This Patent Application is related to U.S. patent application Ser. No. 09/835,650, “ESTIMATING TOTAL AVERAGE DISTORTION IN A VIDEO WITH VARIABLE FRAMESKIP,” filed by Vetro et al. on Apr. 16, 2001, now U.S. Pat. No. 6,671,324 issued Dec. 30, 2003.
This invention relates generally to video coding, and more particularly to optimally encoding videos according to rate-distortion characteristics of the videos.
A number of video coding standards support variable frame rates, e.g., H.263 and MPEG-4. With variable frame-rates, any number of frames, or objects in the case of MPEG-4, can be skipped during the coding of the output video. That is, the skipped frames remain uncoded. With these video coding standards, the encoder may choose to skip frames of a video to either satisfy buffer constraints, or to optimize the video coding process. However, most encoders only skip frames to satisfy buffer constraints. Buffer constraints are usually due to bit-rate (bandwidth) limitations. The coder is forced to skip frames when insufficient bandwidth causes the buffer to fill up. Consequently, it is not possible to add any additional frames to the buffer, and these frames remain uncoded (skipped) until there is room in the buffer to store a new coded frame. This type of frame skipping can degrade the quality of the video because the content of the video is not considered. Note that skipping frames effectively reduces the frame-rate.
It is a problem to provide an optimal strategy for coding a video. Specifically, the video could be coded at a higher frame-rate having a lower spatial quality, or a lower frame-rate having a higher spatial quality. This trade-off between spatial and temporal quality is not a simple binary decision, but rather a decision over a finite set of coding parameters (constraints). Obviously, the best set of coding parameters will yield the optimal rate-distortion (R-D) curve that maximizes the frame-rate while minimizes the distortion. The two parameters of interest are the number of frames per second (fps or frame-rate) and a quantizer (Q) parameter. A higher quantizer parameter increases the spatial distortion. Lowering the frame rate, by skipping frames, reduces both the spatial and temporal distortion. In the known prior art, the distortion is measured only for coded frames, and is expressed as the mean-squared error (MSE) between pixels in the original video and the compressed video. That is, the prior art methods have two problems, only spatial distortion in coded frames is considered, and uncoded frames contributing to both the spatial and temporal distortion are not considered at all.
Generally, prior art optimized coding methods do not consider the temporal aspect of rate-distortion, see H. Sun, W. Kwok, M. Chien, and C. H. John Ju, “MPEG coding performance improvement by jointly optimizing coding mode decision and rate control,” IEEE Trans. Circuits Syst. Video Technol., June 1997, T. Weigand, M. Lightstone, D. Mukherjee, T. G. Campbell, S. K. Mitra, “R-D optimized mode selection for very low bit-rate video coding and the emerging H.263 standard,” IEEE Trans. Circuits Syst. Video Technol., and April 1996, J. Lee and B. W. Dickenson, “Rate-distortion optimized frame type selection for MPEG encoding,” IEEE Trans. Circuits Syst. Video Technol., June 1997. Generally, it is assumed that the frame-rate is fixed.
These methods consider optimizations on the quantizer parameter, H. Sun, W. Kwok, M. Chien, and C. H. John Ju, “MPEG coding performance improvement by jointly optimizing coding mode decision and rate control,” IEEE Trans. Circuits Syst. Video Technol., June 1997, mode decisions for motion and block coding, T. Weigand, M. Lightstone, D. Mukherjee, T. G. Campbell, S. K. Mitra, “R-D optimized mode selection for very low bit-rate video coding and the emerging H.263 standard,” IEEE Trans. Circuits Syst. Video Technol., April 1996, and frame-type selection, J. Lee and B. W. Dickenson, “Rate-distortion optimized frame type selection for MPEG encoding,” IEEE Trans. Circuits Syst. Video Technol., June 1997. Such methods can achieve an optimum coding when the frame-rate is fixed, and the bit-rate can be met for the given frame-rate. However, these methods are less than optimal for varying frame-rates.
It should be noted that the trade-off between spatial and temporal quality, while coding, has been described by F. C. Martins, W. Ding, and E. Feig, in “Joint control of spatial quantization and temporal sampling for very low bit-rate video,” Proc. ICASSP, May 1996. However, in their method, the trade-off was achieved manually.
Therefore, it is desired to provide a method and system for encoding a video subject to a variable frame-rate, while minimizing the total average distortion.
