The present invention relates generally to signal processing, and more particularly to a signal processing circuit and method for use with an optical navigation system to determine motion of an optical sensor relative to a surface.
Signal processing methods are used in a wide range of applications including, for example, measuring an output from a photo-detector of an array in an optical navigation system. Optical navigation systems, such as an optical computer mouse, trackball or touch pad, are well known for inputting data into and interfacing with personal computers and workstations. Such devices allow rapid relocation of a cursor on a monitor, and are useful in many text, database and graphical programs. A user controls the cursor, for example, by moving the mouse over a surface to move the cursor in a direction and over distance proportional to the movement of the mouse. Alternatively, movement of the hand over a stationary device may be used for the same purpose.
The dominant technology used for optical mice today relies on a light source illuminating a surface, a two-dimensional (2D) array of photosensitive elements to capture the resultant images, and a signal processor that correlates successive images to detect and quantify the motion of the mouse. The image can be produced in a number of ways including illuminating the surface at or near grazing incidence to produce and image shadows due to roughness of the surface, illumination with a coherent light source to produce a speckle image of the surface, or the use of a pattern printed onto the surface itself. Regardless of the imaging method used to produce a trackable image, a processor captures the image and does a series of correlations between successive images to determine the most likely motion between frames. A similar method can be used with a linear sensor to track one dimension (1D) motion. In either case, the correlation used to track the motion of the image requires a great deal of processing and results in an unsatisfactory power consumption that limits the usefulness of the technique in power sensitive applications, such as wireless mice.
An alternative method to correlation uses an array of photosensitive elements or detectors, such as photodiodes, in which the output of the individual elements in the array are combined or wired together in a repeating pattern spanning two or more detectors to track motion along one axis or in one dimension. Generally, the detectors are wired in groups to detect of motion through movement of a light-dark pattern known as speckle. Speckle is the complex interference pattern generated by scattering of coherent light off of an optically rough surface and detected by a photosensitive element, such as a photodiode, with a finite angular field-of-view or numerical aperture. The image mapped to or captured on the comb-array may be magnified or de-magnified to achieve matching and so that the distribution of spatial frequencies in the image is roughly centered around the spatial frequencies of the array. Through use of signal processing, it is possible to track the movement of this image as it moves back and forth across the comb-array and from that tracking derive the motion of the surface relative to the array.
Although a significant improvement over prior art, these speckle-based devices have not been wholly satisfactory for a number of reasons. In particular, optical navigation systems using the above comb-detector array are subject to signal fading from time to time and location to location within the image incident on the array. By fading it is meant that contrast of the received speckle pattern drops below a level that can be accurately detected by the array.—When this happens, the estimation of displacements become erratic and unreliable, hence affecting the overall performance of the optical navigation system.
Accordingly, there is a need for a signal processor or signal processing circuit and method that minimizes the impact of signal fading on the overall performance of the system. It is desirable that the circuit and method achieve this end without increasing the complexity and power consumption of the signal processor or the optical navigation system in which it is used. It is still further desirable that the method reduces the power consumption of the system, thereby making it more suitable for power sensitive applications such as wireless mice.
The present invention provides a solution to this and other problems, and offers further advantages over conventional signal processing methods.
These and various other features and advantages of the present invention will be apparent upon reading of the following detailed description in conjunction with the accompanying drawings and the appended claims provided below, where:
The present invention is directed generally to signal processing, and more particularly, to a signal processing method for use with an optical navigation system for determining motion relative to a surface of an optical sensor including multiple redundant photo-detector arrays, and using contrast-weighted signal averaging.
Optical navigation systems can include, for example, an optical computer mouse, trackballs and the like, and are well known for inputting data into and interfacing with personal computers and workstations. For purposes of clarity, many of the details of optical navigation systems in general and optical sensors for optical navigation systems in particular that are widely known and are not relevant to the present invention have been omitted from the following description. Optical navigation systems and optical sensors are described, for example, in co-pending, commonly assigned U.S. patent application Ser. No. 11/129,967, entitled, “Optical Positioning Device Having Shaped Illumination,” filed on May 16, 2005 by Clinton B. Carlisle et al., and incorporated herein by reference in its entirety.
