无线视觉传感器网络中降低通信能量的双级图像压缩方法选择

Khursheed Khursheed, Muhammad Imran, Naeem Ahmad, M. O’nils
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引用次数: 17

摘要

无线视觉传感器网络(WVSN)是集图像传感器、车载计算单元、通信组件和能量源于一体的新兴领域。与传统无线传感器网络处理一维数据(如温度、压力值等)相比,WVSN处理二维数据(图像),需要更高的处理能力和通信带宽。通常,wvns部署在无法安装有线解决方案的地区。由于应用程序的无线特性,这些网络中的能量预算仅限于电池。由于能量的有限性,视觉传感器节点(VSN)的处理和从VSN到服务器的通信需要消耗尽可能低的能量。原始图像的无线传输消耗大量的能量,需要更高的通信带宽。数据压缩方法可以有效地减少数据量,从而有效地降低WVSN的通信成本。在本文中,我们比较了六种常见的双级图像压缩方法的压缩效率和复杂度。研究的重点是确定能够有效压缩双级图像的压缩算法及其计算复杂度适合wvns所用的计算平台。这些结果可以作为WVSN中不同约束条件下压缩方法选择的路线图。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Selection of bi-level image compression method for reduction of communication energy in wireless visual sensor networks
Wireless Visual Sensor Network (WVSN) is an emerging field which combines image sensor, on board computation unit, communication component and energy source. Compared to the traditional wireless sensor network, which operates on one dimensional data, such as temperature, pressure values etc., WVSN operates on two dimensional data (images) which requires higher processing power and communication bandwidth. Normally, WVSNs are deployed in areas where installation of wired solutions is not feasible. The energy budget in these networks is limited to the batteries, because of the wireless nature of the application. Due to the limited availability of energy, the processing at Visual Sensor Nodes (VSN) and communication from VSN to server should consume as low energy as possible. Transmission of raw images wirelessly consumes a lot of energy and requires higher communication bandwidth. Data compression methods reduce data efficiently and hence will be effective in reducing communication cost in WVSN. In this paper, we have compared the compression efficiency and complexity of six well known bi-level image compression methods. The focus is to determine the compression algorithms which can efficiently compress bi-level images and their computational complexity is suitable for computational platform used in WVSNs. These results can be used as a road map for selection of compression methods for different sets of constraints in WVSN.
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