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首页> 外文期刊>American journal of applied sciences >Performance Analysis of Threshold Based Compressive Sensing Algorithm in Wireless Sensor Network
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Performance Analysis of Threshold Based Compressive Sensing Algorithm in Wireless Sensor Network

机译:无线传感器网络中基于阈值的压缩感知算法性能分析

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摘要

Wireless Sensor Networks (WSN) are comprised of spatially distributed sensor nodes, where each node contains sensors, processors and transceivers for communicating data. Regardless of the application in which the sensor network is serving, the data generated in the network eventually must be delivered to the sink. However the limited network bandwidth, frequent node/link failure along with the unreliable communication medium poses great challenges for node to node communication in WSN. Hence, energy efficient data compression algorithms are necessary for sensor nodes as they enhance the transmission efficiency in WSN. Compressive sensing is a new compression algorithm in which the input signal is converted into sparse signal and the sparse signal is further converted into a signal of reduded dimension than original signal. The dimensionality reduction improves the transmission efficiency. This new concept is recently applied in WSN, however suitable threshold selection to sparsify the one dimensional sensor reading and suitable sparifying basis for image input data are not considered in literature. Hence, in this paper analysis of compressive sensing algorithm with a suitable threshold selection is performed in order to increase the level of sparsity for one dimensional data and a suitable sparsifying basis selection is performed for image data. Results indicate that compressive sensing with suitable threshold selection improves transmission and bandwidth efficiency in case of low correlated one dimensional sensor data and a suitable basis improves the quality of transmission for image sensor data and hence the overall lifetime of sensor network can be increased.
机译:无线传感器网络(WSN)由空间分布的传感器节点组成,其中每个节点都包含用于通信数据的传感器,处理器和收发器。无论传感器网络服务于哪个应用程序,网络中生成的数据最终都必须传递到接收器。然而,有限的网络带宽,频繁的节点/链路故障以及不可靠的通信介质给WSN中的节点到节点通信带来了很大的挑战。因此,传感器节点必须使用高效节能的数据压缩算法,因为它们提高了WSN中的传输效率。压缩感测是一种新的压缩算法,其中输入信号被转换为稀疏信号,并且稀疏信号被进一步转换为比原始信号具有降维的信号。降维提高了传输效率。该新概念最近在WSN中得到了应用,但是在文献中没有考虑适当的阈值选择以稀疏一维传感器读数以及适当的图像输入数据的分类基础。因此,在本文中,对具有适当阈值选择的压缩感测算法进行分析,以增加一维数据的稀疏度,并对图像数据进行适当的稀疏化基础选择。结果表明,在低相关一维传感器数据的情况下,具有适当阈值选择的压缩感测可改善传输和带宽效率,并且适当的基础可改善图像传感器数据的传输质量,因此可以增加传感器网络的整体寿命。

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