System and method for encoding video data using computationally efficient adaptive spline wavelets

Information

  • Patent Grant
  • 6587507
  • Patent Number
    6,587,507
  • Date Filed
    Friday, March 24, 2000
    24 years ago
  • Date Issued
    Tuesday, July 1, 2003
    21 years ago
Abstract
A system and method for encoding a two dimensional array of data utilizes a library having entries corresponding to a set of predefined two dimensional adaptive spline wavelet waveforms. Each predefined two dimensional adaptive spline wavelet waveform is formed by the superposition of one or more B-splines. The data encoding method identifies a set of best matches between the array of data and the predefined two dimensional adaptive spline wavelet waveforms by generating the inner product of the array of data and each of the predefined two dimensional adaptive spline wavelet waveforms. Each inner product is generated by FIR filtering the data with a corresponding set of FIR filter coefficients, and then determining which of the inner products have largest values. Once a set of best matches has been found, the data encoding method generates data representing the identified set of best matches. The generated data indicates for each match: one of the library entries, a position within the array of data at which the match was found, and a magnitude of the match. The data encoding method is computationally efficient because inner products are computed by FIR filtering.
Description




The present invention relates generally to encoding frames of motion compensated, differential video data, and particularly to a method of encoded so-called “residue frames” of MPEG video data by representing only the highest energy portions of the residue frames as the sum of a set of predefined two-dimensional waveforms.




BACKGROUND OF THE INVENTION




Referring to

FIG. 1

, a preferred embodiment of the present invention operates in the context of a video encoding and decoding systems. In a typical video system


100


a video camera or other video source


113


outputs a series of video frames that are initially processed and encoded by a video encoder


132


. The video encoder may be an MPEG, MPEG2, MPEG4 or similar encoder, but could also be any other type of video encoder that generates motion compensated residue or delta frames representing the differences between certain frames and earlier frames. In the preferred embodiment, the output of the video encoder


132


includes so called I frames and “residue frames.” In simple terms, each I frame contains “primary data” representing an entire new picture, called a frame, while each residue frame contains differential data representing the differences between a previous video frame and a subsequent video frame.




The I frames and residue frames are compressed using various techniques to produce compressed data


124


(sometimes herein called encoded data). The present invention concerns only a data compressor


134


used to compress “residue frames” and other sparse sets of data that contain “islands” of non-zero values. The resulting encoded data


124


is stored, or transmitted to another computer, or both, using appropriate storage and transmission mechanisms


106


,


112


.




A video decoder


140


and data decompressor


135


convert the compressed video data


124


back into “reference pictures,” which represent reconstruct frames of video data. The reconstructed video data frames are the same frames as those that a video decoder would generate while processing the compressed video data for viewing. The video encoder


132


compares a current video data frame with a motion compensated version of the most recent reference picture to generate a residue frame.




To reconstruct video images from encoded data, a data decompressor


135


is used to reverse the encoding process performed by the data compressor


134


. Once again, in this document we are only concerning with the part of the system or process dealing with residue frames or sparse data frames. The resulting decoded data is then processed by a video decoder (e.g., a MPEG or similar decoder)


140


, which reconstructs a set of video frames suitable for viewing on a video monitor


115


, or for storage in uncompressed form in a data storage device


106


.




As can be seen from the above discussion, the data compressor and decompressor of the present invention supplement the operation of motion compensating video encoders and decoders, enabling further compression of the video data. This reduces the bandwidth needed to transmit video images and the storage required to store such video images.





FIG. 3

is a highly schematic representation of a residue frame. The residue frame is filled primarily with data having very small values. A relatively small portion of the data in the residue frame has significant energy. The high energy portions of the residue frame are represented in

FIG. 3

by concentric circular and oval regions, each line representing data values of equal energy. The regions of the residue frame between the circular and oval regions represent low energy data values.




One goal of the present invention is to match the shapes of the peaks in the residue frame with predefined two dimensional waveforms so that each such peak can be presented as the sum (i.e., superposition) of a small number of predefined waveforms, each multiplied by a magnitude value to indicate the best scaling of the predefined waveforms to match the data in the residue frame. Generally, the process of finding the best matches between a set of two dimensional data and a set of predefined waveforms requires computing the inner product of the data with each of the predefined waveforms at all possible positions within the data. Computing such inner products is typically computationally intensive because it requires the computation of the integral of each predefined waveform at every possible position of the waveforms within the data.




Another goal of the present invention is provide a set of spatially truncated two dimensional waveforms that have the property that determining the best match between the waveforms and a set of data is can be accomplished very efficiently through the successive application of a set of FIR (finite impulse response) filters. In particular, it is a goal of the present invention to reduce the computations required to find a best match between residue frame data and the predefined waveforms by using waveforms whose inner product with a set of video data can be generated through the application of FIR filters. Furthermore, it is a goal of the present invention to use waveforms that have been defined so that match values for a second waveform can be obtained by applying a predefined FIR filter to the match values for a first one of the waveforms.




SUMMARY OF THE INVENTION




In summary, the present invention is a system and method for encoding a two dimensional array of data. The data to be encoded may be a residue frame generated by a motion compensated video encoder.




The data encoding method utilizes a library having entries corresponding to a set of predefined two dimensional adaptive spline wavelet waveforms. Each predefined two dimensional adaptive spline wavelet waveform is formed by the superposition of one or more B-splines.




The data encoding method identifies a set of best matches between the array of data and the predefined two dimensional adaptive spline wavelet waveforms by generating the inner product of the array of data and each of the predefined two dimensional adaptive spline wavelet waveforms. Each inner product is generated by FIR filtering the data with a corresponding set of FIR filter coefficients, and then determining which of the inner products have largest values. Once a set of best matches has been found, the data encoding method generates data representing the identified set of best matches. The generated data indicates for each match: one of the library entries, a position within the array of data at which the match was found, and a magnitude of the match.




