a new concept in computational geometry. Originally, the dual of a given vector space (E) is defined as the set of linear forms on (E) (linear functions of (E) into the reals ). In the case where (E) is the three dimensional Euclidean space, each linear form may be interpreted as a plane Π in space that is typically parameterized by a homogeneous 4-vector {overscore (π)}≃[πx πy πz πt]T. A point P of homogeneous coordinates {overscore (X)}=[X Y Z 1]T lies on a generic plane Π of coordinates {overscore (π)} if and only if <{overscore (π)}, {overscore (X)}>=0 (see [13]). Our contribution is mainly the new {overscore (ω)}-parameterization. We will show that this representation exhibits useful properties allowing us to naturally relate objects in Euclidean space (planes, lines and points) to their perspective projections on the image plane (lines and points). One clear limitation of that representation is that plane crossing the camera origin cannot be parameterized using that formalism (for such planes πt=0). However, this will be shown not to be a critical issue in all geometrical problems addressed in this thesis (as most planes of interest do not contain the camera center).
Properties of B-Dual Space
This section presents the fundamental properties attached to dual-space geometry.
The following proposition constitutes the major property associated to our choice of parameterization:
Proposition 1: Consider two planes Πa and Πb in space, with respective coordinate vectors {overscore (ω)}a and ωb({overscore (ω)}a≠{overscore (ω)}b) in dual-space, and let Λ=Πa∩Πb be the line of intersection between them. Let λ be the perspective projection of Λ on the image plane, and {overscore (λ)} its homogeneous coordinate vector. Then {overscore (λ)} is parallel to {overscore (ω)}a−{overscore (ω)}b. In other words, {overscore (ω)}a−{overscore (ω)}b is a valid coordinate vector of the line λ.
Proof: Let PεΛand let p be the projection of P on the image plane. Call {overscore (X)}=[X Y Z]T and
the respective coordinates of P and p. We successively have:
Notice that this relation is significantly simpler than that derived using standard projective geometry (equation 2.12).
In addition, observe that the coordinate vector {overscore (ω)} of any plane Π containing the line Λ lies on the line connecting {overscore (ω)}a and {overscore (ω)}b in dual-space (Ω). We denote that line by {circumflex over (Λ)} and call it the dual image of Λ. The following definition generalizes that concept of dual image to other geometrical objects:
Definition: Let be a sub-manifold of (E) (e.g., a point, line, plane, surface or curve). The dual image of of is defined as the set of coordinates vectors {overscore (ω)} in dual-space (Ω) representing the tangent planes to . Following that standard definition (see [13, 14]), the dual images of points, lines and planes in (E) may be shown to be respectively planes, lines and points in dual-space (Ω). Further properties regarding non-linear sub-manifolds may be observed, such as for quadric surfaces in [15] or for general apparent contours in space in [16].
The following five propositions cover the principal properties attached to the dual-space formalism.
Proposition 2—Parallel Planes—Horizon Line: Let Πa and Πb be two parallel planes of coordinates {overscore (ω)}a and {overscore (ω)}b. Then {overscore (ω)}a parallel to {overscore (ω)}b.
Proof: The planes have the same surface normals {overscore (n)}a={overscore (n)}b. Therefore, the proposition follows from definition of {overscore (ω)}.
The horizon line H represents the “intersection” of two planes at infinity. The dual image of H is the line Ĥ connecting {overscore (ω)}a and {overscore (ω)}b and crossing the origin of the (Ω) space. The direction of that line is not only the normal vector of the two planes {overscore (n)}a={overscore (n)}b, but also the representative vector {overscore (λ)}H of the projection λH of H (horizon line) on the image plane (according to proposition 1). Although H is not a well-defined line in Euclidean space (being a line at infinity), under perspective projection, it may give rise to a perfectly well defined line λH on the image plane (for example a picture of the ocean). Once that line is extracted, the orientation of the plane is known:
{overscore (ω)}a≃{overscore (ω)}b≃{overscore (λ)}H (2.32)
Proposition 3—Orthogonal Planes: If two planes Πa and Πb are two orthogonal, then so are their coordinate vectors {overscore (ω)}a and {overscore (ω)}b in dual-space. Consequently, once one of the plane {overscore (ω)}a is known, then {overscore (ω)}b is constrained to lie in the sub-space orthogonal to {overscore (ω)}a, a plane in dual-space.
