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Contour image sequence compression through motion analysis and hybrid coding method
Authors:Chung-Lin Huang
Affiliation:(1) Institute of Electrical Engineering, National Tsing-Hua University, Hsin-Chu, Taiwan, ROC
Abstract:This paper presents a motion analysis algorithm (MAA) and a hybrid coding method for contour image sequence compression. The contour image sequence consists of objects moving and rotating in a 3-D world with occlusion, shape, and size variations from frame to frame. The MAA separates the moving image sequence into several object-oriented subsequences (OOSs). In each OOS, the component is either stationary or moves smoothly, and the motion parameters can be easily estimated. The first and last frames of OOS are key frames, and the others are in-between frames. The key frames are unpredictable, and the entire frames need to be encoded. The in-between frames are compensable, and they are encoded by the motion parameter coding. The hybrid coder uses vectorgraph coding to remove spatial redundancy of the key frames and motion parameter coding to reduce the temporal redundancy of the OOSs. The motion parameters are encoded as combinations of 2-D translation, 2-D rotation, and scaling. There are many applications for contour image sequence compression. The cartoon image sequence (a sequence of line drawing sketches) and the high-frame-rate videophone for sign language transmission are good examples. Experiments show that our method encodes the contour image sequence at a very high compression ratio without losing intelligibility.
Keywords:contour image sequence  motion analysis algorithm (MAA)  correspondence finding  vectorgraph coding  object-oriented image subsequence (OOS)  object-oriented motion parameter estimation  hybrid coding
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