The data encoding method is computationally efficient because inner products are computed by FIR filtering. Further, the inner product between the array of data and some of the predefined two dimensional adaptive spline wavelet waveforms is generated by FIR filtering another one of the inner products using FIR filter coefficients specified by the library.




In addition, the inner product between the array of data and a first one of the predefined two dimensional adaptive spline wavelet waveforms having a low resolution level is generated by FIR filtering an earlier generated inner product of the array of data and a second one of the predefined two dimensional adaptive spline wavelet waveforms having a higher resolution level, using a predefined set of resolution modifying FIR filter coefficients. This feature of the invention takes advantage of the multiresolution properties of B-splines and enables the use of short FIR filters to efficiently compute the inner product between an array of data an low resolution waveforms.











BRIEF DESCRIPTION OF THE DRAWINGS




Additional objects and features of the invention will be more readily apparent from the following detailed description and appended claims when taken in conjunction with the drawings, in which:





FIG. 1

is a block diagram of video data processing system.





FIG. 2

is a block diagram of a computer system that implements a video data processing system.





FIG. 3

is a schematic representation of a residue frame.





FIGS. 4A through 4D

represent first through fourth order B-spline functions, respectively.





FIG. 5

is a table representing a library or predefined set of one dimensional waveforms, called adaptive spline wavelets, which are combined to form the two dimensional waveforms that are matched to residue frame data by a data compression procedure.





FIGS. 6A-6N

depicts the waveforms of the adaptive spline wavelets listed in the table in FIG.


5


.





FIG. 7

depicts, in schematic form, the procedure for computing the inner product of a set of video data with a predefined two dimensional waveform by applying a corresponding set of FIR filters to the video data.





FIG. 8

schematically depicts computational relationships between the inner products of a set of residue frame data f with each of a set of predefined waveforms ψ


i


.





FIG. 9

is a flow chart of the procedure for encoding a residue frame by repeatedly finding the best match between the residue frame data and a set of predefined two dimensional waveforms, and sending the resulting match determinations to an encoding procedure for encoding.





FIGS. 10 and 11

represents the data structure used to represent a residue frame as a set of matches with predefined two dimensional waveforms.











DESCRIPTION OF THE PREFERRED EMBODIMENTS




Referring to

FIG. 2

, there is shown a computer system


100


that implements a video data processing system. In a preferred embodiment, the computer system


100


includes:




a central processing unit


102


(also called a data processing unit);




an internal memory bus


104


;




memory


106


, which may include both high speed random access memory and slower non-volatile memory (e.g., magnetic disk storage);




a user interface


108


, typically including a keyboard, pointer device, and monitor;




a communications interface


110


for sending and receiving files and other data to other computers via various communications channels


112


.




Optionally, the computer system


100


, depending on the type of product in which the system


100


is being used, may optionally further include a video camera


113


, a DVD player


114


, a digital television


115


, and/or a video telephone


116


. These additional devices are video data input and output devices that can be used in conjunction with the video processing functions of the system.




The memory


106


may store:




an operating system


120


for controlling the background functions of the system


110


;




video data, including residue frame data


122


;




encoded video data


124


, which is generally compressed and therefore occupies less space than the corresponding video residue frame data


122


;




reconstructed video data


126


, which is video data that has been reconstructed from encoded video data


124


;




data storage and transmission procedures


128


, which may be part of the operating system; and




an image processing module


130


, which handles the processing of video data.




The image processing module


130


may include an video encoder


132


, which is a module containing procedures that convert a sequence of video frames into a sequence of data frames that includes the previously mentioned I and residue frames. A corresponding video decoder


140


module procedures for decoding a sequence of I and residue frames so as to reconstruct a corresponding set sequence of video frames. In other embodiments, the video encoder


132


and decoder


140


may be implemented as a separate circuit, or as a circuit within the CPU, or may be partially implemented in hardware and partially in software. Since the present invention does not change the underlying operation of the video encoder


130


and decoder


140


(sometimes collectively called a “codec”), the present invention is believed to be compatible with most implementations of such video codec.




The image processing module


130


may further include:




an data compressor procedure


134


that identifies the best matches between the predefined two dimensional waveforms and a residue frame and encodes those matches;




a data decompressor procedure


135


that reconstructs video images from compressed video data;




a data quantization procedure


136


(also called a quantizer) that quantizes waveform match coefficients to enable efficient encoding of those values;




a procedure


138


for packing the waveform match data into a space efficient data structure;




a decoder procedure


140


, which reconstructs a Residue frame from the encoded data generated by an encoder procedure;




a data de-quantization procedure


142


(also called a de-quantizer) that maps quantized values back to the corresponding match coefficient values;




a procedure


144


for unpacking data from the data structure used to stored waveform match data;




a library


150


of adaptive spline wavelets, which are used to define the two dimensional waveforms that are matched with the Residue frame data; and




a table


152


of normalization coefficients, which are needed to identify the best matches between the predefined two dimensional waveforms and the residue frame data.




When used in a video capture and storage system or mode, the data decompressor procedure


135


generated reference pictures to the video encoder procedure


132


, which uses the reference pictures to generate residue frames. When used in a video playback system or mode, the data decompressor procedure


135


generates video frame data suitable for decoding by a video decoder into a video signal suitable for use reference pictures to the video encoder procedure


132


,




The general idea of representing an arbitrary set of data using a set of best matches with a predefined set of waveforms is well known. For instance, a standard Fourier transform is a way of representing a set of data as a sum of predefined sinusoidal waveforms. Thus, a two dimensional Fourier transform could be used to represent the data in a residue frame. However, representing residue frame data using a set of sinusoidal waveforms is very computationally intensive, and may not be suitable for low power devices such as video telephones, desktop computers and the like.




