The present invention relates to a three-dimensional object detecting device, more specifically to a device which can detect a three-dimensional object by two-dimensional image processing.
Conventionally, various techniques have been proposed for detecting three-dimensional objects. A fitting technique may be a leading one. In the fitting technique, a position, a size and the like of the object are estimated from three dimensionally-measured coordinates. For example, an elliptic sphere is expressed by equation (1).
In the equation, X0, Y0, and Z0 indicate center coordinates of the elliptic sphere, and a, b, and c are parameters determining a size of the elliptic sphere. In order to estimate a position and a size of the elliptic sphere, it is necessary to identify the center coordinates and the other parameters. Furthermore, in the case where the elliptic sphere is rotated, it is necessary to identify nine parameters including a three-dimensional rotation angle. For example, least squares, extended Hough transform, or a Kalmnan filter method is used in the identification.
Various techniques for detecting a human face have also been proposed. For example, a pair of stereographic color images is obtained with a pair of color image capture devices, and a distance image is generated from the pair of stereographic color images. A model expressing an outline of a face is generated from the distance image. On the other hand, a flesh-colored image region and an edge are extracted from one of the pair of stereographic color images. A correlation between the edge and flesh-colored image region and the outline model is correlated to detect a face region (see Patent Document 1).
There is also proposed a technique for detecting an occupant in a vehicle. For example, an ellipse whose shape approximates the occupant head is previously stored as a reference head image. An area-image sensor is provided in the vehicle to obtain an image including the occupant head. Many boundaries are extracted from brightness values of the image, and the outline of the substantially elliptic shape is detected from the boundaries. The occupant is identified by matching between the detected outline of the substantially elliptic shape and the reference head image (see Patent Document 2).
A huge amount of computation is required for the above-described three-dimensional identifying process. When an object is detected in real time, a large delay may be generated in object detection using identifying process mentioned above.
Color image capture devices may increase costs. Additionally, human flesh color varies from individual to individual across the word, and therefore an object may be mistakenly detected.
On the other hand, in order to control an airbag, for example, it is desired that a position of the head of an occupant is detected in a vehicle. In the technique disclosed in Patent Document 2, the head is detected by a two-dimensional shape matching, and distance information is not used in the two-dimensional shape matching. Therefore, when a three-dimensional object is detected, accuracy of detection may be lowered from a viewpoint of distance information.
Accordingly, an object of the present invention is to propose a three-dimensional object detecting technique adapted for real-time processing. Another object of the present invention is to propose a technique in which a three-dimensional object can be detected with higher accuracy while the computation load is restrained. Still another object of the present invention is to propose a technique for detecting a position, a size, and an attitude of the three-dimensional object.
Another object of the present invention is to propose a technique by which the human head can be detected in real time. Still another object of the present invention is to propose a technique by which the occupant head in a vehicle can be detected in real time.
According to a first aspect of the invention, a three-dimensional object detecting device includes pair of image capture devices which take images of a three-dimensional object. Furthermore, disparity data is computed for each region based on the images obtained by the pair of image capture devices, and each region is obtained by dividing the images. Based on the disparity data computed for each region, a gray-scale value indicating a distance to the image capture device is computed and a gray-scale image having a gray-scale value corresponding to each region is generated. The object detecting device includes a storage device in which a model formed by modeling the three-dimensional object is stored. The object detecting device computes a correlation value indicating a similarity between the model and an image region in the gray-scale image. The model is a two-dimensional image having a geometric feature when the three-dimensional object is viewed from a direction in which the image capture device is located, and each region obtained by dividing the two-dimensional image has a gray-scale value indicating a distance to the image capture device, of a corresponding portion of the three-dimensional object. The correlation value is computed based on a gray-scale value of the model and a gray-scale value of the image region in the gray-scale image. Furthermore, the object detecting device detects the three-dimensional object by detecting an image region having the highest correlation value with the model, in the gray-scale image.
According to the invention, the model is a two-dimensional image, a shape of the two-dimensional image has a geometric feature of the object to be detected, and each region of the two-dimensional image has a gray-scale value indicating the distance to the object. Therefore, a position, a size, and an attitude of the three-dimensional object can be detected by two-dimensional level image processing. Because load of computation can be reduced compared with three-dimensional level image processing, the distance measuring device of the invention is adapted for real-time processing.
