Spatiotemporal compressed sensing for video compression

2017 IEEE 60th International Midwest Symposium on Circuits and Systems (MWSCAS)(2017)

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摘要
We present a hardware-friendly spatiotemporal compressed sensing framework for video compression. The spatiotemporal compressed sensing incorporates random sampling in both spatial and temporal domain to encode the video scene into a single coded image. During decoding, the video is reconstructed using dictionary learning and sparse recovery. The evaluation results demonstrate the proposed approach can achieve high compression rate (10 : 1-30 : 1) and robustness reconstruction quality (> 20dB) on noisy database. Additionally, it also enables power efficient and real-time CMOS implementation (0.7 nJ/pixel).
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关键词
hardware-friendly spatiotemporal compressed sensing framework,video compression,video scene,high compression rate,random sampling,single coded image,decoding,video reconstruction,dictionary learning,sparse recovery,real-time CMOS implementation,robustness reconstruction quality
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