B-Splines and Adaptive Spline Wavelets





FIGS. 4A through 4D

represent first through fourth order cardinal B-spline functions, respectively. The first order cardinal B-spline N


1


(x) is simply a square wave, defined as:











N
1



(
x
)


=

{



1




if





0


x
<
1





0



otherwise













(
1
)













Higher order cardinal B-spline functions N


m


(x), for m>1, are defined recursively as:











N
m



(
x
)


=



0
1





N

m
-
1




(

x
-
t

)









t







(
2
)













The cardinal B-splines are shifted to the left to give “centered” B-splines as follows:











B
m



(
x
)


=


N
m



(

x
+



m
2




)






(
3
)













where the notation └y┘ indicates the largest integer not exceeding y.




From the centered B-splines, a set of normalized, centered B-splines are formed as follows:











φ

m
,
j

n



(
x
)


=



2

n
/
2





N

2

m




(
m
)



1
/
2






B
m



(



2
n


x

-
j

)







(
4
)













where N


2m


(m) is a cardinal spline of order 2m, n indicates the resolution level of the normalized B-spline, and j indicates the position at which the normalized B-spline is centered. The values of N


2m


(m) are give in Table 1. Note that r is equal to 0 in the denominator of the above equation for φ


n




m,j


(x).












TABLE 1











Values of N


2m


(m ± r)


















m/r




0




1




2




3




4











1




1




0




0




0




0







2




4/3!




1/3!




0




0




0







3




66/5!




26/5!




1/5!




0




0







4




2416/7!




1191/7!




120/7!




1/7!




0















The predefined two dimensional waveforms used in the preferred embodiment of the present invention are formed using linear combinations of the first order B spline and the fourth order B spline functions, as will be explained next with respect to

FIGS. 5 and 6A

through


6


N. The predefined waveforms used by the present invention are herein called “adaptive spline wavelets.” One dimensional adaptive spline wavelets will be described first, and then the two dimensional waveforms will be described.




Each of the normalized B-splines is a lowpass filter. From the normalized B-splines, φ


n




m,j


(x), a set of “adaptive spline wavelets” are generated as follows:











ψ

m
,
j

n



(
x
)


=


C
a





l1




a

j
-
l1





φ

m
,
l1

n



(
x
)









(
5
)













where the set of coefficients {a


i


} indicates the combination (i.e., superposition) of normalized B-splines used to form a particular adaptive spline wavelet and C


a


is a normalization coefficient that scales the adaptive spline wavelet so as to give it unit energy. In particular, C


a


is defined as:










C
a

=


{



N

2

m




(
m
)






i
,
j





a
i



a
j




N

2

m




(

m
+
i
-
j

)





}


1
/
2






(
6
)













The set of two dimensional adaptive spline wavelets used in the present invention are defined as linear combinations of the first order and fourth order normalized B-splines, as follows:











ψ

m
,
j
,
k

n



(

x
,
y

)


=


C
g







l
1

,

l
2






a

j
-

l
1





b

k
-

l
2






φ


m
1

,

l
1



n
1




(
x
)





φ


m
2

,

l
2



n
2




(
y
)









(
7
)













where m=(m


1


, m


2


), n=(n


1


,n


2


) and the energy normalization coefficient C


g


is computed as follows:










C
g

=


{





N

2


m
1





(

m
1

)





N

2


m
2





(

m
2

)







i
,
j





a
i



a
j




N

2


m
1





(


m
1

+
i
-
j

)





×

1




k
,
l





b
k



b
l




N

2


m
2





(


m
2

+
k
-
l

)






}


1
/
2






(
8
)













As indicated below, in a preferred embodiment a library containing 196 predefined two dimensional adaptive spline wavelets is used, and the C


g


for each of those 196 adaptive spline wavelets is pre-computed and stored in the library.




To rewrite equation 7 so as to express ψ


m,j,k




n


(x,y) in terms of centered B-splines




B


m






1






,l






1






n






1




(x) B


m






2






,l






2






n






2




(y) instead of normalized centered B-splines φ


m






1






,l






1






n






1




(x)φ


m






2






,l






2






n






2




(y) , the normalization constant C


g


in equation 7 is changed to C


g


* as follows:










C
g
*

=


{



2


n
1

+

n
2







i
,
j





a
i



a
j




N

2


m
1





(


m
1

+
i
-
j

)





×

1




k
,
l





b
k



b
l




N

2


m
2





(


m
2

+
k
-
l

)






}


1
/
2






(
8
)













to get:











ψ

m
,
j
,
k

n



(

x
,
y

)


=


C
g
*







l
1

,

l
2






a

j
-

l
1





b

k
-

l
2






B


m
1

,

l
1



n
1




(
x
)





B


m
2

,

l
2



n
2




(
y
)









(
9
)













Library of Adaptive Spline Wavelets





FIG. 5

represents a “library”


150


of fourteen one dimensional adaptive spline wavelets. For convenience, the normalization constants C


g


are not given in the expressions of the adaptive spline wavelets in this document.




Each of the first two adaptive spline wavelets is formed by superpositioning (additively combining) copies of the first order B spline B


1


(x). The coefficients shown in

FIG. 5

for the first adaptive spline wavelet ψ


0


(x) represent the multiplier applied to each copy of the B spline. In particular:






ψ


0


(


x


)=−


B




1


(


x+


1)+


B




1


(


x


−1).







FIG. 6A

shows the one dimensional waveform for ψ


0


(x). Similarly, the coefficients shown in

FIG. 5

for the second adaptive spline wavelet ψ


1


(x) are applied to define that waveform as follows:






ψ


1


(


x


)=


B




1


(


x


)+


B




1


(


x


−1).







FIG. 6B

shows the one dimensional waveform for ψ


1


(x).