In the following description, for purposes of explanation, numerous specific details are set forth in order to provide a thorough understanding of the present invention. It will be evident, however, to one skilled in the art that the present invention may be practiced without these specific details. In other instances, well-known structures, and techniques are not shown in detail or are shown in block diagram form in order to avoid unnecessarily obscuring an understanding of this description.
Reference in the description to “one embodiment” or “an embodiment” means that a particular feature, structure, or characteristic described in connection with the embodiment is included in at least one embodiment of the invention. The appearances of the phrase “one embodiment” in various places in the specification do not necessarily all refer to the same embodiment. The term “to couple” as used herein may include both to directly connect and to indirectly connect through one or more intervening components.
Introduction to Speckle-Based Optical Sensors
Operating principles of speckle-based optical sensors will now be described with reference to
Referring to
In contrast, referring to
Speckle is expected to come in all sizes up to the spatial frequency set by the effective aperture of the optics, conventionally defined in term of its numerical aperture NA=sin θ as shown
where λ is the wavelength of the coherent light, NA is the numerical aperture of the photosensitive element, and θ is the angle of incidence.
It is interesting to note that the spatial frequency spectral density of the speckle intensity, which by Wiener-Khintchine theorem, is simply the Fourier transform of the intensity auto-correlation. The finest possible speckle, αmin=λ/2NA, is set by the unlikely case where the main contribution comes from the extreme rays 212 of
fco=1/(λ/2NA) or 2NA/λ (2.0)
Note that the numerical aperture may be different for spatial frequencies in the image along one dimension (“x”) than along the orthogonal dimension (“y”). This could be caused, for instance, by an optical aperture which is longer in one dimension than another (for example, an ellipse instead of a circle), or by anamorphic lenses. In these cases the speckle pattern 204 will also be anisotropic, and the average speckle size will be different in the two dimensions.
One advantage of a laser speckle-based optical sensor is that it can operate with illumination light that arrives at near-normal incidence angles. Sensors that employ imaging optics and incoherent light arriving at grazing incident angles to a rough surface also can be employed for transverse displacement sensing. But, since the grazing incidence angle of the illumination is desired to create appropriately large bright-dark shadows of the surface terrain in the image, the system is inherently optically inefficient, as a significant fraction of the light is reflected off in a specular manner away from the sensor and thus contributes nothing to the image formed. In contrast, a speckle-based sensor can make efficient use of a larger fraction of the illumination light from the laser source, thereby enabling the development of an optically efficient displacement sensor.
Optical Navigation Systems
A functional block diagram of one embodiment of an optical navigation system for which the optical sensor and signal processing method of the present invention is particularly useful is shown in
Generally, the signal processing method of the present invention is applicable to both speckle and non-speckle based optical sensors having either multiple 1D arrays or 2D arrays. The 2D array may be either a periodic, 2D comb-array, which includes a number of regularly spaced photosensitive elements having 1D or 2D periodicity, a quasi-periodic 2D array (such as one having Penrose tiling), or a non-periodic 2D array, which has a regular pattern but doesn't include periodicities.
A linear or 1D comb-array is an array having multiple photosensitive elements that are connected in a periodic manner, so the array acts as a fixed template that interrogates one spatial frequency component of the signal. An embodiment of one such 1D comb-array is shown in
Referring to
In a preferred embodiment the optical sensor includes the detectors or photosensitive elements are arrayed in two dimensions (2D), as shown in
Preferably, the optical sensor includes multiple 1D or 2D comb-array or sub-arrays to mitigate the effect of signal fading on motion detection. More preferably, the optical sensor includes multiple 2D comb-array or sub-arrays of a given spatial frequency or different spatial frequencies. For example,
As in the examples described above, elements within each cell 612 in a quadrant 604, 606, 608 and 610 as well as corresponding elements of all cells in the array-pair are coupled to form sixteen (16) wired-sum signals 614. The 16 wired-sum signals 614 are further combined with differential amplifiers 616 to produce eight (8) signals, CC1, CS1, SC1, SS1 from the first 2D comb-array, and CC2, CS2, SC2, SS2 from the second 2D comb-array. In operation, the strengths of the signals from either of the 2D comb-arrays or array-pairs may decrease because the selected spatial frequency component is weak at some particular location on the surface, or because contributions from various parts of the array add coherently to zero. However, it will be appreciated that fading in any one array-pair is unlikely to result in fading in the other pair, therefore such a multiple array or sub-array configuration is often desirable to mitigate signal fading. Moreover, the square symmetry arrangement of the optical sensor 602 enables simple and efficient illumination of all photosensitive elements 618 in the optical sensor.