Proposition 4—Intersecting lines: Consider two lines Λa and Λb intersecting at a point P, and call Π the plane that contains them. In dual-space, the two dual lines {circumflex over (Λ)}a and {circumflex over (Λ)}b necessarily intersect at {overscore (ω)} the coordinate vector of Π (since {overscore (ω)} is the plane that contains both lines). Similarly, the dual image {circumflex over (P)} of P is the plane in dual-space that contains both dual lines {circumflex over (Λ)}a and {circumflex over (Λ)}b. Notice that {circumflex over (P)} does not cross the origin of (Ω).
Proposition 5—Parallel lines—Vanishing Point: Consider two parallel lines Λa and Λb belonging to the plane Π of coordinates {overscore (ω)}. Then {overscore (ω)} is at the intersection of the two dual lines {circumflex over (Λ)}a and {circumflex over (Λ)}b. In dual-space, the plane containing both dual lines {circumflex over (Λ)}a and {circumflex over (Λ)}b is the dual image of {circumflex over (V)} of the vanishing point V, i.e., the intersection point of Λa and Λb in Euclidean space. If H is the horizon line associated with Π, then VεH, which translates in dual-space into Ĥε{circumflex over (V)}. Since Ĥ contains the origin, so does {circumflex over (V)}. Notice that once the perspective projection v of V is observable on the image plane, the plane {circumflex over (V)} is entirely known (since its orientation is the coordinate vector of v).
Proposition 6—Orthogonal lines: Let Λ1 and Λ2 be two orthogonal lines contained in the plane Π of coordinates {overscore (ω)}) and let {overscore (ω)}={circumflex over (Λ)}1∩{circumflex over (Λ)}2. Consider the set of planes orthogonal to Π. In the dual-space, that set is represented by a plane containing the origin, and orthogonal to {overscore (ω)} (see proposition 3). Call that plane {circumflex over (V)} (it can be shown to be the dual image of a vanishing point). In that set, consider the two specific planes Π1 and Π2 that contain the lines Λ1 and Λ2. In the dual-space, the representative vectors {overscore (ω)}1 and {overscore (ω)}2 of those two planes are defined as the respective intersections between {circumflex over (V)} and the two lines {circumflex over (Λ)}1 and {circumflex over (Λ)}2. Then, since the two lines Λ1 and Λ2 are orthogonal, the two vectors {overscore (ω)}1 and {overscore (ω)}2 are also orthogonal. This implies that the images of the two vanishing points {circumflex over (V)}1 and {circumflex over (V)}2 associated to the lines Λ1 and Λ2 are orthogonal in the dual-space. Two vanishing points are enough to recover the horizon line H associated with a given plane Π in space. Therefore, observing two sets of parallel lines belonging to the same plane under perspective projection allows us to recover the horizon line, and therefore the orientation of the plane in space (from proposition 2). The horizon line H corresponding to the ground floor Π is recovered from the two vanishing points V1 and V2.
2.2.3 Geometrical Problems Solved in B-Dual-Space
This section presents several useful geometrical problems solved using dual-space geometry.
Let Π be a plane in space of coordinate vector {overscore (ω)}. Let P be a point on H with coordinate vector {overscore (X)}=[X Y Z]T. Let p be the projection of P onto the image plane, and denote {overscore (x)}≃[x y 1]T its homogeneous coordinate vector. The triangulation problem consists of finding the point P from its projection p and the plane Π, or calculating {overscore (X)} from {overscore (x)} and {overscore (ω)}. Since P lies on the optical ray (Oc, p), its coordinate vector satisfies {overscore (X)}≃{overscore (x)} or equivalently, {overscore (X)}=Z{overscore (x)}, with {overscore (x)}=[x y 1]T. In addition, since P lies on the plane Π, we have <{overscore (ω)},{overscore (X)}>1. This implies:
This is the fundamental triangulation equation between a ray and a plane in space.
Consider two camera frames and ′ and let {R, T} be the rigid motion parameters between and ′. Let Π be a plane in space of coordinate vectors {overscore (ω)} and {overscore (ω)}′ in and ′ respectively. How do {overscore (ω)} and {overscore (ω)}′ relate to each other?
