DocumentCode :
1511239
Title :
An efficient search strategy for block motion estimation using image features
Author :
Chan, Yui-Lam ; Siu, Wan-chi
Author_Institution :
Centre for Multimedia Signal Process., Hong Kong Polytech., Kowloon, China
Volume :
10
Issue :
8
fYear :
2001
fDate :
8/1/2001 12:00:00 AM
Firstpage :
1223
Lastpage :
1238
Abstract :
Block motion estimation using the exhaustive full search is computationally intensive. Fast search algorithms offered in the past tend to reduce the amount of computation by limiting the number of locations to be searched. Nearly all of these algorithms rely on this assumption: the mean absolute difference (MAD) distortion function increases monotonically as the search location moves away from the global minimum. Essentially, this assumption requires that the MAD error surface be unimodal over the search window. Unfortunately, this is usually not true in real-world video signals. However, we can reasonably assume that it is monotonic in a small neighborhood around the global minimum. Consequently, one simple strategy, but perhaps the most efficient and reliable, is to place the checking point as close as possible to the global minimum. In this paper, some image features are suggested to locate the initial search points. Such a guided scheme is based on the location of certain feature points. After applying a feature detecting process to each frame to extract a set of feature points as matching primitives, we have extensively studied the statistical behavior of these matching primitives, and found that they are highly correlated with the MAD error surface of real-world motion vectors. These correlation characteristics are extremely useful for fast search algorithms. The results are robust and the implementation could be very efficient. A beautiful point of our approach is that the proposed search algorithm can work together with other block motion estimation algorithms. Results of our experiment on applying the present approach to the block-based gradient descent search algorithm (BBGDS), the diamond search algorithm (DS) and our previously proposed edge-oriented block motion estimation show that the proposed search strategy is able to strengthen these searching algorithms. As compared to the conventional approach, the new algorithm, through the extraction of image features, is more robust, produces smaller motion compensation errors, and has a simple computational complexity
Keywords :
computational complexity; correlation methods; feature extraction; gradient methods; image matching; motion compensation; motion estimation; search problems; video signal processing; MAD distortion function; MAD error surface; block motion estimation; block-based gradient descent search algorithm; computational complexity; correlation characteristics; diamond search algorithm; edge-oriented block motion estimation; efficient search strategy; exhaustive full search; fast search algorithms; feature detection; global minimum; image features extraction; matching primitives; mean absolute difference; motion compensation errors; real-world motion vectors; real-world video signals; search window; statistical behavior; unimodal MAD error surface; Computational complexity; Computer vision; Data mining; Feature extraction; Motion compensation; Motion detection; Motion estimation; Redundancy; Robustness; Signal processing algorithms;
fLanguage :
English
Journal_Title :
Image Processing, IEEE Transactions on
Publisher :
ieee
ISSN :
1057-7149
Type :
jour
DOI :
10.1109/83.935038
Filename :
935038
Link To Document :
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