The present invention optimizes the encoding of a video that allows a variable frame-rate. The invention provides a method for determining an average distortion for coded frames as well as uncoded frames. Using this method in conjunction with methods that determine the frame-rate, enables the invention to make an optimal trade-off between the spatial and temporal quality in an encoded video that optimally minimize the average total distortion, which includes both spatial and temporal distortion.
More particularly, a method encodes a video objects. For each candidate object, a quantizer parameter and a skip parameter that jointly minimizes an average total distortion in the video are determined while satisfying predetermined constraints. The average total distortion includes spatial distortion of coded objects and spatial and temporal distortion of uncoded objects. Then, the candidate objects is encoded as the coded objects with the quantizer parameter and the skip parameter, and the candidate objects is skipped as the uncoded objects with the skip parameter.
a illustrates a constrained case for object-based coding, which shows variable VOP-rates of each abject with regular or constrained VOP-skip; and
b illustrates an unconstrained case for object-based coding, which shows variable VOP-rates of each object with irregular or unconstrained VOP-skip.
Introduction
As shown in
It should be noted, that in general, a frame is a specific example of a video object as defined in the MPEG-4 standard, particularly a fixed-size, rectangular video object. However, the invention generally applies to any video object having arbitrary variable shape and size. Hereinafter, we occasionally use the more familiar term frame to described an exemplary embodiment of any video object.
In addition, the invention can concurrently encode multiple video objects, perhaps frames of multiple program streams in a single transport stream, or multiple objects in a single program stream, or both.
Determining Distortion
We denote the spatial distortion 211 for coded objects 212 by
The spatial distortion 211 is dependent on the quantizer parameter Q, a spatial measure, while the temporal distortion 221 depends on both the quantizer and skip parameters.
Although the average distortion for uncoded objects does not directly influence the distortion of coded objects, the first distortion does influence the second distortion indirectly in two ways. First, the number of uncoded objects influences a residual statistical component, and second, the first distortion influences the quantizer parameter that is selected.
It is important to note that the distortion 211 for the uncoded frames 222 has a direct dependency on the quantization step size in the coded frames 212. The reason is that the uncoded frames 222 are interpolated from the coded frames 212, thereby carrying the same spatial quality, in addition to the temporal distortion caused by skipping the frame.
Given the above, we determine the average distortion over a specific time interval (ti,ti+f
In equation 1, the average distortion over the specified time interval is due to the spatial distortion of one coded object at t=ti+fs, plus the temporal distortion of fs−1 uncoded objects. The temporal distortion is dependent on the quantizer parameter for the previously coded object at t=ti.
Spatial Distortion
The variance of the quantization error is
σq2=a·2−2R·σz2, (2)
where σz2 is the input signal variance, R is the average rate per sample, and a is a constant that is dependent on the probability distribution function (PDF) of the input signal and quantizer characteristics, see Jayant et al. “Digital Coding of Waveforms,” Prentice Hall, 1984. In the absence of entropy coding, the value of a typically varies between 1.0 and 10. With entropy coding, the value of a can be less than 1.0. We use equation 2 to determine 210 the spatial distortion 211 as,
Dc(Ql)=a·2−2R(t
Equation 3 is valid for a wide array of quantizer parameters and signal characteristics. Such aspects are accounted for in the value of a. However, as stated above, the number uncoded objects can impact the statistics of the residual. In general, we have determined that the average bits per object increases for larger values of fs.
However, the variance remains substantially the same. This indicates that the variance is incapable of reflecting small differences in the residual that impact the actual relation between rate and distortion. This is caused by the presence of high-frequency coefficients. Actually, it is not only the presence of the high-frequency coefficients, but also their position. If certain run-lengths are not present in a variable length coding table, e.g. Huffman coding, less efficient escape coding techniques must be used. This probably means that fs affects the PDF of the residual, i.e., the value of a, while holding σz
We ignore any changes in the residual due to the uncoded frames, and use the model given by equation 3 to determine the spatial distortion 211. A fixed a and σz
Temporal Distortion
To determine 220 the spatial and temporal distortion 221 of the uncoded objects 222, we assume, without loss of generality, that a temporal interpolator of a coder can simply repeat the last coded object. Other interpolators, that average past and future coded objects, or make predictions based on motion, can also be considered.