Consider a generic point P on Π of coordinate vectors {overscore (X)} and {overscore (X)}′ in and ′ respectively. Then, {overscore (X)}′=R{overscore (X)}+T. Since PεΠ, we may write:
<{overscore (ω)}′, {overscore (X)}′>=1 (2.34)
<{overscore (ω)}′, R{overscore (X)}+T>=1 (2.35)
<RT{overscore (ω)}′, {overscore (X)}>=1−<{overscore (ω)}′, T> (2.36)
Therefore:
This expression is the equivalent of equation 2.27 in dual-space geometry. Notice that the condition<{overscore (w)}′, T>≠1 is equivalent to enforcing the plane Π not to contain the origin of the first camera reference frame . That is a necessary condition in order to have a well defined plane vector {overscore (ω)}. The inverse expression may also be derived in a similar way:
In that case, the condition <{overscore (ω)},−RTT>≠1 constraints the plane Π not to contain the origin of the second reference frame ′ (in order to have a well defined vector {overscore (ω)}′).
In some cases, only one of the two plane vectors {overscore (ω)} or {overscore (ω)}′ is well-defined. The following example is one illustration of such a phenomenon.
Consider the geometrical scenario of example 5 where the plane Π is now spanned by a line λ′ on the image plane of the second camera reference frame ′ (after motion). In that case, the coordinate vector {overscore (ω)}′ is not well defined (since by construction, the plane Π contains the origin of ′). However, the plane vector {overscore (ω)} may very well be defined since Π does not necessarily contain the origin of the first reference frame . Indeed, according to equation 2.29, the homogeneous coordinate vector {overscore (π)} of Π in is given by:
where {overscore (λ)}′ is homogeneous coordinate vector of the image line λ′ in ′. Then, according to expression 2.31, the corresponding dual-space vector {overscore (ω)} is given by:
which is perfectly well-defined as long as Π does not contain Oc, or equivalently if (T, {overscore (λ)}′)≠0. This condition is equivalent to enforcing the line not to contain the epipole on the image plane attached to camera frame. The point is the projection of onto the image plane attached to the second camera reference frame.
triangulation of an optical ray (Oc,P) with the plane H spanned by the line λ′ in the other camera reference frame ′. Let {overscore (X)}=[X Y Z]T be the coordinates of P in space and {overscore (x)}=[x y 1]T the coordinates of its known projection p on the image plane. Equation 2.41 provides then an expression for the coordinate vector {overscore (ω)} of Π in frame :
where {overscore (λ)}′ is the homogeneous coordinate vector of the image line λ′ in ′. The triangulation expression given by equation 2.40 returns then the final coordinate vector of P:
Observe that the plane Π is not allowed to cross the origin of the initial reference frame , otherwise, triangulation is impossible. Therefore the plane vector {overscore (ω)} is perfectly well defined (i.e., (T,{overscore (λ)}′)≠0).
3.1.1 Camera Calibration in B-Dual-Space Geometry
The position of a point p in a real image is originally expressed in pixel units. One can only say that a point p is at the intersection of column px=150 and row py=50 on a given digitized image. So far, we have been denoting {overscore (x)}=[x y 1]T the homogeneous coordinate vector of a generic point p on the image plane. This vector (also called normalized coordinate vector) is directly related to the 3D coordinates {overscore (X)}=[X Y Z]T of the corresponding point P is space through the perspective projection operator (eq. 2.2). Since in practice we only have access to pixel coordinates {overscore (p)}=[px py 1]T, we need to establish a correspondence between {overscore (p)} and {overscore (x)} (from pixel coordinates to optical ray in space).
Since the origin of the image reference frame is at the optical center c (or principal point), it is necessary to know the location of that point in the image: {overscore (c)}=[cx cy]T (in pixels). Let fo be the focal distance (in meters) of the camera optics (distance of the lens focal point to the imaging sensor), and denote by dx and dy the x and y dimensions of the pixels in the imaging sensor (in meters). Let fx=fo/dx and fy=fo/dy (in pixels). Notice that for most imaging sensors currently manufactured, pixels may be assumed perfectly square, implying dx=dy or equivalently fz=fy. In the general case fx and fy may be different.
