A novel distributed compressive video sensing based on hybrid sparse basis

Haifeng Dong, Bojin Zhuang, Fei Su, Zhicheng Zhao
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引用次数: 6

Abstract

Distributed compressive video sensing (DCVS) is a new emerging video codec that incorporates advantages of distributed video coding (DVC) and compressive sensing (CS). However, due to the absence of a good sparse basis, the DCVS does not achieve ideal compressing efficiency compared with the traditional video codec, such as MPEG-4, H.264, etc. This paper proposes a new hybrid sparse basis, which combines the image-block prediction and DCT basis. Adaptive block-based prediction is employed to learn block-prediction basis by exploiting temporal correlation among successive frames. Based on linear DCT basis and predicted basis, the hybrid sparse basis can achieve sparser representation with lower complexity. The experiment results indicate that the proposal outperforms the state-of-the-art DCVS schemes on both visual quality and average PSNR. In addition, an iterative fashion proposed in the decoder can enhance the sparsity of the hybrid sparse basis and improve the rate-distortion performance significantly.
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一种基于混合稀疏基的分布式压缩视频感知方法
分布式压缩视频感知(DCVS)是一种融合了分布式视频编码(DVC)和压缩感知(CS)优点的新型视频编解码器。然而,由于缺乏良好的稀疏基,与传统的视频编解码器如MPEG-4、H.264等相比,DCVS的压缩效率并不理想。本文提出了一种新的混合稀疏基,将图像块预测与DCT基相结合。采用自适应分块预测,利用连续帧之间的时间相关性学习分块预测基础。混合稀疏基在线性DCT基和预测基的基础上,以较低的复杂度实现更稀疏的表示。实验结果表明,该方案在视觉质量和平均PSNR方面都优于目前最先进的DCVS方案。此外,在解码器中提出了一种迭代方式,可以增强混合稀疏基的稀疏性,显著提高码率失真性能。
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