The next four adaptive spline wavelets in the library


150


are formed from linear combinations of the fourth order B spline, as follows:











ψ
2



(
x
)


=






B
4



(
x
)










ψ
3



(
x
)


=






(


-
1

,
2
,

-
1


)




B
4



(
x
)









=






-


B
4



(

x
+
1

)



+

2



B
4



(
x
)



-


B
4



(

x
-
1

)











ψ
4



(
x
)


=






(


-
1

,
0
,
2
,
0
,

-
1


)




B
4



(
x
)









=






-


B
4



(

x
+
2

)



+

2



B
4



(
x
)



-


B
4



(

x
-
2

)











ψ
5



(
x
)


=






(


-
1

,
1
,
1
,

-
1


)




B
4



(
x
)









=






-


B
4



(

x
+
2

)



+


B
4



(

x
+
1

)


+


B
4



(
x
)


-


B
4



(

x
-
1

)











ψ
6



(
x
)


=






(

1
,
1
,
1
,
1
,
1

)




B
4



(
x
)









=







B
4



(

x
+
2

)


+


B
4



(

x
+
1

)


+


B
4



(
x
)


+


B
4



(

x
-
1

)


+


B
4



(

x
-
2

)

















FIGS. 6C-6G

show the one dimensional waveforms for ψ


2


(x) through ψ


6


(x).




The next set of adaptive spline wavelets in the library


150


are formed from linear combinations of a version of the fourth order B spline that is scaled to be twice as wide as the basic fourth order B spline. In other words, the scaled B spline has half the resolution of the fourth order B spline. This next set of adaptive spline wavelets are defined as follows:











ψ
7



(
x
)


=






B
4



(

x
/
2

)










ψ
8



(
x
)


=






(

1
,

-
1


)




B
4



(

x
/
2

)









=







B
4



(

x
/
2

)


-


B
4



(


x
/
2

-
1

)











ψ
9



(
x
)


=






(

1
,
1
,

-
1

,

-
1


)




B
4



(

x
/
2

)









=







B
4



(


x
/
2

+
1

)


+


B
4



(

x
/
2

)


-


B
4



(


x
/
2

-
1

)


-


B
4



(


x
/
2

-
2

)











ψ
10



(
x
)


=






(


-
1

,
1
,
1
,

-
1


)




B
4



(

x
/
2

)









=






-


B
4



(


x
/
2

+
1

)



+


B
4



(

x
/
2

)


+


B
4



(


x
/
2

-
1

)


-


B
4



(


x
/
2

-
2

)











ψ
11



(
x
)


=






(


-
1

,
2
,

-
2

,
1

)




B
4



(

x
/
2

)









=






-


B
4



(


x
/
2

+
1

)



+

2



B
4



(

x
/
2

)



-

2



B
4



(


x
/
2

-
1

)



+


B
4



(


x
/
2

-
2

)











ψ
12



(
x
)


=






(

1
,
1
,
1
,
1
,
1

)




B
4



(

x
/
2

)









=







B
4



(


x
/
2

+
2

)


+


B
4



(


x
/
2

+
1

)


+


B
4



(

x
/
2

)


+


B
4



(


x
/
2

-
1

)


+













B
4



(


x
/
2

-
2

)
















FIGS. 6H-6M

show the one dimensional waveforms for ψ


7


(x) through ψ


12


(x).




The last adaptive spline wavelet in the library


150


is formed by scaling the fourth order B spline to have one fourth the resolution of the fourth order B spline. This adaptive spline wavelet is defined as follows:






ψ


13


(


x


)=


B




4


(


x/


4)







FIG. 6N

shows the one dimensional waveform for ψ


13


(x).




The predefined two dimensional waveforms used by the present invention to represent residue frame data are generated by forming all possible pairwise combinations of the one dimensional wavelets in the library:






ψ


a,b=ψ




a1


(


x−b




1


))ψ


a2


(


y−b




2


)






where “a” is a vector of two values (a


1


, a


2


) representing a pair of one dimensional adaptive spline wavelets that have been combined to form a two dimensional adaptive spline wavelet, and “b” is a vector (b


1


, b


2


) representing the center point of the two dimensional adaptive spline wavelet. The first waveform in each combination controls the value of the ψa,b waveform as a function of position along the x axis, and the second waveform in each combination controls the value of the ψa,b waveform as a function of position along the y axis.




This set of two dimensional adaptive spline wavelets ψa,b is herein called the “library of two dimensional adaptive spline wavelets,” or alternately a “predefined set of two dimensional adaptive spline wavelets” or a “predefined set of two dimensional waveforms.”




Basic Procedure for Finding Best Fit Between a Set of Data and a Two Dimensional Adaptive Spline Wavelet




Given any two dimensional waveform that is defined as the product of two orthogonal one dimensional waveforms, the way to determine the best fit between that waveform and an array of data is to convolve the data with the waveform. Convolving the waveform with the data is performed by simply FIR filtering the data with a set of coefficients representing each of the two one dimensional waveforms.




The location of the largest resulting value represents the location in the data array of the best fit, and the value of the largest resulting value represents the amount by which the two dimensional waveform should be multiplied to best fit the data array.




Referring to

FIG. 7

, the procedure for filtering a set of video data to compute match values between a predefined two dimensional waveform and a set of video data f is as follows.




The library of two dimensional adaptive spline wavelets is selected to make the process of forming the inner product of residue frame data with each of the 196 two dimensional adaptive spline wavelets in a library computationally efficient. Forming the inner product of a set of data and a two dimensional waveform is sometimes called convolving the data with data with the waveform.




Because the present invention uses B-spline based waveforms, the inner product of video data and the waveforms can all be computed using FIR filtering, which is well known to be computationally efficient.




To generate the inner product of a residue frame with a two dimensional adaptive spline wavelet defined as:






ψ


a


,0=ψ


0


(


x





1


(


y


)






the residue frame data is filtered in the x direction with an FIR filter whose coefficients are (−1, 0, 1), and is also filtered in the y direction with an FIR filter whose coefficients are (1, 1). In other words, the coefficients shown in the table in

FIG. 5

represent the FIR coefficients for generating the inner product of the corresponding adaptive spline wavelets with a set of data.




