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Indoor device-free passive localization with DCNN for location-based services

机译:使用DCNN免费无源本地化,用于基于位置的服务

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摘要

With the increasing demand of indoor location-based services, such as tracking targets in a smart building, device-free localization technique has attracted great attentions because it can locate the targets without employing any attached devices. Due to the limited space and complexity of the indoor environment, there still exist challenges in terms of high localization accuracy and high efficiency for indoor localization. In this paper, for addressing such issues, we first convert the received signal strength (RSS) signals into image pixels. The localization problem is then formulated as an image classification problem. To well handle the variant RSS images, a deep convolutional neural network is then structured for classification. Finally, for validating the proposed scheme, two real testbeds are built in the indoor environments, including a living room and a corridor of an apartment. Experimental results show that the proposed scheme achieves good localization performance. For example, the localization accuracy can reach up to 100% in the scenario of living room and 97.6% in the corridor. Moreover, the proposed approach outperforms the methods of the K-nearest-neighbor and the support vector machines in both the noiseless and noisy environments.
机译:随着基于室内位置的需求的越来越大,例如智能建筑的跟踪目标,无设备的本地化技术引起了巨大的关注,因为它可以在不采用任何附加设备的情况下定位目标。由于室内环境的空间和复杂性有限,仍然在高位定位准确性和室内定位效率方面存在挑战。在本文中,为了解决这些问题,首先将接收的信号强度(RSS)信号转换为图像像素。然后将定位问题配制成图像分类问题。为了妥善处理变量RSS图像,然后构建深度卷积神经网络以进行分类。最后,为了验证拟议的计划,在室内环境中建造了两个真正的测试床,包括客厅和公寓的走廊。实验结果表明,该方案达到了良好的本地化性能。例如,在客厅的场景中,本地化精度可以达到100%,走廊中的97.6%。此外,所提出的方法优于无噪声和嘈杂的环境中的K到最近邻居和支持向量机的方法。

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