As stated above, the distortion due to uncoded frames has two parts: one spatial due to the coding of the reference frame (last coded frame), and another temporal due to the interpolation error. We express the distortion at tk as,
wherein {circumflex over (ψ)}k denotes the estimated frame at t=tk, {tilde over (ψ)}l denote the last coded frame at ti<tk, {circumflex over (ψ)}k={tilde over (ψ)}i, and Δzi,k and Δci represent the frame interpolation error and coding error, respectively. If these quantities are independent, the mean square error (MSE) is
E{ek2}=E{Δ2ci}+E{Δ2zi,k}, (5)
which can be equivalently expressed as,
Ds(Qt,k)=Dc(Qi)+E{Δ2zt,k}, (6)
that is, the combination 230 of the spatial and temporal distortions. Equation 6 implies that the components contributing to the spatial and temporal distortion 221 are additive. However, other combinations may also be considered.
To derive the expected MSE due to frame interpolation, we first assume that the frame at time tk is related to the frame at time ti with motion vectors (Δx(x,y),Δy(x,y)),
ψk(x,y)=ψl(x+Δx(x,y),y+Δy(x,y)). (7)
In the equation 7, it is assumed that every pixel (x,y) has an associated motion vector. In actuality, we approximate the motion at every pixel by having one motion vector per macroblock. Then,
where
represent the spatial gradients in the x and y directions. Note, this equation is expanded by using a first-order Taylor expansion and is valid for small (Δx,Δy). This is equivalent to an optical flow equation, where the same condition on motion is also true.
It should be noted that equation 8 is less accurate when the amount of motion in a sequence of frames is large. However, for coding applications that estimate the distortion to decide if a lower MSE can be achieved with more uncoded frames, the accuracy of the motion estimation is not so critical because an optimized encoder would not skip frames for such sequences anyway. The MSE incurred by skipping frames in a sequence with large motion would be very large.
Treating the spatial gradients and motion vectors as random variables and assuming the motion vectors and spatial gradients are independent and zero-mean, we have,
E{Δ2zi,k}=σx
where (σx
The model in equation 9 is accurate for low to moderate motion sequences, This is sufficient because an optimized coder would not need such an accurate model when the motion is high, see U.S. patent application Ser. No. 09/835,650, “ESTIMATING TOTAL AVERAGE DISTORTION IN A VIDEO WITH VARIABLE FRAMESKIP,” filed by Vetro et al. on Apr. 16, 2001, now U.S. Pat. No. 6,671,324 issued Dec. 30, 2003, and incorporated herein in its entirety by reference.
Determining Rate
A quadratic rate-quantizer (R-Q) relationship for a single object at time t=tk can be determined by,
where Sk is the encoding complexity, often substituted by the sum or mean of absolute differences of the residual component, Qk denotes the quantizer parameter 111 and Xi,k denotes the model parameters that are fitted to the data, see T. Chiang and Y-Q. Zhang, “A new rate control scheme using quadratic rate-distortion modeling,” IEEE Trans. Circuits Syst. Video Technol., February 1997, A. Vetro, H. Sun, and Y. Wang, “MPEG-4 rate control for multiple video objects,” IEEE Trans. Circuits and Syst. Video Technol., February 1999. Other methods can also be used, see H. M. Hang and J. J Chen, “Source model for transform video coder and its application—Part I: Fundamental theory,” IEEE Trans. Circuits Syst. Video Technol., vol. 7, no. 2, pp. 287–298, April 1997. In any case, given the R-Q relationship for a single frame, the average bit-rate over time,
where the
The parameter that relates the rate and distortion is the skip parameter, fs introduced above. This parameter can change at each coding instant, therefore the relation between the skip parameter and the average coded frame rate,
where Fsrc is the source frame-rate. For example, if the source-frame rate is 30 fps, and the average coded frame rate is 10, then the skip parameter is 3, and only every third frame, i.e.,
frames is coded. To be clear, fs is a parameter used to quantify the distortion due to skipping objects or frames. In turn, this parameter affects the values of
Frame-Based Rate Control
We have described how to determine the frame-rate for the coded frames, or generally video objects, and the average distortion over a given time interval for the coded and uncoded objects. We now describe a rate control method that minimizes the average distortion, subject to constraints on the overall bit-rate and buffer occupancy. Formally, we express the method and its three constraints by,
where R is the target bit-rate, Bmax is the maximum buffer size in bits, Bi is the current buffer level, also in bits, and Rdrain is the rate at which the buffer “drains” per object.