Then, the pixel coordinates {overscore (p)}=[px py 1]T of a point on the image may be computed from its normalized homogeneous coordinates {overscore (x)}=[x y 1]T through the following expression:
That model assumes that the two axes of the imaging sensor are orthogonal. In the case where they are not orthogonal, the pixel mapping function may be generalized to:
where α is a scalar coefficient that controls the amount of skew between the two main sensor axes (if α=0, there is no skew). For now, let us consider the simple model without skew (equation 3.1). If p is the image projection of the point P in space (of coordinates {overscore (X)}=[X Y Z]T), the global projection map may be written in pixel units:
This equation returns the coordinates of a point projected onto the image (in pixels) in the case of an ideal pinhole camera. Real cameras do not have pinholes, but lenses. Unfortunately a lens will introduce some amount of distortion (also called aberration) in the image. That makes the projected point to appear at a slightly different position on the image. The following expression is a simple first-order model that captures the distortions introduced by the lens:
where kc is called the radial distortion factor. This model is also called first-order symmetric radial distortion model (“symmetric” because the amount of distortion is directly related to the distance of the point to the optical center c). Observe that the systems (3.4) and (3.3) are equivalent when kc=0 (no distortion).
Therefore, if the position of the point P is known in camera reference frame, one may calculate its projection onto the image plane given the intrinsic camera parameters fx, fy, cx, cy and kc. That is known as the direct projection operation and may be denoted {overscore (p)}=Π({overscore (X)}). However, most 3D vision applications require to solve the “inverse problem” that is mapping pixel coordinates {overscore (p)} to 3D world coordinates [X Y Z]T. In particular, one necessary step is to compute normalized image coordinates {overscore (x)}=[x y 1]T (3D ray direction) from pixel coordinates {overscore (p)} (refer to equation 3.4). The only non-trivial aspect of that inverse map computation is in computing the vector ā from {overscore (b)}. This is the distortion compensation step. It may be shown that for relatively small distortions, this inverse map may be very well approximated by the following equation:
Experimentally, this expression is sufficiently accurate.
Camera Calibration
The camera calibration procedure identifies the intrinsic camera parameters fx, fy, cx, cy and kc and possibly α). A standard method is to acquire an image a known 3D object (a checker board pattern, a box with known geometry . . . ) and look for the set of parameters that best match the computed projection of the structure with the observed projection on the image. The reference object is also called calibration ring. Since the camera parameters are inferred from image measurements, this approach is also called visual calibration. This technique was originally presented by Tsai and Brown. An algorithm for estimation was proposed by Abdel-Aziz and Karara (for an overview on camera calibration, the reader may also refer to the book Klette, Schluns and Koschan).
Note that although the geometry of the calibration rig is known (i.e., the mutual position of the grid corners in space), its absolute location with respect to the camera is unknown. In other words, the pose of the calibration pattern in unknown. Therefore, before applying the set of equations (3.4) to compute the image projection of every corner in the structure, one needs to find their 3D coordinates in the camera reference frame. We first choose a reference frame attached to the rig (called the object frame) in which we express the known coordinates {overscore (X)}oi of all the corners Pi, (i=1. . . N). This set of vectors is known since the intrinsic rig structure is known. Then, the coordinate vector {overscore (X)}ci in the camera frame is related {overscore (X)}oi through a rigid motion transformation:
∀i=1, . . . , N, {overscore (X)}c′=Rc{overscore (X)}oi+Tc (3.6)
where Rc and Tc define the pose of the calibration rig with respect to the camera (similarly to equation 2.13). See
Notice that by adding the calibration object in the scene, more unknowns have been added to the problem: Rc and Tc. Those parameters are called extrinsic camera parameters since they are dependent upon the pose of the calibration pattern with respect to the camera (unlike the intrinsic parameters that remain constant as the rig is moved in front of the camera).
Let {overscore (Ω)}c be the rotation vector associated to the rotation matrix Rc (see equation 2.13). Then, the complete set of unknowns to solve for is:
Let pi(i=1, . . . , N) be the observed image projections of the rig points Pi and let {overscore (p)}i=[pxi pyi]T be their respective pixel coordinates. Experimentally, the points pi are detected using the standard Harris corner finders.
