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A Spatial Correlation-Based Image Compression Framework for Wireless Multimedia Sensor Networks

机译:基于空间相关性的无线多媒体传感器网络图像压缩框架

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Data redundancy caused by correlation has motivated the application of collaborative multimedia in-network processing for data filtering and compression in wireless multimedia sensor networks (WMSNs). This paper proposes an information theoretic image compression framework with an objective to maximize the overall compression of the visual information gathered in a WMSN. The novelty of this framework relies on its independence of specific image types and coding algorithms, thereby providing a generic mechanism for image compression under different coding solutions. The proposed framework consists of two components. First, an entropy-based divergence measure (EDM) scheme is proposed to predict the compression efficiency of performing joint coding on the images collected by spatially correlated cameras. The EDM only takes camera settings as inputs without requiring statistics of real images. Utilizing the predicted results from EDM, a distributed multi-cluster coding protocol (DMCP) is then proposed to construct a compression-oriented coding hierarchy. The DMCP aims to partition the entire network into a set of coding clusters such that the global coding gain is maximized. Moreover, in order to enhance decoding reliability at data sink, the DMCP also guarantees that each sensor camera is covered by at least two different coding clusters. Experiments on H.264 standards show that the proposed EDM can effectively predict the joint coding efficiency from multiple sources. Further simulations demonstrate that the proposed compression framework can reduce 10%–23% total coding rate compared with the individual coding scheme, i.e., each camera sensor compresses its own image independently.
机译:由相关性引起的数据冗余已经促使协作式多媒体网络内处理在无线多媒体传感器网络(WMSN)中进行数据过滤和压缩。本文提出了一种信息理论图像压缩框架,其目的是最大化WMSN中收集的视觉信息的整体压缩。该框架的新颖性取决于特定图像类型和编码算法的独立性,从而为在不同编码解决方案下进行图像压缩提供了一种通用机制。拟议的框架包括两个部分。首先,提出了一种基于熵的散度度量(EDM)方案,以预测对空间相关相机收集的图像执行联合编码的压缩效率。 EDM仅将相机设置作为输入,而无需统计真实图像。利用来自EDM的预测结果,然后提出了分布式多集群编码协议(DMCP)来构建面向压缩的编码层次结构。 DMCP旨在将整个网络划分为一组编码集群,以使全局编码增益最大化。此外,为了增强数据接收器的解码可靠性,DMCP还保证每个传感器摄像机至少被两个不同的编码簇覆盖。 H.264标准的实验表明,所提出的EDM可以有效地预测多种来源的联合编码效率。进一步的仿真表明,与单独的编码方案相比,提出的压缩框架可以降低10%–23%的总编码率,即每个相机传感器独立地压缩自己的图像。

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