In an embodiment of the invention, a distance measuring device is used instead of the image capture devices. The distance measuring device measures a distance from the distance measuring device to each region which is obtained by dividing a predetermined range including the object. A gray-scale value indicating a measured distance to each region is computed, and a gray-scale image having a gray-scale value corresponding to each region is generated.
According to the invention, a position, a size, and an attitude of the three-dimensional object can be detected by the distance measuring device such as that using laser scanning.
According to an embodiment of the invention, plural models are prepared according to a size and an attitude of the object. Correlation values are computed for each of the plurality of models, and a size and an attitude of the object are determined based on the model correlated with an image region having the highest correlation value, in the plurality of models.
According to the invention, various sizes and attitudes of the object can be detected.
According to an embodiment of the invention, the three-dimensional object is a human head, and the model is a two-dimensional image having an elliptic shape.
According to the invention, the human head can be detected by two-dimensional level image processing. Additionally, because gray-scale correlation is used, color image capture devices are not required even if a human is detected.
According to an embodiment of the invention, the detected human head is a head of a human riding on a vehicle. Accordingly, the vehicle can be controlled in various ways according to the detection of the human head.
According to an embodiment of the invention, occupant region is detected, where the occupant exists, in the image obtained by the image capture device, based on the disparity data when the occupant sits on a seat and the disparity data at a vacant seat. A gray-scale image is generated based on the occupant region.
According to the invention, computation efficiency can further be enhanced because a region where the gray-scale image is generated is restricted. For a distance image generated with the distance measuring device, the occupant region can also be detected similarly.
According to an embodiment of the invention, pattern light illuminating means for illuminating the object with pattern light having a predetermined pattern is provided. The disparity data can be computed with higher accuracy using the pattern light.
Exemplary embodiments of the invention will be described below with reference to the accompanying drawings.
In the embodiment, the object detecting device 1 is mounted on a vehicle, and a mode in which a head of an occupant is detected is shown below. However, it is to be noted that the object detecting device is not limited to the mode. A detailed description on the point will be given later.
A light source 10 is disposed in the vehicle so as to be able to illuminate the head of the occupant sitting on a seat. For example, the light source 10 is disposed in an upper front portion of the seat.
Preferably a near infrared ray (IR light) is used as the light with which the head of the occupant is illuminated. Usually when an image of the occupant head is taken, brightness depends on an environmental change such as daytime and nighttime. When a face is illuminated with strong visible light from one direction, gradation is generated in the facial surface. Near infrared rays have robustness against fluctuation in illumination and gradation in shade.
In the embodiment, a pattern mask (filter) 11 is provided in front of the light source 10 such that the occupant is illuminated with lattice-shaped pattern light. Disparity can be computed with higher precision by use of the pattern light as described below. A detailed description concerning the point will be given later.
A pair of image capture devices 12 and 13 is disposed near the occupant head so as to take a two-dimensional image including the occupant head. The image capture devices 12 and 13 are disposed so as to be horizontally, vertically or diagonally away from each other by a predetermined distance. The image capture devices 12 and 13 have optical band-pass filter so as to receive near infrared rays alone from the light source 10.
For example, a processing device 15 is realized by a microcomputer which includes a CPU which performs various computations, a memory in which a program and computation results are stored, and an interface which performs data input and output. Considering the above, in
A disparity image generating unit 21 generates a disparity image on the basis of the two images taken by the image capture devices 12 and 13.
An example of a technique for computing a disparity will briefly be described with reference to
A distance (base-line length) between the image capture devices 12 and 13 is indicated by B. The image capture element arrays 31 and 32 are disposed at focal length f of the lenses 33 and 34, respectively. On the image capture element array 31, an image of a target object located at a distance L from the plane on which the lenses 33 and 34 exist is formed at a position shifted by d1 from the optical axis of the lens 33. On the other hand, on the image capture element array 32, the image of the target object is formed at a position shifted by d2 from the optical axis of the lens 34. The distance L is obtained by L=B·f/d according to the principle of triangulation, where d is a disparity, that is, (d1+d2).
In order to obtain the disparity d, a corresponding block on the image capture element array 32, in which an image of a target object portion identical with that of a certain block of the image capture element array 31 is taken, is searched for. An arbitrary size of blocks can be set. For example, one pixel or plural pixels (for example, eight by three pixels) may be set as one block.