The estimation process finds the set of calibration unknowns (extrinsic and intrinsic) that minimizes the reprojection error. Therefore, the solution to that problem may be written as follows:
where Rc=e{overscore (Ω)}Λ,Π(.) is the image projection operator defined in equation 3.4 (function of the intrinsic parameters fx, fy, cx, cy and kc) and ∥.∥ is the standard distance norm is pixel units. This non-linear optimization problem may be solved using standard gradient descent techniques. However, it is required to have a good initial guess before starting the iterative refinement. a method to derive closed form expressions for calibration parameters that may be used for initialization is presented.
Apart from numerical implementation details, it is also important to study the observability of the model. In other words, under which conditions (type of the calibration rig and its position in space) can the full camera model (eq. 3.4) be estimated from a single image projection. For example, it is worth noticing that if the calibration rig is planar (as shown on
Closed-Form Solution in B-Dual-Space Geometry
This section demonstrates how one may easily retrieve closed-form expressions for intrinsic and extrinsic camera parameters using the dual-space formalism as a fundamental mathematical tool. The method is based on using vanishing points and vanishing lines. The concept of using vanishing points for camera calibration is not new (most of the related work on this topic may probably be found in the art. Therefore, this does not to state new concepts or theories on calibration, but rather illustrate the convenience of the dual-space formalism by applying it to the problem of calibration. We show here that this formalism enables us to keep the algebra simple and compact while exploiting all the geometrical constraints present in the scene (in the calibration rig). That will also lead us to derive properties regarding the observability of several camera models under different geometrical configuration of the setup, and types of calibration rig used (2D or 3D). Most related work on that topic only deal with simple camera model (unique focal length) and extract the extrinsic parameters through complex 3D parameterization (using Euler angles). Other standard methods for deriving explicit solutions for camera calibration were presented by Abdel-Aziz and Karara and Tsai. These methods are based on estimating, in a semi-linear way, a set of parameters that is larger than the real original set of unknowns and do not explicitly make use of all geometrical properties of the calibration rig.
The method that we disclose here involves very compact algebra, uses intuitive and minimal parameterizations, and naturally allows to exploit all geometrical properties present in the observed three-dimensional scene (calibration rig). In addition, our approach may be directly applied to natural images that do not contain a special calibration grid (such as pictures of buildings, walls, furniture . . . ).
Once it is computed, the closed-form solution is then fed to the non-linear iterative optimizer as an initial guess for the calibration parameters. This final optimization algorithm is inspired from the method originally presented by Tsai including lens distortion (see equation 3.7). The purpose of that analysis is to provide a good initial guess to the non-linear optimizer, to better insure convergence, and check for the consistency of the results.
We will first consider the case of a calibration when using a planar rig (a 2D grid), and then generalize the results to 3D rigs (such as a cube). In those two cases, different camera models will be used.
3.2.1. When Using a Planar Calibration Rig
Consider the calibration image shown in
In the case of calibration from planar rigs, it is known that the optical center position (cx, cy) cannot be estimated. Therefore, we will keep it fixed at the center of the image, and take it out of the set of unknowns. The resulting intrinsic parameters to be estimated are therefore fx and fy. Let {overscore (p)}i≃[px
where K is the intrinsic camera matrix containing the intrinsic parameters (fx and fy). Let us now extract the set of independent constraints attached to the observation in order to estimate the focal lengths (hence the camera matrix K).
where x is the standard vector product in 3. Notice that in order to keep the notation clear, we abusively used V1 and V2 to refer to the homogeneous coordinates of the vanishing points on the image plane (quantities similar to the {overscore (x)}i's using homogeneous coordinates). It is important to keep in mind that all equalities are defined “up to scale.” For example, any vector proportional to {overscore (x)}1×{overscore (x)}1 would be a good representative for the same line {overscore (λ)}1. The same observation holds for the coordinate vectors of the vanishing points and that of the horizon line.
