Proceedings Article10.1109/ICMLA.2017.0-148
Multiple Kernel Representation Learning for WiFi-Based Human Activity Recognition
Han Zou,Yuxun Zhou,Jianfei Yang,Weixi Gu,Lihua Xie,Costas J. Spanos +5 more
- 01 Dec 2017
- pp 268-274
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TL;DR: A novel multiple kernel representation learning (MKRL) framework that automatically extracts and combines informative patterns from the Channel State Information (CSI) measurements and achieves a 98\% activity recognition accuracy.
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Abstract: Human activity recognition is becoming the vital underpinning for a myriad of emerging applications in the field of human-computer interaction, mobile computing, and smart grid. Besides the utilization of up-to-date sensing techniques, modern activity recognition systems also require a machine learning (ML) algorithm that leverages the sensory data for identification purposes. In view of the unique characteristics of the measurement data and the ML challenges thereof, we propose a non-intrusive human activity recognition system that only uses existing commodity WiFi routers. The core of our system is a novel multiple kernel representation learning (MKRL) framework that automatically extracts and combines informative patterns from the Channel State Information (CSI) measurements. The MKRL firstly learns a kernel string representation from time, frequency, wavelet, and shape domains with an efficient greedy algorithm. Then it performs information fusion from diverse perspectives based on multi-view kernel learning. Moreover, different stages of MKRL can be seamlessly integrated into a multiple kernel learning framework to build up a robust and comprehensive activity classifier. Extensive experiments are conducted in typical indoor environments and the experimental results demonstrate that the proposed system outperforms existing methods and achieves a 98\% activity recognition accuracy.
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Citations
Device-Free Occupant Activity Sensing Using WiFi-Enabled IoT Devices for Smart Homes
TL;DR: A novel real-time, device-free, and privacy-preserving WiFi-enabled Internet of Things platform for occupancy sensing, which can promote a myriad of emerging applications and is designed to achieve an optimal tradeoff between performance and scalability.
212
Device-free occupancy detection and crowd counting in smart buildings with WiFi-enabled IoT
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179
CareFi: Sedentary Behavior Monitoring System via Commodity WiFi Infrastructures
TL;DR: CareFi is taken, the first attempt to develop a device-free SB monitoring and recommendation system namely CareFi, which leverages tremendous information behind WiFi signals to monitor the indoor environment and identify series of activities in SB.
65
EfficientFi: Toward Large-Scale Lightweight WiFi Sensing via CSI Compression
01 Aug 2022
TL;DR: In this article , the authors proposed an efficient large-scale WiFi sensing framework, namely EfficientFi, which consists of a novel deep neural network that can compress fine-grained WiFi Channel State Information (CSI) at edge, restore CSI at cloud, and perform sensing tasks simultaneously.
58
SenseFi: A library and benchmark on deep-learning-empowered WiFi human sensing
TL;DR: The SenseFi benchmark as discussed by the authors is a comprehensive benchmark with an open-source library for deep learning in WiFi sensing research that offers researchers a convenient tool to validate learning-based WiFi-sensing methods on multiple datasets and platforms.
56
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