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Low-overhead video compression combining partial discrete cosine transform and compressed sensing in WMSNs

机译:WMSN中结合部分离散余弦变换和压缩感知的低开销视频压缩

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摘要

Wireless multimedia sensor network (WMSN) is a special wireless sensor network (WSN) made up of several multimedia sensor nodes, specially designed to retrieve multimedia content such as video and audio streams, still images, and scalar sensor data from the environment. Due to strict inherent limitations in terms of processing power, storage and bandwidth, data processing is a challenge in such network. Further, energy is one of the scarcest resources in WSN, especially in WMSN and therefore, saving energy is of utmost importance. Data compression is one of the solutions of such a problem. This paper proposes an energy saving video compression technique for WMSN by judicious combination of partial discrete cosine transform and compressed sensing. This amalgamation exploits the benefits of both the techniques towards fulfilling the objective of saving energy along with achieving desired peak signal to noise ratio (PSNR). When the transform technique ensures low-overhead compression, compressed sensing guarantees the reconstruction of the same video with lesser amount of measurements. Performance of the scheme is measured both qualitatively and quantitatively. In qualitative analysis, overhead of the scheme is measured in terms of storage, computation, and communication overheads and the results are compared with a number of existing schemes including the base scheme. The results show considerable reduction of all such overheads thereby justifying the appropriateness of the proposed scheme for resource-constrained networks like WMSNs. In quantitative analysis, for both ideal and packet loss environment, the scheme is simulated in Cooja, the Contiki network simulator to make it readily implementable in real life mote e.g. MICAz. When compared with the existing state-of-the-art schemes, it performs better not only in terms of 34.31% energy saving but also in getting an acceptable PSNR of 35-37 dB and SSIM of 0.85-0.88 in ideal environment. In packet loss environment, these values are 32.9-35.5 dB and 0.81-0.85 respectively implying acceptable reconstruction even in packet loss environment. Further, it requires the least storage of 51.2 KB. The observation on simulation results is also justified by statistical analysis.
机译:无线多媒体传感器网络(WMSN)是由多个多媒体传感器节点组成的特殊无线传感器网络(WSN),专门设计用于从环境中检索多媒体内容,例如视频和音频流,静态图像和标量传感器数据。由于在处理能力,存储和带宽方面的严格的固有限制,因此在这种网络中数据处理是一个挑战。此外,能源是WSN(尤其是WMSN)中最稀缺的资源之一,因此,节约能源至关重要。数据压缩是解决此问题的方法之一。通过部分离散余弦变换和压缩感知的明智结合,提出了一种WMSN节能视频压缩技术。这种合并利用了这两种技术的优势,既可以实现节能的目的,又可以实现所需的峰值信噪比(PSNR)。当变换技术确保低开销压缩时,压缩感测可确保以更少的测量量重建同一视频。该计划的绩效是定性和定量的。在定性分析中,从存储,计算和通信开销方面衡量了该方案的开销,并将结果与​​包括基础方案在内的许多现有方案进行了比较。结果表明,所有这些开销都大大减少了,从而证明了所提出的方案适用于资源受限网络(如WMSN)的适当性。在定量分析中,对于理想和丢包环境,该方案都在Contiki网络模拟器Cooja中进行了仿真,以使其易于在现实生活中实现,例如MICAz。与现有的最新方案相比,它不仅在节能34.31%方面表现更好,而且在理想的环境中,可以获得35-37 dB的可接受PSNR和0.85-0.88的SSIM。在丢包环境中,这些值分别为32.9-35.5 dB和0.81-0.85,即使在丢包环境中也意味着可接受的重构。此外,它需要最少的51.2 KB存储空间。对模拟结果的观察也可以通过统计分析来证明。

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