Although the detector or photosensitive elements shown in
Signal Processing
A signal processing method according to the present invention will now be described in detail with reference to
The image captured on the 2D comb-array of
where θx is the phase angle value in the x direction, and CC, CS, SC, and SS are the four quasi-sinusoidal output signals from the array shown in
The phase angle value in a y direction, θy, can be computed similarly using equation 4.0 shown below.
The velocity of the movement of the sensor relative to the surface can now be determined by tracking the phase angle changes over time, that is from frame to frame using the following equation:
The phase angle changes Δθx and Δθy represent the movement of an image across the detector in 2D. For the 2D comb-array shown in
Optionally, at each sample frame radius values Rx and Ry are computed as well as phase angle values θx and θy using the following equations:
Rx=√{square root over ((CC−SS)2+(CS+SC)2)}{square root over ((CC−SS)2+(CS+SC)2)} (6.0)
Ry=√{square root over ((CC+SS)2+(CS−SC)2)}{square root over ((CC+SS)2+(CS−SC)2)} (7.0)
Rx and Ry indicate the contrast of the detected quasi-sinusoidal signals, and can be used as weighting factors in average velocity calculations and/or as an indication of quality of the received signal.
At each sample frame, phase angle values θx and θy as well as radius values Rx and Ry are computed. Rx and Ry indicate the contrast of the detected quasi-sinusoidal signals. The phase angle changes Δθx and Δθy from the previous sample frame are proportional to the 2D displacements along the two orthogonal axes between the current and previous sample frames. Δθx and Δθy are computed from the phase angle values for two successive frames using the following equations:
Due to the mathematical nature of the inverse tangent function (i.e., tan(θ)=tan(θ+2πN)), where N is a whole number greater than or equal to 1, the computed phase angles θx and θy are always wrapped within the range of [−π, +π]. Thus, to compute the correct 2D displacements (ΔΦx and ΔΦy) between two successive frames, the phase angle changes Δθx and Δθy need to be unwrapped to account for any additional full 2π rotations that may have occurred between the two sample frames.
Phase Unwrapping Using Velocity Predictor
In a preferred embodiment unwrapping is accomplished using a velocity predictor as described, for example, in co-pending, commonly assigned U.S. patent application Ser. No. 11/129,967, entitled, “Method For Determining Motion Using A Velocity Predictor,” filed on Jan. 3, 2006 by Yansun Xu et al., and incorporated herein by reference in its entirety.
Preferably, the velocity predictors are computed using average velocity values (unwrapped average phase angle changes) from K preceding successive frames by: (i) calculating the number of full 2π rotations needed to unwrap the phase angle changes for each direction using the velocity predictors; and (ii) computing the unwrapped or corrected phase angle changes. This correction or unwrapping is expressed mathematically in the following equations:
where the INTEGER function takes the largest integer value that is not greater than its argument, and <ΔΦx> and <ΔΦy> are the average phase angle changes (unwrapped) along the X and Y axes between two successive frames (i.e., the average velocities) over the past K frames. The average velocities, also known as velocity predictors, are expressed mathematically in the following equations:
The unwrapped or corrected phase angle changes for each direction are then combined to determine the movement of an image across the detector in two dimensions.
Combining Multiple Comb-Arrays
In accordance with the present invention, preferably the optical sensor includes multiple 1D or 2D comb-arrays placed at different locations of the imaging spot or area of the optical sensor illuminated by light reflected from the surface relative to which the sensor is moved. Motion data derived from the two or more comb-arrays is then combined to produce a single signal in which the effect of signal fading on motion detection is mitigated.
