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首页> 外文期刊>Mathematical Problems in Engineering: Theory, Methods and Applications >Distributed Compressive Video Sensing with Mixed Multihypothesis Prediction
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Distributed Compressive Video Sensing with Mixed Multihypothesis Prediction

机译:分布式压缩视频感测与混合多膜缺陷预测

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Traditional video acquisition systems require complex data compression at the encoder, which makes them unacceptable for resource-limited applications such as wireless multimedia sensor networks (WMSNs). To address this problem, distributed compressive video sensing (DCVS) represents a novel sensing approach with a simple encoder. This method shifts the computational burden from the encoder to the decoder and needs a robust reconstruction algorithm. In this paper, a mixed measurement-based multihypothesis (MH) reconstruction algorithm (mixed-MH) is proposed for DCVS to improve the reconstruction quality at low sampling rates. Considering the inaccuracy of MH prediction when measurements are insufficient, the available side information (SI) is resampled to obtain the artificial measurements, which are then integrated into real measurements via regularization. Furthermore, to avoid the negative effect of SI at high sampling rates, an adaptive regularization parameter is designed to balance the contributions of real and artificial measurements at different sampling rates. The experimental results demonstrate that the proposed mixed-MH prediction scheme outperforms other state-of-the-art algorithms in the reconstruction quality at the same low sampling rate.
机译:传统的视频采集系统需要在编码器处需要复杂的数据压缩,这使得它们对于无线多媒体传感器网络(WMSN)等资源限制应用程序不可接受。为了解决这个问题,分布式压缩视频感测(DCV)表示具有简单编码器的新型感应方法。该方法将编码器的计算负担从编码器转移到解码器,并需要一种坚固的重建算法。本文提出了一种基于混合测量的多概念(MH)重建算法(MH),用于DCV,以提高低采样速率的重建质量。考虑到MH预测的不准确性在测量不足时,重新采样可用侧信息(SI)以获得人工测量,然后通过正则化将其集成到真实测量中。此外,为了避免SI在高采样率下的负面影响,自适应正则化参数旨在平衡不同采样率的实际和人工测量的贡献。实验结果表明,所提出的混合MH预测方案以相同的低采样率在重建质量方面优于其他最先进的算法。

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