基于日志正则化器的稀疏编码的无设备定位

Zhaoyang Han, Chunhua Su, Shuxue Ding, Huakun Huang, Lingjun Zhao
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引用次数: 3

摘要

无设备定位(device-free localization, DFL)作为一种新兴技术,利用无线传感器网络对不需要携带任何附加设备的目标进行检测,在入侵检测、安全防护跟踪等方面有着广泛的应用。以往的许多研究都将DFL定义为一个分类问题,但在准确性、鲁棒性等方面仍然存在一些挑战。在本文中,我们在分类目标函数中开发了一种新的对数正则化器。利用对数正则化器测量稀疏度的独特能力,该方法可以在具有挑战性的环境中实现精确的定位过程,并具有鲁棒性。即使输入数据受到严重的噪声污染,信噪比为−10 dB,我们的算法仍然可以保持99.4%的高准确率,优于其他五种机器学习算法,如深度自编码器、卷积神经网络等。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Device-Free Localization via Sparse Coding with Log-Regularizer
As an emerging technology, device-free localization (DFL), using wireless sensor network to detect targets who do not need carry any attached devices, has spawned extensive applications, e.g., intrusion detection or tracking in security safeguards. Many previous studies formulate DFL as a classification problem, but there are still several challenges in terms of accuracy, robustness, etc. In this paper, we exploit a new log-regularizer in the objective function for classification. With taking the distinctive ability of log-regularizer to measure sparsity, the proposed approach can achieve an accurate localization process with robust performance in the challenging environments. Even if the input data is severely polluted by noise with a level of SNR = −10 dB, our algorithm can still keep a high accuracy of 99.4%, which outperforms five other machine learning algorithms, e.g., deep auto-encoder, convolutional neural network, etc.
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