Informally, we determine the values of the quantizer (Q) 111 and skip parameter (f) 121 that minimize 130 the average distortion 131–132, such that the target bit-rate, buffer size, buffer level, and drain rate constraints are satisfied.
As shown in
In step 310, we set the maximum skip parameter as fs=max{1, fl−δ}, Dmin=∞.
In step 320, we determine the target number of bits for the object. This value is mainly dependent on the current value of fs and Bi.
In step 330, we determine the value of the quantizer parameter Ql+f
In step 340, we determine if the quantizer parameter 111 and skip parameter 121 still satisfies bit-rate and buffer constraints. If false, then increment 351 the parameter long as the new fs≦min{fl+δ,fmax} because the current value of fs is no longer valid, and iterate the previous steps.
In step 350, we determine the distortion using equation 1.
Otherwise, if true, in step 360, we determine if the current distortion is less than Dmin. If false, we proceed with step 351 as described above. If true, replace Dmin with the current distortion and record 370 the encoding parameters fs 121 and Qi+f
Target Bit-Rate and Buffer Control
Given a candidate value of frame skip fs, a target bit-rate T for a particular object is dependent on this value of fs, and the current buffer level Bi. An initial target, T1 is determined according to the number of bits remaining in the video, the number of remaining objects, and the number of bits required to encode the last object, see A. Vetro, H. Sun, and Y. Wang, “MPEG-4 rate control for multiple video objects,” IEEE Trans. Circuits and Syst. Video Technol., February 1999. The only difference between this initial estimate and subsequent rates is that the remaining number of objects are divided by the candidates fs. In this way, a proportionately higher number of bits will be assigned to each object when the skip parameter is higher.
After the initial target bit rate has been determined, it is scaled according to,
where a modified buffer fullness {tilde over (B)}l, accounts for the current value of the skip parameter, and is expressed as,
{tilde over (B)}i=Bl−(fs−1)·Rdrain (15)
This modification is made to reflect the lower occupancy level as a result of object skipping. On contrast, prior art methods do not make this adjustment and the scaling operation of equation 14 would force the target bit-rate too low, see ISO/IEC 14496–5:2000 “Information technology—coding of audio/visual objects,” Part 5: Reference Software.
If the target bit-rate is too low for lower skip parameter values, the resulting quantizer parameter is unable to differentiate itself from quantizers that were determined at lower skip parameter values. In this case, it is difficult to make the trade-off between coded and temporal distortion in equation 1 to ever favor skipping objects.
Practical Considerations
In practical coding applications, where an encoder would estimate the total distortion, the main problem is to determine the temporal distortion based on past and current data. For instance, equation 9 assumes that the motion between i, the current object, and k, a future object is known. However, this would imply that motion estimation is performed for each candidate object to be coded or not, where these candidate objects have a time index k. This is impractical. Therefore, we assume the motion between objects is linear, and approximate the variance of motion vectors by,
where fl denotes the number of uncoded objects between the last coded object and its reference object.
Similarly, estimates of the distortion for the next candidate object to be coded, i.e., the measurement specified by equation 3, requires knowledge of a and σz
However, as described above, the relationship between the a, σz
Similarly, estimates of the distortion for the next object to be coded (i.e., calculation of equation 6 requires knowledge of a and σz
Frame-Based Results
Object-Based Rate Control
To achieve gains in videos with areas of larger amount of motion, especially a video where the fast motion is localized, e.g., the mouth in the Akiyo sequence, we prefer an object-based framework. In this framework, different objects are coded with different temporal resolutions (video-object-plane or VOP-rates) and different quantization parameters. The frame-rate is a special case of the VOP-rate, that is, the object is an entire frame.
Similar to the problem statement for the frame-based approach, we minimize the average distortion over time, subject to constraints on the bit-rate and buffer size. As defined in equation 13, the minimum distortion is determined by jointly selecting a skip parameter that decides the next frame (object) to be coded, and the quantization parameter that is used to actually code the object.
However, in an object-based framework, we have the freedom to choose different skip parameters and corresponding quantization parameters for each video object. Although such freedom provides the potential for coding gain, it also complicates the problem significantly, because now we must track the individual time instants that each object is coded. This is necessary because we must allocate bits according to a new buffering policy. The new policy may need to account for irregular buffer updates based on arbitrarily shaped objects with different complexity and size. Furthermore, this must be done to avoid any potential composition problems that would be encountered by the decoder. For details on the composition problem and how it can be avoided, see U.S. patent application Ser. No., 09/579,889, “Method for encoding and transcoding multiple video objects with variable temporal resolution”, filed by Vetro et al. on May 26, 2000.