According to a certain technique, a corresponding block is searched for by scan with a block of an image obtained by one of the image capture devices 12 and 13 on an image obtained by the other of the image capture devices 12 and 13 (block matching). An absolute value of a difference between a brightness value of a block (for example, an average of brightness values of pixels in the block) and that of the other block, is obtained and the absolute value is defined as a correlation value. The block with which the correlation value shows the minimum is found, and the distance between the two blocks at that time indicates a disparity d. Alternatively, the searching process may be realized by another technique.
Matching between blocks is hardly performed in the case there are blocks in which brightness value is not changed. However, a change in brightness value can be generated in a block by the pattern light, so that the block matching can be realized with higher accuracy.
In the image taken by one of the image capture devices 12 and 13, a disparity value computed for each block is correlated with pixel values included in the block, and the pixel values are defined as a disparity image. The disparity value indicates a distance between the target object taken in the pixels and the image capture devices 12 and 13. As a disparity value increases, a position of the target object is getting closer to the image capture devices 12 and 13.
A background eliminating unit 22 eliminates a background from the disparity image such that an image region (referred to as an occupant region) in which an image of a person is taken is extracted by any appropriate technique. The image region to be processed later is restricted by eliminating the background, and thus computation efficiency can be enhanced.
In the embodiment, as shown in a part (a) of
A disparity image at the vacant seat varies depending on a seat position and a seat inclination. Plural disparity images at the vacant seat, prepared according to seat positions and seat inclinations, can be stored in the memory 23. A sensor (not shown) is provided in the vehicle to detect a seat position and a seat inclination. The background eliminating unit 22 reads, from the memory 23, a corresponding disparity image at the vacant seat according to a seat position and a seat inclination detected by the sensor, and the background eliminating unit 22 can read the corresponding disparity image at the vacant seat from the memory 23 and eliminate the background using the corresponding disparity image. Therefore, even if a seat position and/or an inclination is changed, the background eliminating unit 22 can extract the occupant region with higher accuracy.
A normalizing unit 24 performs normalization of the occupant region 41. The normalization allocates a gray-scale value to each pixel of the occupant region according to a distance from the image capture devices 11 and 12. The normalization is performed using equation (2).
In the equation, d(x,y) indicates a disparity value at a position x, y of the occupant region, while N is the number of bits of the gray scale. For example, N is 9 and the 512-level gray scale having gray-scale values 0 to 511 is realized. The gray-scale value of 0 indicates black and the gray-scale value of 511 indicates white. d′(x,y) indicates a gray-scale value computed for the position x, y of the occupant region. The maximum disparity value dmax corresponds to the minimum value of distance from the image capture device, and the minimum disparity value dmin corresponds to the maximum value of distance from the image capture device.
As shown by equation (2), in the normalization, the highest gray-scale value (in this case, white) is allocated to the pixel corresponding to the maximum disparity value dmax, and a gray-scale value is gradually decreased as a disparity value d is decreased. In other words, the highest gray-scale value is allocated to the pixel corresponding to the minimum distance value, and a gray-scale value is gradually decreased as a distance to the image capture device is increased. Thus, a gray-scale image of which each pixel has a gray-scale value indicating a distance to the image capture device is generated from the occupant region.
As shown in
Even if the maximum disparity value appears not on the head but on another portion (for example, the hand or the shoulder), a disparity value of the head is gradually decreased toward the edge from the head portion closest to the image capture device, thereby gradually decreasing a gray-scale value, because the head has an elliptic sphere shape.
Referring to
The elliptic sphere is formed based on space coordinates in the vehicle. For example, as shown in
A part (c) of
The elliptic sphere which is of a three-dimensional model of the head is transformed into a two-dimensional image. The elliptic sphere has an elliptic shape when viewed from the z-axis direction as shown by an arrow 55, and therefore the two-dimensional image is generated so as to have the elliptic shape. Furthermore, the two-dimensional image is generated such that each position x, y has a gray-scale value indicating a z-value corresponding to the position x, y.
The technique for generating the two-dimensional image model will be described in detail below. Because an elliptic sphere is expressed by equation (1) as described above, a z-value at each position x, y of the elliptic sphere is expressed by equation (3):
Then, as shown by an arrow 55, the elliptic sphere is projected to the two-dimensional image in the z-axis direction. The projection is realized by equation (4). In the equation, R11 to R33 represent a rotation matrix. When the elliptic sphere is not rotated, a value of 1 is set to R11 and R22, and value of zero is set to the other parameters. When the elliptic sphere is rotated, values indicating a rotation angle are set to the parameters. Parameters fx, fy, u0, and v0 indicate internal parameters of the image capture device. For example, fx, fy, u0, and v0 include parameters for correcting distortion of lenses and the like.
