无线传感器网络的高能效视频压缩

J. Ahmad, Hassan Khan, S. A. Khayam
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引用次数: 66

摘要

预计将部署无线视频传感器网络来监测偏远的地理区域。为了在视频传感器网络上传输/接收比特时节省能量,捕获的视频内容需要在传输到基站之前进行编码。然而,视频编码本质上是一个复杂的操作,可能会导致电池有限的传感器的主要能量消耗。因此,需要对不同的视频编码选项进行系统评估,以允许设计人员为给定的视频传感应用场景选择最节能的压缩技术。在本文中,我们经验地评估了预测和分布式视频编码范式的能源效率,以部署在现实生活中的传感器节点上。对于预测视频编码,我们的研究结果表明,尽管具有更高的压缩效率,但视频间编码总是比视频内编码消耗更多的能量。因此,我们建议使用基于图像压缩的帧内编码来提高预测视频编码范式的能效。对于分布式视频编码,我们的结果表明Wyner-Ziv编码器始终比PRISM编码器具有更好的能源效率。我们建议对PRISM和Wyner-Ziv编码器进行微小的修改,以显着降低这些编码器的能耗。对于本文评估的所有视频编码配置,我们的结果揭示了一个反直觉的重要发现,即wsn中能量消耗的主要来源是为视频压缩而非视频传输进行的局部计算。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Energy efficient video compression for wireless sensor networks
Wireless video sensor networks are anticipated to be deployed to monitor remote geographical areas. To save energy in bit transmissions/receptions over a video sensor network, the captured video content needs to be encoded before its transmission to the base station. However, video encoding is an inherently complex operation that can cause a major energy drain at battery-constrained sensors. Thus a systematic evaluation of different video encoding options is required to allow a designer to choose the most energy-efficient compression technique for a given video sensing application scenario. In this paper, we empirically evaluate the energy efficiencies of predictive and distributed video coding paradigms for deployment on real-life sensor motes. For predictive video coding, our results show that despite its higher compression efficiency, inter video coding always depletes much more energy than intra coding. Therefore, we propose to use image compression based intra coding to improve energy efficiency in the predictive video coding paradigm. For distributed video coding, our results show that the Wyner-Ziv encoder has consistently better energy efficiency than the PRISM encoder. We propose minor modifications to PRISM and Wyner-Ziv encoders which significantly reduce the energy consumption of these encoders. For all the video encoding configurations evaluated in this paper, our results reveal the counter-intuitive and important finding that the major source of energy drain in WSNs is local computations performed for video compression and not video transmission.
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