Yet, the normalized coordinates {overscore (x)}i of the corners are not directly available, only the pixel coordinates {overscore (p)}i. However, all {overscore (x)}i's can be retrieved from the {overscore (p)}i's through the linear equation 3.8. We will use of the following statement whose proof may be found in [30]:
Claim 1: Let K be any 3×3 matrix, and ū and {overscore (v)} any two 3-vectors. Then the following relation holds:
(Kū)×(K{overscore (v)})=K*(ū×{overscore (v)})
where K* is the adjoint of K (or the matrix of cofactors of K). Note that if K is invertible (which is the case here), then K*=det(K)(KT)−1, and consequently K**∝K.
Using that claim, the camera matrix K (or K*) may be factored out of the successive vector products of equations 3.9, yielding:
where {overscore (λ)}1p, {overscore (λ)}2p, {overscore (λ)}3p, {overscore (λ)}4p, V1p, V2p and {overscore (λ)}Hp are line and point coordinate vectors on the image plane in pixel (directly computed from the pixel coordinates {overscore (p)}1, {overscore (p)}2, {overscore (p)}3 and {overscore (p)}4):
The step of inferring the vanishing points V1 and V2 from the pairs of lines {{overscore (λ)}1, {overscore (λ)}2} and {{overscore (λ)}3, {overscore (λ)}4} made use of the fact that ABCD is a parallelogram (proposition 5). Using proposition 6 (in section 2.2.2), one naturally enforce orthogonality of the pattern by stating that the two vanishing points V1 and V2 are mutually orthogonal (see FIG. 2.11):
V1⊥V2⇄(KV1p)⊥(KV2p)⇄(V1p)T(KTK) (V2p)=0 (3.10)
That provides one scalar constraint in the focal lengths fx and fy:
where a1, a2, b1, b2, c1 and c3 are the known pixel coordinates of the vanishing points V1p and V2p: V1p≃[a1 b1 c1]T and V2p≃[a2 b2 c2]T. Notice that equation 3.11 constraints the two square focals (fx2,fy2) to lie on a fixed hyperbola. Finally, the parallelogram ABCD is not only a rectangle, but also a square. This means that its diagonals (AC) and (BD) are also orthogonal (see
{overscore (λ)}5≃K*λ5p→V3≃KV3p
{overscore (λ)}6≃K*λ6p→V4≃KV4p
where V3p and V4p are the two pixel coordinates of the vanishing points V3 and V4 (pre-computed from the pixel coordinates of the corner points):
{overscore (λ)}5p≃{overscore (p)}1×{overscore (p)}3→V3p≃{overscore (λ)}5p×{overscore (λ)}Hp
{overscore (λ)}6p≃{overscore (p)}2×{overscore (p)}4→V4p≃{overscore (λ)}6p×{overscore (λ)}Hp
Then, the orthogonality of V3 and V4 yields (V3p)T (KTK) (V4p)=0, or:
where a3, a4, b3, b4, C3 and c4 are the known pixel coordinates of V3p and V4p: V3p≃[a3 b3 c3]T and V4p≃[a4 b4 c4]T. This constitutes a second constraint on fx and fy (a second hyperbola in the (fx2, fy2) plane), which can be written together with equation 3.11 in a form of a linear equation in ū=[u1 u2]T=[1/fx2 1/fy2]T:
If is invertible, then both focals fx and fy may be recovered explicitly:
under the condition u1>0 and u2>0.
If is not invertible (or a1a2b3b4−a3a4b1b2=0), then both focals (fx, fy) cannot be recovered. However, if is of rank one (i.e. it is not the zero matrix), then a single focal length model fc=fx=fy may be used. The following claim gives a necessary and sufficient condition for to be rank one:
Claim 2: The matrix is rank one if and only if the projection {overscore (λ)}H of the horizon line is parallel to either the x or y axis on the image plane (its first or second coordinate is zero, not both), or crosses the origin on the image plane (its last coordinate is zero). Since the matrix K is diagonal, this condition also applies to the horizon line in pixel coordinates {overscore (λ)}Hp.
Corollary: Since {overscore (λ)}H is proportional to the surface normal vector {overscore (n)}h (from proposition 2 in section 2.2.2), this degeneracy condition only depends upon the 3D orientation of the plane Πh with respect to the camera, and not the way the calibration grid is positioned onto it (this is intrinsic to the geometry of the setup).
