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Compressive Video Recovery Using Block Match Multi-Frame Motion Estimation Based on Single Pixel Cameras

机译:基于单像素摄像机的块匹配多帧运动估计压缩视频恢复

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Compressive sensing (CS) theory has opened up new paths for the development of signal processing applications. Based on this theory, a novel single pixel camera architecture has been introduced to overcome the current limitations and challenges of traditional focal plane arrays. However, video quality based on this method is limited by existing acquisition and recovery methods, and the method also suffers from being time-consuming. In this paper, a multi-frame motion estimation algorithm is proposed in CS video to enhance the video quality. The proposed algorithm uses multiple frames to implement motion estimation. Experimental results show that using multi-frame motion estimation can improve the quality of recovered videos. To further reduce the motion estimation time, a block match algorithm is used to process motion estimation. Experiments demonstrate that using the block match algorithm can reduce motion estimation time by 30%.
机译:压缩感测(CS)理论为信号处理应用程序的开发开辟了新的途径。基于该理论,已经提出了一种新颖的单像素相机架构,以克服传统焦平面阵列的当前局限性和挑战。然而,基于该方法的视频质量受到现有的获取和恢复方法的限制,并且该方法还耗时。为了提高视频质量,本文提出了一种针对CS视频的多帧运动估计算法。所提出的算法使用多个帧来实现运动估计。实验结果表明,使用多帧运动估计可以提高恢复视频的质量。为了进一步减少运动估计时间,使用块匹配算法来处理运动估计。实验表明,使用块匹配算法可以将运动估计时间减少30%。

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