The convolving process, for finding a best match between an adaptive spline wavelet and a set of data, requires an additional FIR filtering step when applying the adaptive spline wavelets formed from fourth order B splines. In particular, the data is first FIR filtered with coefficients (1/6, 4/6, 1/6) representing the fourth order B spline B


4


(x) and then is FIR filtered with the library coefficients for the particular adaptive spline wavelet. Thus, as shown in

FIG. 7

, preliminary FIR filtering steps


170


,


172


are performed, to convolve the data with the fourth order B spline if only if the x and y components of the adaptive spline wavelet are based on the fourth order B spline. The resulting, intermediate convolved data f


1


is then FIR filtered


174


,


176


along the x and y axes using the coefficients for the x and y components of the adaptive spline wavelet. This produces a set of match values <f,ψa,b>, where a represents the two dimensional adaptive spline wavelet with which the data f has been convolved, b represents the positions at which the inner product of f and the adaptive spline wavelet have been evaluated, and the brackets < . . . > represent the inner product or convolution operation. The largest value in this set represents the best match between the data and the two dimensional adaptive spline wavelet.




Multi-Resolution Analysis




Referring to

FIG. 3

, the best representation of any high energy region of a Residue frame is often equal to the sum of one or two low resolution waveforms plus one or more higher resolution waveforms. The low resolution waveforms are wider and can be used to roughly model a large, wide peak in the data. The higher resolution waveforms are narrower and can be used to model more localized features of the data. Thus, a region of a residue frame might be represented as:








f′=c




0




ψLR




1


,


b




0


+


c




1




ψHR




1


,


b




1


+


c




2




ψHR




1


,


b




2


+ . . .






where f′ represents the model of a peak in the data, c


0


, c


1


, c


2


are real number coefficients, ψLR


1


,b


0


represents a low resolution two dimensional adaptive spline wavelet centered at position b


0


, c


1


ψHR


1


,b


1


represents a high resolution two dimensional adaptive spline wavelet centered at position b


1


and c


2


ψHR


1


,b


2


represents a high resolution two dimensional adaptive spline wavelet centered at position b


2


.




Referring to

FIG. 5

, the “level” value in the adaptive spline wavelet table represents the resolution level of the adaptive spline wavelet. Adaptive spline wavelets at level 0 have the highest spatial resolution; those at level 1 have half of the highest level of spatial resolution, and those at level 2 have one fourth of the highest level of spatial resolution.




A key feature of the present invention is that the only inner products between waveforms and data that need to be computed to generate waveform match values are the inner products of the data with the B-spline functions: <f(x),B(x−j)>. All other match values <f(x),ψ


k


(x−j)>, for all k (i.e., for all waveforms defined in the library) are derived by using very short FIR filters to filter the match values produced by forming the inner product of the data with one of the B-spline functions.




For example, to compute inner product <f(x),ψ


7


(x−j)>, the previously computed <f(x),B


4


(x−j)> match values are first FIR filtered with the filter coefficients ⅛(1, 4, 6, 4, 1), and then the resulting match values are multiplied by a normalization constant. This filtering step, in which a previously computed set of match values are filtered with the filter coefficients ⅛(1, 4, 6, 4, 1), is used to change the resolution level from the highest resolution to a next lower resolution level.




To compute <f(x),ψ


12


(x−j)>, the FIR filter (1,1,1,1,1) is applied to the previously computed inner product <f(x),ψ


7


(x−j)>. Note, however, that since x/2 (rather than x) is the variable for ψ


12


, the FIR filtering produces:












f
,

ψ
12




=






C
a



{







f
,


ψ
7



(

x
+
4

)





+



f
,


ψ
7



(

x
+
2

)





+









f
,


ψ
7



(
x
)





+



f
,


ψ
7



(

x
-
2

)





+



f
,


ψ
7



(

x
-
4

)









}






(
10
)













Note that although the FIR filter (1,1,1,1,1) is used, it is only applied to every second term in the convolution. In other words, the filter is applied to values at odd positions to generate a first value, then applied to values at a next set of even positions to generate a second value, and so on. Thus, from another viewpoint the FIR filter for ψ


12


is really (1,0,1,0,1,0,1,0,1). The reason for this is that ψ


7


(x) is a constant multiple of B


4


(x/2), and x/2 is used as the variable in the convolution.




The computation of the normalization constants C


a


is also simple. For example, for a=(1,1,1,1,1), as above,













C
a

=


{



N
8



(
4
)





j




a
j




N
8



(

4
-
j

)





}


1
/
2








=


{

2416

120
+
1191
+
2416
+
1191
+
120


}


1
/
2









(
11
)













As indicated above, the inner product of the video data with a lower resolution adaptive spline wavelets can be computed by simply FIR filtering the match data produced by forming the inner product of the video data with a corresponding higher resolution adaptive spline wavelet:






<


f,ψ




ResLevelZ




>=FIR




MRA


(<


f,ψ




ResLevelZ−1


>)






where FIR


MRA


is an FIR filter having coefficients of ⅛(1,4,6,4,1).




This property is important because it means that the amount of computation required to compute the convolutions of the data with a lower resolution adaptive spline wavelet is about the same as for computing the convolution with a higher resolution adaptive spline wavelet. Normally, the computation required to compute the convolutions of the data with a lower resolution waveform would be much higher (two to four times as high) as for a higher resolution waveform because the wider shape of the lower resolution waveform would require more multiplications of data values with filter coefficients.





FIG. 8

depicts the computational steps needed to convolve a set of data with each of the fourteen adaptive spline wavelets in the library. To make a realistic example, suppose that we are going to convolve a two dimensional set of data with a set of fourteen waveforms: all use the same adaptive spline wavelet for the y axis, which is combined with each of the fourteen adaptive spline wavelets for application to the x axis. To perform these fourteen two dimensional convolution computations, the following computations would be performed:




1) convolve data in y direction with y waveform to form f


1


;




2) convolve f


1


with ψ


0


(x) by FIR filtering f


1


along the x axis with coefficients of (−1, 0, 1);




3) convolve f


1


with ψ


1


(x) by FIR filtering f


1


along the x axis with coefficients of (1,1);




4) convolve f


1


with the fourth order B spine B


4


(x) to produce <f


1





2


(x)>, which we will call f


2


; save the f


2


array for future use;




5) convolve f


2


with ψ


3


(x) by FIR filtering f


2


along the x axis with coefficients for ψ


3


(shown in

FIG. 5

to be (−1,2,−1));




6) convolve f


2


with ψ


4


(x) by FIR filtering f


2


along the x axis with the FIR coefficients for ψ


4


.