In such a rank-one degenerate case, the reduced focal model is acceptable. Then both constraint equations 3.11 and 3.12 may be written as a function of a unique focal fc and follows:
which may be solved in a least squares fashion, yielding the following solution:
Alternative estimates may be derived by directly solving for either one of the constraint equations (3.11 or 3.12) taking fx=fy=fc. This may be more appropriate in the case where one of the four vanishing points Vk is at infinity (corresponding to ck=0). It is then better to drop the associate constraint and only consider the remaining one (remark: having a vanishing point at infinity does not necessarily mean that the matrix is singular). Since the vector {overscore (λ)}H is parallel to the normal vector {overscore (n)}h of the ground plane Πh, this rank-one degeneracy case corresponds to having one of the camera axis Xc, Yc or Zc parallel to the calibration plane Πh.
Note that if two vanishing points are at infinity, then the projection of the entire horizon line, {overscore (λ)}H is also at infinity on the image plane (its two first coordinates are zero). This occurs only when the calibration plane Πh is strictly parallel to the image plane (or {overscore (n)}h=[0 0 1]T), which is known to be a degenerate case where there exists no solution for calibration.
In the case where the planar pattern is a rectangle, but not necessarily a square (or equivalently, the aspect ratio of the rectangle is not known), then the diagonal constraint is not available (equation 3.12). In that case, only equation 3.11 is available to estimate focal length. It is therefore necessary to use a reduced single focal model fc=fx=fx:
This expression will be used in a calibration experiment illustrated in
Once the camera matrix K is estimated, the normalized horizon vector {overscore (λ)}H≃K*{overscore (λ)}Hp may be recovered. From proposition 2, this vector is known to be proportional to the coordinate vector {overscore (ω)}h of Πh (or its normal vector {overscore (n)}h). Therefore, this directly provides the orientation in 3D space of the ground plane. The only quantity left to estimate is then its absolute distance dh to the camera center, or equivalently the norm ∥{overscore (ω)}h∥=1/dh. This step may be achieved by making use of the known area of the square ABCD and applying an inverse perspective projection on it (possible since the orientation of Πh is known).
Implementation details: In principle, only the four extreme corners of the rectangular pattern are necessary to localize the four vanishing points V1p, V2p, V3p, and V4p. However, in order to be less sensitive to pixel noise, it is better in practice to make use of all the detected corners on the grid (points extracted using the Harris corner finder). This aspect is especially important given that vanishing point extraction is known to be very sensitive to noise in the corner point coordinates (depending on amount of depth perspective in the image). One possible approach is to fit a set of horizontal and vertical lines to the pattern points, and then recover the two vanishing points V1p, V2p by intersecting them in a least squares fashion. Once these two points are extracted, the position of the extreme corners of the rectangular pattern may be corrected by enforcing the four extreme edges of the grid to go through those vanishing points. The next step consists of warping the perspective view of the rectangle into a perspective view of a square (making use of the known aspect ration of the original rectangle). The two remaining vanishing points V3p and V4p may then be localized by intersecting the two diagonals of this square with the horizon line {overscore (λ)}Hp connecting V1p and V2p. Once those four points are extracted, the focal length may be estimated, together with the plane coordinate vector {overscore (ω)}h following the method described earlier (using a one or two focal model).
When Using a 3D Calibration Rig
Let us generalize the results to the case where a 3D rig of the type in
Where K is the intrinsic camera matrix and Vip≃[ai bi ci]T (i=1, . . . ,7) are the pixel coordinate vectors of the vanishing points (see
Given those five independent constraints, one should be able to estimate a full 5 degrees of freedom (DOF) camera model for metric calibration including two focal lengths (fx and fy in pixels), the optical center coordinates (cx and cy in pixels) and the skew factor α (see equation 3.2). In that case, the intrinsic camera matrix K takes its most general form [31]:
This model matches precisely the notation introduced in equation (3.2). Then, the semi-positive definite matrix KT K may be written as follows:
Notice that the vanishing point constraints (3.15) are homogeneous. Therefore, one can substitute KT K by its proportional matrix fx2 KT K. Doing so, the five constraints listed in equation 3.15 are linear in the vector ū=[u1 . . . u5]T. Indeed, for (i, j)ε{(1,2), (1,3), (2,3), (4,5), (6,7)}, we have:
[−cicj−bibj (aicj+ajci) (bicj+bjci)−(aibj+ajbi)]ū=aiaj, (3.18)
Therefore, this set of 5 equations may be written in a form of a linear system of 5 equations in variable ū:
ū={overscore (b)} (3.19)
where is a 5×5 matrix, and {overscore (b)} a 5-vector:
If the matrix is invertible, this system admits a solution ū=−1{overscore (b)}. Finally, the intrinsic camera parameters are retrieved from ū as follows:
This final step consisting of de-embedding the intrinsic parameters from the vector ū is equivalent to a Choleski decomposition of the matrix KT K in order to retrieve K.