In the prior art, see C. W. Hung and D. W. Lin, “Towards jointly optimal rate allocation for multiple videos with possibly different object rates,” in Proc. Int'l Sump. on Circuits and Systems, Geneva, Switzerland, May 2000, the problem of rate allocation for multiple video sequences with different object rates was considered. They described the problem only within the context of frame-based video coding, where composition problems were not a concern.
The frame-based problem for multiple video coding was described by L. Wang and A. Vincent, in “Joint rate control for multi-program video coding,” IEEE Trans. Consumer Electronics, vol. 42, no. 3, pp. 300–305, August 1996. However, the possibility to have different frame-rates in video sequences was never considered. From this earlier work, however, the concept of a super-frame is still used. A super-frame refers to a set of video objects that are co-located in time.
a illustrates this concept for a constrained case, and
In the constrained case, the delay is dependent on the super-frame period, which is equal to the time between cycles and can be calculated from the fixed VOP-rates of each sequence. For example, in
With respect to the first problem, restricting the range of observation time can reduce delay. This is actually what is done for multiple video sequences with no periodic structure, i.e., when the super-frame period is infinite or the VOP-rates are unconstrained. However, this limitation in observation time requires the ability to predict the R-D characteristics for future objects having different complexity and size. Given that this can be done, the need to collect the actual R-D values is no longer required. Finally, if these R-D values contain information about the distortion for non-coded objects, then there is no need to choose the fixed VOP-rates for each sequence beforehand. This assumes some a priori knowledge about objects in video sequences.
Our method solves all of the above problems. Similar to Equation 13 without the restrictions on the bit-rate and buffer size, the problem for the constrained case as shown in
arg min[Q,f
where Q is a matrix of quantization parameters for each video object plane (object) coded at various time instants within the time interval (ti,ti+f
With variable VOP-rates for each object, we do not assume that each object will be coded at every time instant within the specified interval. Therefore, zero values are placed in Q to denote time instants that a particular object remains uncoded. In the example shown in
In order to satisfy the VOP-rate requirements for the constrained case, in general, i.e., the VOP-rates of all of the objects must lead to a periodic structure, we require that
fs=LCF(θ)≦fmax, (18)
where LCF(θ) denotes the least common factor among the VOP-rates θ.
To further define the constraints on the bit-rate and buffer size, we let M denote the set of all objects and Tj denote the set of time indices for which an object j is coded. For example, in
which essentially says that the sum of the bit-rates for all objects, at all time instants within the specified time interval, must be less that the calculated bit-rate budget over that time interval.
To define the constraints on the buffer size, we let
denote the complete set of coded indices. Also, given lεL, we let l0 equal the previous value of l except when l is the first element in L; in that case, l0=0. Then, we defined the set of buffer constraints as,
where Ml denotes the set of objects that are coded at index l. The above conditions ensure that buffer overflow and underflow are avoided at every coded time instant.
In one embodiment, we solve the minimization given in equation 17 that is subject to constraints given by equations 18–20 by first breaking the main problem into smaller sub-problems. In this way, each object has its own sub-problem and can be solved using the frame-based optimization discussed above. Using the solutions to each sub-problem as input, we then consider the global solution. Of course, this can be accomplished through several iterations.
In an alternative embodiment, we first allocate a target number of bits to each object, and then determine the skip (fs) and quantizer (Q) parameter for each object separately. The initial rate allocation can be based on the previous rate-distortion characteristics of each object. As with the above approach, individual solutions for each object need to be re-considered in light of the constraints on individual skip factors, and overall bit-rate and buffer size constraints.
In yet another alternative embodiment, the problem is directly solved globally by searching over all valid combinations of skip and quantization parameters. This may be done in an iterative manner as above, where several choices for fs are considered. The main difference is that the vector θ can have numerous possibilities for each VOP-skip parameter fs. Therefore, all valid possibilities for θ need to be evaluated in each case.
This invention is described using specific terms and examples. It is to be understood that various other adaptations and modifications may be made within the spirit and scope of the invention. Therefore, it is the object of the appended claims to cover all such variations and modifications as come within the true spirit and scope of the invention.
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