论文标题
无线传感器网络中孔检测的图像分类方法
An image classification approach for hole detection in wireless sensor networks
论文作者
论文摘要
孔检测是监视无线传感器网络(WSN)状态的至关重要任务,该任务通常由低功能传感器组成。由于放置传感器或功率/硬件故障时的问题,因此可以在WSN中形成孔。在这些情况下,传感或传输数据可能会受到影响,并可能中断WSN的正常操作。它还可以降低网络的寿命和传感器的传感覆盖范围。在WSN中,孔检测的问题尤其具有挑战性,因为传感器的确切位置通常未知。在本文中,我们提出了一种称为FD-CNN的新型孔检测方法,该方法基于实力指导(FD)算法和卷积神经网络(CNN)。与现有方法相反,FD-CNN是一种集中式方法,能够检测WSN的孔,而无需依赖与传感器位置相关的信息。提出的方法还减轻了分布式方法中高计算复杂性的问题。所提出的方法接受WSN的网络拓扑作为输入,并生成围绕网络中每个检测到的孔作为最终输出的节点的标识。在建议的方法中,使用FD算法来生成无线传感器网络的布局,然后使用训练有素的CNN模型在布局中识别孔。为了准备用于培训CNN模型的标签数据集,本文还提出了一种无监督的预处理方法。通过CNN模型检测到孔后,提出了两种算法来识别孔的区域和周围区域周围的相应节点。进行了广泛的实验,以根据不同的数据集评估所提出的方法。实验结果表明,FD-CNN可以在不到2分钟的时间内实现80%的灵敏度和93%的特异性。
Hole detection is a crucial task for monitoring the status of wireless sensor networks (WSN) which often consist of low-capability sensors. Holes can form in WSNs due to the problems during placement of the sensors or power/hardware failure. In these situations, sensing or transmitting data could be affected and can interrupt the normal operation of the WSNs. It may also decrease the lifetime of the network and sensing coverage of the sensors. The problem of hole detection is especially challenging in WSNs since the exact location of the sensors is often unknown. In this paper, we propose a novel hole detection approach called FD-CNN which is based on Force-directed (FD) Algorithm and Convolutional Neural Network (CNN). In contrast to existing approaches, FD-CNN is a centralized approach and is able to detect holes from WSNs without relying on the information related to the location of the sensors. The proposed approach also alleviates the problem of high computational complexity in distributed approaches. The proposed approach accepts the network topology of a WSN as an input and generates the identity of the nodes surrounding each detected hole in the network as the final output. In the proposed approach, an FD algorithm is used to generate the layout of the wireless sensor networks followed by the identification of the holes in the layouts using a trained CNN model. In order to prepare labeled datasets for training the CNN model, an unsupervised pre-processing method is also proposed in this paper. After the holes are detected by the CNN model, two algorithms are proposed to identify the regions of the holes and corresponding nodes surrounding the regions. Extensive experiments are conducted to evaluate the proposed approach based on different datasets. Experimental results show that FD-CNN can achieve 80% sensitivity and 93% specificity in less than 2 minutes.