| Literature DB >> 30678172 |
Shengxin Xu1, Heng Liu2, Fei Gao3, Zhenghuan Wang4.
Abstract
Radio tomographic imaging (RTI) has emerged as a promising device-free localization technology for locating the targets with no devices attached. RTI deduces the location information from the reconstructed attenuation image characterizing target-induced spatial loss of radio frequency measurements in the sensing area. In cluttered indoor environments, RF measurements of wireless links are corrupted by multipath effects and thus less robust to achieve a high localization accuracy for RTI. This paper proposes to improve the quality of measurements by using spatial diversity. The key insight is that, with multiple antennae equipped, due to small-scale multipath fading, RF measurement variation of each antenna pair behaves differently. Therefore, spatial diversity can provide more reliable and strong measurements in terms of link quality. Moreover, to estimate the location from the image more precisely and make the image more identifiable, we propose using a new reconstruction regularization linearly combining the sparsity and correlation inherent in the image. The proposed reconstruction method can remarkably reduce the image noise and enhance the imaging accuracy especially in the case of a few available measurements. Indoor experimental results demonstrate that compared to existing RTI improvement methods, our RTI solution can reduce the root-mean-square localization error at least 47% while also improving the imaging performance.Entities:
Keywords: RSS; compressive sensing; indoor localization; radio tomographic imaging; spatial diversity
Year: 2019 PMID: 30678172 PMCID: PMC6386865 DOI: 10.3390/s19030439
Source DB: PubMed Journal: Sensors (Basel) ISSN: 1424-8220 Impact factor: 3.576
Figure 1The proposed RTI localization scheme: (a) a typical RTI network illustration; (b) each wireless link consists of multiple sublinks. In (a), the double arrow indicates the bidirectional link and the blue color represents the links obstructed by the target. In (b), each node is equipped with three antennae, resulting in a link with nine sublinks.
Figure 2Temporal variation of RSS measured on nine sublinks of the link between node 6 and node 9 with human movement. (a) sublink ; (b) sublink ; (c) sublink ; (d) sublink ; (e) sublink ; (f) sublink ; (g) sublink ; (h) sublink ; (i) sublink .
Figure 3Conference room: (a) photography; (b) layout. In the test, the orientation of the target is perpendicular to the y-axis.
Performance evaluation indicators of different RTI algorithms.
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Figure 4Localization error at individual test locations. SD-RTI achieves the best localization results.
Performance evaluation indicators of different regularization algorithms.
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Figure 5The attenuation image reconstructed using (a) Tikhonov (-norm); (b) LASSO (-norm); and (c) proposed (). The image quality of the proposed method is more clear and accurate than the other two methods.
Figure 6Impact of the number of sublinks on (a) localization accuracy; and (b) image quality.