If is not invertible, then the camera model needs to be reduced. A similar situation occurs when only one face of the rectangular parallelepiped is known to be square. In that case, one of the last two constraints of (3.15) has to be dropped, leaving only 4 equations. A first model reduction consists of setting the skew factor α=0, and keeping as unknowns the two focals (fx, fy) and camera center (cx, cy). That approximation is very reasonable for most cameras currently available. The resulting camera matrix K has the form:
leading to the following KT K matrix:
Then, each constraint (Vip)T (KT K) (Vjp)=0 may be written in the form of a linear equation in ū=[u1 . . . u4]T:
[−cicj−bibj (aicj+ajci) (bicj+bjci)]ū=aiaj, (3.22)
resulting in a 4×4 linear system ū={overscore (b)}, admitting the solution ū if is rank 4. The intrinsic camera parameters (fx, fy, cx, cy) may then be computed from the vector ū following the set of equations (3.20) setting α=u5=0. When has rank less than 4, the camera model needs to be further reduced (that is the case when only 3 orthogonality constraints are available). A second reduction consists of using a single focal fc=fx=fy, leading to a 3 DOF model. In that case, the K matrix takes on the following reduced expression:
Then, each constraint listed in (3.15) can be written in the form of a linear equation of the variable ū=[u1 u2 u3]T:
(Vip)T (KTK) (Vjp)=0⇄[−cicj (aicj+ajci) (bicj+bjci)]ū=(aiaj+bibj)
Once again, this leads to the linear problem ū={overscore (b)} where is a 5×3 matrix, and {overscore (b)} a 5-vector (if all five constraints are valid). A least squares solution is in general possible: ū=(T)−1T{overscore (b)}. Notice that if the faces of the rig are known mutually orthogonal but not necessarily square, then only the three first constraints of (3.15) are enforceable. In that case, the linear system is 3×3, and its solution is ū=−1{overscore (b)}. Once the vector ū is recovered, the intrinsic camera parameters have the following expression:
When has rank less than 3, the model needs to be further reduced to 2 or 1 DOF by taking the optical center out of the model (fixing it to the center of the image) and then going back to the original model adopted in the planar rig case (one or two focal models).
This system can enable decoupling intrinsic from extrinsic parameters and derive a set of closed-form solutions for intrinsic camera calibration in case of five model orders: 1, 2, 3, 4 and 5 degrees of freedom. In addition, we stated conditions of observability of those models under different experimental situations corresponding to planar and three-dimensional rigs. The following table summarizes the results by giving, for each model order, the list of parameters we have retrieved explicit expressions for, as well as the minimum structural rig necessary to estimate the model:
One could use this explicit set of solutions for calibrating image sequences where intrinsic camera parameters are time varying. A typical sequence could be a flyby movie over a city with buildings.
In a broader sense, this work provides a general framework for approaching problems involving reconstruction of three-dimensional scenes with known structural constraints (for example orthogonality of building walls in a picture of a city). Indeed, constraints, such as parallelism or orthogonality, find very compact and exploitable representations in dual-space. This approach may avoid traditional iterative minimization techniques (computationally expensive) in order to exploit constraints in a scene.
Although only a few embodiments have been disclosed in detail above, other embodiments are possible.
This application claims the benefit of the U.S. Provisional Applications Nos. 60/169,103, filed Dec. 6, 1999; 60/169,102, filed Dec. 6, 1999; and 60/183,172, filed on Feb. 17, 2000.
U.S. Government may have certain rights in this invention pursuant to National Science Foundation, contract Agreement No. EEC-9402726.
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