采用平滑投影Landweber重构的分布式自适应压缩视频感知(英文) |
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作者姓名: | 李然 干宗良 崔子冠 武明虎 朱秀昌 |
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作者单位: | Jiangsu Key Laboratory of Image Processing and Image Communication, Nanjing University of Posts and Telecommunications |
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基金项目: | supported by the Graduate Student Research Innovation Project of Jiangsu Province China under Grants No. CXZZ12_0466, No. CXZZ11_0390;the National Natural Science Foundation of China under Grants No. 61071091, No. 61271240;the Natural Science Foundation of the Higher Education Institutions of Jiangsu Province China under Grant No. 12KJB510019;the Nanjing University of Posts and Telecommunications Natural Science Foundation under Grant No. NY212015;the Technology Research Program of Hubei Provincial Department of Education under Grant No. D20121408 |
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摘 要: | A novel Compressed-Sensing-based(CS-based)Distributed Video Coding(DVC)system,called Distributed Adaptive Compressed Video Sensing(DISACOS),is proposed in this paper.In this system,the input frames are divided into key frames and non-key frames,which are encoded by block CS sampling.The key frames are encoded as CS measurements at substantially higher rates than the non-key frames and decoded by the Smoothed Projected Landweber(SPL)algorithm using multi-hypothesis predictions.For the non-key frames,a small number of CS measurements are first transmitted to detect blocks having low-quality Side Information(SI)generated by the conventional interpolation or extrapolation at the decoder;then,another group of CS measurements are sampled again upon the decoder’s request.To fully utilise the CS measurements,we adaptively allocate these measurements to each block in terms of different edge features.Finally,the residual frame is reconstructed using the SPL algorithm and the decoded non-key frame is simply determined as the sum of the residual frame and the SI.Experimental results have revealed that our CS-based DVC system yields better rate-distortion performance when compared with other schemes.
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关 键 词: | distributed video coding compressed sensing side information smoothed projected Landweber reconstruction edge information |
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