7) convolve f


2


with ψ


5


(x) by FIR filtering f


2


along the x axis with the FIR coefficients for ψ


5


.




8) convolve f


2


with ψ


6


(x) by FIR filtering f


2


along the x axis with the FIR coefficients for ψ


6


.




9) convolve f


2


with the multi-resolution analysis FIR filter so as to reduce its resolution by a factor of 2, thereby producing an array herein called f


3


, which is also saved for future use;




10) convolve f


3


with ψ


8


(x) by FIR filtering f


3


along the x axis with the FIR coefficients for ψ


8


;




11) convolve f


3


with ψ


9


(x) by FIR filtering f


3


along the x axis with the FIR coefficients for ψ


9


;




12) convolve f


3


with ψ


10


(x) by FIR filtering f


3


along the x axis with the FIR coefficients for ψ


10


;




13) convolve f


3


with ψ


11


(x) by FIR filtering f


3


along the x axis with the FIR coefficients for ψ


11


;




14) convolve f


3


with ψ


12


(x) by FIR filtering f


3


along the x axis with the FIR coefficients for ψ


12


;




15) convolve f


3


with the multi-resolution analysis FIR filter so as to reduce its resolution by a factor of 2, thereby producing an array herein called f


4


.




In each of steps 2 through 14, above, the procedure identifies the position and value of the maximum value in the convolved data. The best fit of the fourteen two dimensional adaptive spline wavelets with the input data f is determined by determining which of the two dimensional adaptive spline wavelets produced the largest match value.




Procedure for Encoding One Residue Frame





FIG. 9

is a flow chart of the encoder procedure


134


for encoding a Residue frame. The procedure begins by receiving the array of data f to be encoded (step


200


), dividing the data array into 16×16 subarrays and computing the energy of each one of the 16×16 blocks (


202


). These block energy values are stored and later revised during operation of the encoder procedure.




Next, the procedure finds the best match between the residue frame data and a set of predefined two dimensional waveforms (steps


204


-


208


). In particular, the procedure selects the 16×16 block in f having the most energy (step


204


), and then calculates the convolution of that 16×16 block with all 196 of the predefined two dimensional adaptive spline wavelets in the library (step


206


) to produce a set of values represented as |<f,ψ


a,b


>|, where a identifies the two dimensional adaptive spline wavelet convolved with the data, and b identifies the position within the data corresponding to a particular match value.




The position and value of the largest match value generated using each adaptive spline wavelet is recorded, representing the best match of that adaptive spline wavelet with the 16×16 block of data. The adaptive spline wavelet with the maximum match value, after taking into account the normalization coefficient C


g


for each adaptive spline wavelet, identifies the adaptive spline wavelet that best matches the data in the selected 16×16 block (step


208


), and the position b of the largest value generated when convolving that adaptive spline wavelet with the 16×16 block identifies the position of the best fit of that adaptive spline wavelet to the 16×16 block of data.




Next, the match value for the best match identified in step


208


is quantized (step


210


). Match values are quantized to enable efficient encoding of those values. For instance, match values might be quantized by multiplying the match value by a quantization scaling factor and then generating the largest integer not exceeding that value.




The quantization process is then reversed by dividing the quantized value by the quantization scaling factor (step


212


) to generate a dequantized match value <f,ψ


a,b


>





.




Next, the data f being encoded is updated by subtracting from that data the best match adaptive spline wavelet multiplied by the dequantized match value:








f=f−<f,ψ




a,b


>





ψ


a,b








(step


214


). In addition, the block energy for all blocks modified by the updating of f are updated or recomputed. More than one 16×16 block may be affected if the selected adaptive spline wavelet is positioned near the boundary of a block.




Finally, a determination is made as to whether or not (A) the number of matches made so far has reached a maximum (budget) value, or (B) the dequantized match value is equal to zero (step


218


). If either of these conditions is true (


218


-Y) the encoder procedure calls a data packing procedure for storing the adaptive spline wavelet matches in a predefined data structure (step


220


). Otherwise, the procedure resumes at step


204


to find the next best match of an adaptive spline wavelet with the updated data f.




Encoding the Best Waveform Matches




Referring to

FIG. 10

, the compressed data representing a residue frame of video data is stored as a sequence of blocks


240


, each representing the set of waveform matches found in each 32×32 region of the residue. The blocks


240


are ordered in accordance with a raster scan ordering of the 32×32 regions in the residue frame. The compressed data also includes a value


242


representing the smallest quantized magnitude match of all the waveform matches found for the residue frame. This “minimum P” value is encoded using a predefined number of bits, such as eight.




Each block


240


, representing the data in a 32×32 region, begins with a flag


250


that indicates whether or not there is any data for this region. If not, the block


240


contains just the one flag value. Otherwise, the flag


250


is followed by a set of four data present flags


252


indicating if there is any data for each of the 16×16 subregions of the 32×32 region. For each 16×16 subregion whose flag indicates the presence of data, the data structure


240


includes a set of four data present flags


254


indicating whether there is any data for each of the 8×8 subregions of the 16×16 region. Thus, the number of sets of data present flags


254


is equal to the number of flags


252


having a value of True. The above described flags


250


,


252


,


254


provide “position code splitting” of the 32×32 region into 8×8 subregions.




Next, the data structure


250


contains one or more subblocks


260


, each of which represents the waveform matches found in a 8×8 subregion of the 32×32 region. The subblocks


260


are ordered in accordance with the 16×16 regions having data, and the 8×8 subregions having data. Thus, for each subblock


260


, the position of the subblock within the image array is defined by the subblock's order in the data structure


240


and the values of the data presence flags


252


,


254


.




