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A Continuous Object Boundary Detection and Tracking Scheme for Failure-Prone Sensor Networks

机译:失误传感器网络的连续目标边界检测与跟踪方案

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摘要

In wireless sensor networks, detection and tracking of continuous natured objects is more challenging owing to their unique characteristics such as uneven expansion and contraction. A continuous object is usually spread over a large area, and, therefore, a substantial number of sensor nodes are needed to detect the object. Nodes communicate with each other as well as with the sink to exchange control messages and report their detection status. The sink performs computations on the received data to estimate the object boundary. For accurate boundary estimation, nodes at the phenomenon boundary need to be carefully selected. Failure of one or multiple boundary nodes (BNs) can significantly affect the object detection and boundary estimation accuracy at the sink. We develop an efficient failure-prone object detection approach that not only detects and recovers from BN failures but also reduces the number and size of transmissions without compromising the boundary estimation accuracy. The proposed approach utilizes the spatial and temporal features of sensor nodes to detect object BNs. A Voronoi diagram-based network clustering, and failure detection and recovery scheme is used to increase boundary estimation accuracy. Simulation results show the significance of our approach in terms of energy efficiency, communication overhead, and boundary accuracy.
机译:在无线传感器网络中,由于连续性物体的独特特征(例如不均匀的膨胀和收缩),对连续性物体的检测和跟踪更具挑战性。连续的对象通常散布在较大的区域上,因此,需要大量的传感器节点来检测对象。节点彼此之间以及与宿之间进行通信以交换控制消息并报告其检测状态。接收器对接收到的数据执行计算以估计对象边界。为了进行准确的边界估计,需要仔细选择现象边界处的节点。一个或多个边界节点(BN)的故障会严重影响接收器处的对象检测和边界估计精度。我们开发了一种有效的容易发生故障的对象检测方法,该方法不仅可以检测BN故障并从中恢复,而且可以在不影响边界估计精度的情况下减少传输的数量和大小。所提出的方法利用传感器节点的空间和时间特征来检测对象BN。基于Voronoi图的网络聚类以及故障检测和恢复方案可用于提高边界估计的准确性。仿真结果显示了我们的方法在能效,通信开销和边界精度方面的重要性。

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