Title :
Transferring Compressive-Sensing-Based Device-Free Localization Across Target Diversity
Author :
Ju Wang ; Xiaojiang Chen ; Dingyi Fang ; Wu, Chase Qishi ; Zhe Yang ; Tianzhang Xing
Author_Institution :
Sch. of Inf. Sci. & Technol., Northwest Univ., Xi´an, China
Abstract :
Device-free localization (DFL) plays an important role in many applications, such as wildlife population and migration tracking. Most of current DFL systems leverage the distorted received signal strength (RSS) changes to localize the target(s). However, they assume a fixed distribution of the RSS change measurements, although they are distorted by different types of targets. It inevitably causes the localization to fail if the targets for modeling and testing belong to different categories. This paper presents TLCS-a transferring compressive sensing based DFL approach-which employs a rigorously designed transferring function to transfer the distorted RSS changes across different categories of targets into a latent feature space, where the distributions of the distorted RSS change measurements from different categories of targets are unified. A benefit of this approach is that the same transferred sensing matrix can be shared by different categories of targets, leading to a substantial reduction in the human efforts. The results of experiments illustrate the efficacy of the TLCS.
Keywords :
RSSI; compressed sensing; distortion; signal reconstruction; target tracking; TLCS; compressive-sensing-based device-free localization; distorted RSS change measurements; latent feature space; received signal strength; target diversity; transferring compressive sensing based DFL approach; Compressed sensing; Distortion measurement; Monitoring; Phase measurement; Sensors; Shape; Vectors; Compressive sensing (CS); Transferring; compressive sensing; device-free localization; device-free localization (DFL); target diversity; transferring;
Journal_Title :
Industrial Electronics, IEEE Transactions on
DOI :
10.1109/TIE.2014.2360140