Each subblock


260


has one or more vectors


264


, each of which represents a waveform match in the 8×8 subregion associated with that subblock. Each waveform match vector


264


corresponds to one of the maximum match values found in the step


208


(

FIG. 9

) of the compression procedure.




Next, the data structure of each waveform match vector


264


is described with respect to FIG.


11


. The x, y position of the waveform match is encoded as follows. The value of x+8*y is encoded, followed by a one bit “last flag” to indicate if this the last vector for the 8×8 subregion. If an 8×8 subblock has more than one waveform match vector, the vectors are sorted in accordance with the value of x+8*y, with the vectors having the smallest value of x+8*y going first. The x, y position for the first waveform match vector is encoded using six bits to represent a value between 0 and 63.




For each vector after the first one in an 8×8 subblock, “uniform distribution Huffman” coding is used to encode the x, y position. If Z represents the x+8*y value for the previous vector, then it is known that the x+8*y value (P) for the current position must be between Z and 63, inclusive. Equivalently, the value P−Z must be between 0 and 63−Z. To encode P−Z, first the value q is determined where q=└Log


2


(63−Z)┘ where the notation └y┘ indicates the largest integer not exceeding y. Then,




if








P−Zε[


0, 2


q+1


−(64


−Z


)−1], encode


P−Z


using q bits;






elseif








P−Zε[


2


q+1


−(64


−Z


), 63


−Z


], encode


P−Z


using


q


+1 bits.






This is known as uniform distribution Huffman coding. On average, uniform distribution Huffman coding reduces the number of bits used to encode a set of values to very be close to the sum of the logarithm, base 2, of the values being encoded.




The library index α,β representing the library waveform for any particular vector


264


is encoded along with the YUV flag. The reason for this is that residue data contains much more Y data than U and V data, and this fact can be used to reduce the amount of space used to encode the YUV flags. Also, the library indices α and β are each between 0 and 13 in the preferred embodiment, and uniform distribution Huffman coding can also be used to reduce the number of bits required to encode those values.




In the preferred embodiment, the α library index is encoded along with the YUV flag as follows:




A) if the YUV value is Y, the value output representing α and the YUV flag is the uniform distribution Huffman coding value for α;




B) if the YUV value is U, the value output representing α and the YUV flag is “1110” followed by the uniform distribution Huffman coding value for α;




C) if the YUV value is V, the value output representing α and the YUV flag is “1111” followed by the uniform distribution Huffman coding value for α.




The value output representing the β library index is the distribution Huffman coding value for β.




Finally, the magnitude of the match value |<f,ψ


a,b


>| is quantized using the quantizer


136


(FIG.


2


), and then encoded as follows. The minimum quantized magnitude P for the entire residue frame is herein called P*=Min |P


i


|, and the value of P* is output at the beginning of the compressed data representing the residue frame (see


242


, FIG.


10


). For each residue frame, a value #P* is determined such that






2


#P*




<P*≦


2


#P*+1


.






The magnitude of the match P


i


is the largest match value found during an iteration of the best match identification steps of the data compression procedure, taking into account the normalization factor C


g


* for each of the predefined adaptive spline wavelets. Thus the magnitude of the match P


i


has already been scaled by the normalization factor C


g


for the adaptive spline wavelet that best matched the data being encoded.




The magnitude of the match P


i


is encoded as differential value, which in turn is encoded as three values:








P







=(|


Pi|−P


*)/2


#P*


  1)








(|


Pi|−P


*) mod 2


#P*


  2)








sign(


P




i


)  3)






The second (modulo) value occupies #P* bits, which is known for the entire residue frame, and the third (sign) value occupies one bit. The first value (P





) is encoded in two pieces. First a value q


i







is determined such that






2


q






i






<P




i


≦2


q






i






+1


  (12)






q


i







is encoded using “count 1” encoding. For example, a value of 4 is represented as four 1's followed by a zero: 11110. Next, the value P





−2


q






i




is output using q


i







bits.




The waveform matches for each 32×32 region are encoded, processing the 32×32 regions in raster scan order (or any other predefined order). Within each 8×8 subregion having at least one waveform match, a vector is generator representing each such match using an efficient encoding scheme such as the one described above.




Data Decompression




Referring to

FIGS. 1 and 2

, the function of the data decompressor


135


is to regenerate a residue frame f





from a set of compressed residue data. To do this, the received data compressed data, stored in the data structure shown in

FIG. 10

, is converted into a sequence of uncompressed vectors of the general form shown in

FIG. 11

, but with each vector providing the full x, y position of the waveform match within the residue frame. The library indices α and β are also decoded and separated from the YUV flag, and the quantized magnitude value is dequantized using the dequantization procedure


142


(FIG.


2


).




Next, the decompressed vectors are used to generate a residue frame f





as follows:








f









=Σ<f,ψ




j,a


>





ψ


j,a


  (13)






where each of the <f,ψ>





values in equation 13 represents the dequantized magnitude value in one of the uncompressed vectors, j represents the pair of library indices the identify the adaptive spline wavelet identified by that vector, and a represents the x, y position at which the adaptive spline wavelet is to be added to the residue frame f





being reconstructed. Equation 13 may be applied separately for each of the Y, U and V planes of the residue frame.




Alternate Embodiments




The present invention can be implemented as a computer program product that includes a computer program mechanism embedded in a computer readable storage medium. For instance, the computer program product could contain the program modules shown in FIG.


2


. These program modules may be stored on a CDROM, magnetic disk storage product, or any other computer readable data or program storage product. The software modules in the computer program product may also be distributed electronically, via the Internet or otherwise, by transmission of a computer data signal (in which the software modules are embedded) on a carrier wave.




While the present invention has been described with reference to a few specific embodiments, the description is illustrative of the invention and is not to be construed as limiting the invention. Various modifications may occur to those skilled in the art without departing from the true spirit and scope of the invention as defined by the appended claims.