Each point (x, y, z) on the surface of the elliptic sphere is projected to coordinates (x, y) of the two-dimensional image by the projection realized by equation (4). A gray-scale value I indicating a z-value of the coordinates (x, y, z) of the object to be projected is allocated to the coordinates (x, y) of the two-dimensional image. The gray-scale value I is computed according to equation (5):
In the equation, Zmin indicates the value closest to the image capture device in z-values of coordinates on the surface of the elliptic sphere (elliptic sphere after the rotation when the elliptic sphere is rotated). N is identical to N used in the normalization performed by the normalizing unit 25. When a z-value is Zmin, the highest gray-scale value is allocated to the pixel corresponding to the z-value by equation (5). As a difference between Zmin and a z-value is increased, that is, as a distance to the image capture device is increased, a gray-scale value of the pixel corresponding to the z-value is gradually lowered.
Part (d) of
Thus, the elliptic shape in which the head is viewed from the z-direction as shown in part (a) of
It is preferable to prepare plural kinds of head models. For example, because an adult head differs from a child head in size, different head models are used. The elliptic sphere model having a desired size can be generated by adjusting parameters a, b, and c described above. Sizes of the elliptic sphere models may be determined based on statistical results of plural human heads. Elliptic sphere models thus generated are transformed into two-dimensional image models by the above-described technique, and the two-dimensional image models are stored in the memory 25.
It is also preferable to prepare plural head models according to attitudes of the occupant. For example, head models having different inclinations can be prepared in order to detect the head of the occupant whose neck is inclined. For example, an elliptic sphere model rotated by a desired angle can be generated by adjusting values of parameters R11 to R33 in the rotation matrix shown by equation (4). Similarly, the elliptic sphere models are transformed into two-dimensional image models, and the two-dimensional image models are stored in the memory 25.
For example, in the case where the occupant head is disposed with respect to the image capture device as shown in
Referring to
In the embodiment, a correlation value r is computed according to normalization correlation equation (6) in which a normalizing factor shift, errors in position and attitude and the like are considered. In the equation, S indicates a size of the block to be matched. The size of the block may be, for example, that of one pixel or that of a set of plural pixels (for example, eight by three pixels). The greater a similarity between a head model and the target region to be scanned is, the higher correlation value r is computed.
As described above, in the head portion of the occupant region, a distance to the image capture device is gradually increased toward the edge from the point on the head closest to the image capture device, and gray-scale values are allocated in such a way that the values are gradually decreased as the distance is gradually increased. On the other hand, in the head models, a distance to the image capture device is gradually increased from the center toward the edge, and gray-scale values are allocated in such a way that the values are gradually decreased as the distance is gradually increased. Accordingly, when the head models are correlated with the head portion of the occupant region, a higher correlation value r is computed than the head models are correlated with other portions. Thus, the head portion can be detected from the occupant region on the basis of a correlation value r.
Thus, the occupant region normalization expressed by equation (2) is similar to the head model normalization expressed the equation (5) in that a lower gray-scale value is allocated as a distance to the image capture device is increased. However, strictly speaking, a difference exists between the two types of normalization. For example, in equation (2), a gray-scale value becomes the minimum value at the minimum disparity value dmin. On the other hand, in equation (5), a gray-scale value becomes the minimum value when a z-value becomes infinite. However, such a difference in scaling can be compensated by the above-described correlation. A positional error such as a shift in center coordinates in constructing an elliptic sphere model of the head can also be compensated by the correlation. That is, in the correlation, it is determined whether or not a head model is similar to the head portion of the occupant region in a tendency of change in gray scale. That is, a high correlation value is supplied when the correlated image region has a tendency of change in gray scale similar to that of a head model (that is, gray-scale values are gradually lowered from the center toward the edge).
The image region where the highest correlation value r is computed is detected from the already-normalized occupant region, and the human head can be detected based on the positioning and the gray-scale values of the occupant region in the taken image. A size and an inclination (attitude) of the head can be determined based on the correlated head model.
