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首页> 外文期刊>International Journal of Distributed Sensor Networks >Adaptive Multihypothesis Prediction Algorithm for Distributed Compressive Video Sensing
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Adaptive Multihypothesis Prediction Algorithm for Distributed Compressive Video Sensing

机译:分布式压缩视频传感的自适应多假设预测算法

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A novel adaptive multihypothesis (MH) prediction algorithm for distributed compressive video sensing (DCVS) is proposed in this paper. In the proposed framework, consistent block-based random measurement for each video frame is adopted at the encoder independently. Meanwhile, a mode decision algorithm is applied in CS-blocks via block-based correlation measurements at the decoder. The inter-frame MH mode is selected for the current block wherein the interframe correlation coefficient value exceeds a predetermined threshold. Otherwise, the intraframe MH mode is worthwhile to be selected. Moreover, the adaptive search window and cross-diamond search algorithms on measurement domain are also incorporated to form the dictionary for MH prediction. Both the temporal and spatial correlations in video signals are exploited to enhance CS recovery to satisfy the best linear combination of hypotheses. The simulation results show that the proposed framework can provide better reconstruction quality than the framework using original MH prediction algorithm, and for sequences with slow motion and relatively simple scene composition, the proposed method shows significant performance gains at low measurement subrate.
机译:提出了一种新的分布式压缩视频感知(DCVS)自适应多假设(MH)预测算法。在所提出的框架中,在编码器处独立地针对每个视频帧采用基于块的一致的随机测量。同时,在解码器处通过基于块的相关性测量将模式判定算法应用于CS块。为当前块选择帧间MH模式,其中帧间相关系数值超过预定阈值。否则,帧内MH模式是值得选择的。此外,还结合了测量域上的自适应搜索窗口和跨钻石搜索算法,以形成用于MH预测的字典。利用视频信号中的时间和空间相关性来增强CS恢复,以满足假设的最佳线性组合。仿真结果表明,与采用原始MH预测算法的框架相比,该框架可提供更好的重建质量,对于运动较慢且场景组成相对简单的序列,该方法在低测量子速率下表现出明显的性能提升。

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