Claims
  • 1. A method of encoding a two dimensional array of data, comprising the steps of:accessing a library having entries corresponding to a set of predefined two dimensional adaptive spline wavelet waveforms, each predefined two dimensional adaptive spline wavelet waveforms being formed by the superposition of one or more B-splines; identifying a set of best matches between the array of data and the predefined two dimensional adaptive spline wavelet waveforms by generating the inner product of the array of data and each of the predefined two dimensional adaptive spline wavelet waveforms, each inner product being generated by FIR filtering the data with a corresponding set of FIR filter coefficients, and then determining which of the inner products have largest values; and generating data representing the identified set of best matches, the generated data indicating for each match: one of the library entries, a position within the array of data at which the match was found, and a magnitude of the match.
  • 2. The method of claim 1, wherein the inner product between the array of data and some of the predefined two dimensional adaptive spline wavelet waveforms are generated by FIR filtering another one of the inner products using FIR filter coefficients specified by the library.
  • 3. The method of claim 1, wherein the inner product between the array of data and a first one of the predefined two dimensional adaptive spline wavelet waveforms having a low resolution level is generated by FIR filtering the inner product of the array of data and a second one of the predefined two dimensional adaptive spline wavelet waveforms having a higher resolution level, using a predefined set of resolution modifying FIR filter coefficients.
  • 4. The method of claim 1, including:generating the array of data by encoding a sequence of video frames into a primary data frame and a plurality of residual data frames, the array of data comprising one of the residual frames.
  • 5. A computer program product for use in conjunction with a computer controlled system, the computer program product comprising a computer readable storage medium and a computer program mechanism embedded therein, the computer program mechanism comprising:a library having entries corresponding to a set of predefined two dimensional adaptive spline wavelet waveforms, each predefined two dimensional adaptive spline wavelet waveforms being formed by the superposition of one or more B-splines; instructions for identifying a set of best matches between the array of data and the predefined two dimensional adaptive spline wavelet waveforms, represented by the entries in the library, including instructions for generating the inner product of the array of data and each of the predefined two dimensional adaptive spline wavelet waveforms, each inner product being generated by FIR filtering the data with a corresponding set of FIR filter coefficients, and then determining which of the inner products have largest values; and instructions for generating data representing the identified set of best matches, the generated data indicating for each match: one of the library entries, a position within the array of data at which the match was found, and a magnitude of the match.
  • 6. The computer program product of claim 5, wherein the inner product between the array of data and some of the predefined two dimensional adaptive spline wavelet waveforms are generated by FIR filtering another one of the inner products using FIR filter coefficients specified by the library.
  • 7. The computer program product of claim 5, wherein the inner product between the array of data and a first one of the predefined two dimensional adaptive spline wavelet waveforms having a low resolution level is generated by FIR filtering the inner product of the array of data and a second one of the predefined two dimensional adaptive spline wavelet waveforms having a higher resolution level, using predefined set of resolution modifying FIR filter coefficients.
  • 8. The computer program product of claim 5, including instructions for generating the array of data by encoding a sequence of video frames into a primary data frame and a plurality of residual data frames, the array of data comprising one of the residual data frames.
  • 9. Image data processing apparatus, comprising:memory storing a library having entries corresponding to a set of predefined two dimensional adaptive spline wavelet waveforms, each predefined two dimensional adaptive spline wavelet waveforms being formed by the superposition of one or more B-splines: a processing unit for executing instructions in procedures; one or more image processing modules, stored in the memory and containing instructions executable by the processing unit, the one or more processing modules including: instructions for identifying a set of best matches between the array of data and the predefined two dimensional adaptive spline wavelet waveforms, represented by the entries in the library, including instructions for generating the inner product of the array of data and each of the predefined two dimensional adaptive spline wavelet waveforms, each inner product being generated by FIR filtering the data with a corresponding set of FIR filter coefficients, and then determining which of the inner products have largest values; and instructions for generating data representing the identified set of best matches, the generated data indicating for each match: one of the library entries, a position within the array of data at which the match was found, and a magnitude of the match.
  • 10. The image data processing apparatus of claim 9, wherein the instructions for generating the inner product of the array of data and some of the predefined two dimensional adaptive spline wavelet waveforms include instructions for FIR filtering another one of the inner products using FIR filter coefficients specified by the library.
  • 11. The image data processing apparatus of claim 9, wherein the instructions for generating the inner product between the array of data and a first one of the predefined two dimensional adaptive spline wavelet waveforms having a low resolution level includes instructions for FIR filtering the inner product of the array of data and a second one of the predefined two dimensional adaptive spline wavelet waveforms having a higher resolution level, using a predefined set of resolution modifying FIR filter coefficients.
  • 12. The image data processing apparatus of claim 9, including instructions for generating the array of data by encoding a sequence of video frames into a primary data frame and plurality of residual data frames, the array of data comprising one of the residual data frames.
Parent Case Info

The present invention is described in U.S. provisional patent application No. 60/047,371, filed Jun. 2, 1997, “Wavelet-based Adaptive Spline Modeling for Coding Motion-Compensated Residual Frames,” which is hereby incorporated by reference in its entirety.

PCT Information
Filing Document Filing Date Country Kind
PCT/US98/11231 WO 00
Publishing Document Publishing Date Country Kind
WO98/54907 12/3/1998 WO A
US Referenced Citations (6)
Number Name Date Kind
5262958 Chui et al. Nov 1993 A
5594853 Salesin et al. Jan 1997 A
5600373 Chui et al. Feb 1997 A
5875108 Hoffberg et al. Feb 1999 A
5987459 Swanson et al. Nov 1999 A
6272253 Bannon et al. Aug 2001 B1
Foreign Referenced Citations (1)
Number Date Country
PCTUS9811231 Oct 1998 WO
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Entry
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Provisional Applications (1)
Number Date Country
60/047371 Jun 1997 US