In the case of the plural head models, correlation processing described above is performed for each of the head models of two-dimensional image stored in the memory 25. The head model in which the highest correlation value r is computed is specified, and the image region correlated with the head model is detected in the already-normalized occupant region. The human head can be detected from the positioning and the gray-scale values of the detected image region in the taken image. A size and an inclination (attitude) of the head can be determined based on the head model used to compute the highest correlation value r.
The above-described gray-scale matching of two-dimensional image can be performed at a higher speed than that of the conventional identifying processing in a three-dimensional space. Accordingly, a position, a size, and an attitude of the object can be detected in real time. Other techniques (such as a technique of simultaneously detecting multi models and a technique in which a pyramidal structure is used) can be used in the gray-scale matching.
In order to enhance an accuracy of object recognition, a three-dimensional space range in the vehicle in which the object can exist is derived from the image region where a correlation value not lower than a predetermined value is computed, and the object may be recognized in the range by performing the conventional identifying processing using least squares and the like. The range of the space where the identifying processing should be performed is restricted, so that an amount of computation can be restrained.
In another embodiment, in the object detecting device 1, a distance measuring device 70 is used instead of the light source and the pair of image capture devices.
A distance image generator 71 of the processing device 15 generates a distance image by relating a distance value measured for each block with each pixel in the block. A background eliminating unit 72 eliminates the background in the distance image. The background elimination is realized by any appropriate techniques as described above. For example, a distance image which is measured and generated at the vacant seat by the distance measuring device 70 is previously stored in a memory 73. By comparing the distance image at the vacant seat and the currently-taken distance image including the occupant to each other, the background can be eliminated to extract the occupant image region (occupant region).
A normalizing unit 74 normalizes the occupant region. The normalization can be computed by replacing dmin of equation (2) with the maximum distance value Lmax in the occupant region and by replacing dmax with the minimum distance value Lmin in the occupant region.
A memory 75 (which may be the memory 73) stores two-dimensional images of the head modes like the memory 25. The head models are generated by the above-described technique. Here, the image capture device shown in part (c) of
In Step S1, as shown in part (c) of
The head model generating process can be performed repeatedly for each kind of size and attitude (in this case, inclination) of the human head to be detected. Thus, head models modeling various sizes and attitudes can be stored in the memory.
In Step S11, the pair of image capture devices obtains images including the human head. In Step S12, a disparity image is generated from the obtained images. In Step S13, the background is eliminated from the disparity image to extract an image region (occupant region) including the person. After the background has been eliminated, grain analyzing process such as expansion and contraction and smoothing process (for example, with a median filter) may be performed to eliminate noises.
In Step S14, the occupant region is normalized according to equation (2). In Step S15, a previously-generated head model is read from the memory. In Step S16, scan with the head model is performed on the normalized occupant region to compute a correlation value indicating a similarity between the head model and an image region which is overlapped by the head mode. In Step S17, the image region where the highest correlation value is computed is stored in the memory in such a way that the image region is related with the correlation value and the head model.
In Step S18, it is determined whether or not another head model to be correlated exists. When affirmative, the process is repeated from Step S15.
In Step S19, the highest correlation value is selected in the correlation values stored in the memory, and a position at which the human head exists, a size, and an attitude are supplied based on the image region and the head model corresponding to the correlation value.
In the case where the distance measuring device is used instead of the image capture device, the distance measuring device is used in Step S11, and a distance image is generated in Step S12.
In the embodiments described above, correlation between a two-dimensional image model and an image region is computed with respect to a tendency that a gray-scale value is lowered as a distance to the image capture device is increased. A tendency different from the tendency of the gray-scale value may be used. For example, a similarity may be determined with respect to a tendency that a gray-scale value is increased as a distance to the image capture device is increased.
Although the embodiments in which the human head is detected are described above, the object detecting device of the invention can be applied to modes in which other objects are detected. For example, an object different from the human can be detected by generating a two-dimensional image model which has a characteristic shape when viewed from a predetermined direction, and in which a distance in the predetermined direction is expressed in terms of gray-scale values.
Although the embodiments in which the object detecting device is mounted on a vehicle are described above, the object detecting device of the invention can be applied to various modes. For example, the object detecting device of the invention can also be applied to a mode in which approach of a certain object (for example, the human head) is detected to take action (for example, issuing a message) in response to the detection.
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