A flowchart of a method for detecting motion of an optical sensor relative to a surface using multiple comb-arrays, including a step of combining the unwrapped phase angle changes (ΔΦx1, ΔΦx2) for each of the arrays using radius-weighted-averaging according to an embodiment of the present invention, is shown
A signal processing method to combine the motion data derived from the arrays according to one embodiment of the present invention will now be described in detail. Generally, the method involves using the radius values as weighting coefficients when combining the motion data derived from the two detector arrays.
In particular, ΔΦx1 and ΔΦy1 are the corrected (unwrapped) phase angle changes between two successive frames for a first comb-array (array #1), and ΔΦx2 and ΔΦy2 for a second comb-array (array #2), the estimated 2D displacements, ΔΦx and ΔΦy, for the multi-detector-array system shall be derived from some combination of ΔΦx1 and ΔΦx2, and of ΔΦy1 and ΔΦy2. We know that the radius data, Rx and Ry, derived from the quasi-sinusoidal signals (CC, CS, SC and SS) are good indicators of speckle signal contrast or strength. A small radius value indicates low speckle contrast, i.e., the signal is fading. By using the radius values as weighting coefficients when combining the motion data derived from the two detector arrays, we can effectively reduce the impact of an erratic phase calculation due to signal fading on the final 2D displacement estimation. The following equations use the radius-weighted averages to combine displacement estimations derived from two detector arrays, where Rx1 and Ry1 are the radius data from array #1, and Rx2 and Ry2 are the radius data from array #2. Thus, a weighted average phase angle changes between two successive frames can be expressed mathematically in the following equations:
However, it has been found that the above weighted-average approach does not yield the optimum estimation when radius values from both detector arrays are very small and/or the phase angle changes are very small, i.e., when motion is very slow. By very slow it is meant a motion of about 1 mm/S or less. Thus in another embodiment, in these extreme situations the un-weighted average can be used to estimate the 2D displacements as follows:
Recall that “velocity predictors” are used to compute the corrected (unwrapped) phase angle changes of ΔΦx1, ΔΦy1 and ΔΦx2, ΔΦy2 from two individual arrays. Recall also that the “velocity predictors” are estimated as the mean phase angle changes between two successive frames over the past K frames. Thus, it is also desirable to use phase angle changes from both arrays when computing the “velocity predictors”. The velocity predictors calculated using phase angle changes from both arrays can be expressed mathematically in the following equations:
In yet another embodiment, the accuracy of these velocity predictors can be further improved with the use of “radius-weighting”. There are two approaches to accomplish this radius weighting. The first approach can be expressed mathematically in the following equations:
In this approach, the ΔΦx and ΔΦy values for each frame and each array are all averaged together and weighted by the radius value for the corresponding array and sample frame. This means that frames with small radii for both arrays will be given less weight than the frames with strong radii for both arrays.
In yet another embodiment radius weighting can be accomplished in second approach, which is expressed mathematically in the following equations:
In this approach, the ΔΦx and ΔΦy values within each sample frame are weighted over both arrays first to produce a delta phase for the frame, then averaged (un-weighted) over K frames. Unlike the first approach, all sample frames are given an equal weighting here since the radius information is lost after calculating the combined ΔΦx and ΔΦy values (weighted over both arrays) for each frame.
In summary, the advantages of the signal averaging circuit and method of the present invention over previous or conventional circuits and methods include improved accuracy of a phase angle unwrapping algorithm employed in quasi-sinusoidal signal processing, and hence the performance of the motion tracking by comb-array(s) without imposing additional limitations on the detectable speed of the motion. The method also enables fairly accurate detection of very high-speed motion (i.e., greater than 20 inch/second) with limited data sampling rate (i.e., less than 40 kHz). This last advantage is particularly desirable in applications, such as wireless optical mice, where the sampling rate is limited due to certain power consumption budget.
The advantages of the signal averaging circuit and method of the present invention over previous or conventional circuits and methods will now be illustrated in more detail with reference to
Results of Prototype Testing
This application claims priority to U.S. Non-Provisional application Ser. No. 11/355,551 filed Feb. 16, 2006, now U.S. Pat. No. 7,884,801 issued on Feb. 8, 2011, which is incorporated herein by reference.
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