Abstract:
An extensive set of research efforts have explored Channel State Information for human activity detection. By extracting CSI from a sequence of packets, one can statistic...Show MoreMetadata
Abstract:
An extensive set of research efforts have explored Channel State Information for human activity detection. By extracting CSI from a sequence of packets, one can statistically analyze the temporal variations embedded therein and recognize corresponding human activities. In this paper, we present Wi-Chase, a sensorless system based on CSI from ubiquitous WiFi packets for human activity detection. Different from existing schemes utilizing only CSI of one or a small subset of subcarriers, Wi-Chase fully utilizes all available subcarriers of the WiFi signal and incorporates variations in both their phases and magnitudes. As each subcarrier carries integral information that will improve the recognition accuracy because of detailed correlated information content in different subcarriers, we can achieve much higher detection accuracy. To the best of our knowledge, this is the first system that gathers information from all the subcarriers to identify and classify multiple activities. Our experimental results show that Wi-Chase is robust and achieves an average classification accuracy greater than 97% for multiple communication links.
Published in: 2017 IEEE 18th International Symposium on A World of Wireless, Mobile and Multimedia Networks (WoWMoM)
Date of Conference: 12-15 June 2017
Date Added to IEEE Xplore: 13 July 2017
ISBN Information:
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- IEEE Keywords
- Index Terms
- Human Activities ,
- Recognition System ,
- Action Recognition ,
- Human Activity Recognition ,
- Activity Recognition System ,
- Classification Accuracy ,
- Detection Accuracy ,
- Average Accuracy ,
- Channel State ,
- Communication Links ,
- Average Classification Accuracy ,
- Multiple Links ,
- WiFi Signals ,
- Learning Algorithms ,
- Training Dataset ,
- Support Vector Machine ,
- Low-pass ,
- K-nearest Neighbor ,
- Line-of-sight ,
- Hand Movements ,
- Received Signal Strength Indicator ,
- Static Environment ,
- Median Absolute Deviation ,
- Majority Voting ,
- Wi-Fi Devices ,
- Reflection Signal ,
- kNN Classifier ,
- Antenna Pair ,
- Receiver Antenna ,
- Amplitude Characteristics
- Author Keywords
Keywords assist with retrieval of results and provide a means to discovering other relevant content. Learn more.
- IEEE Keywords
- Index Terms
- Human Activities ,
- Recognition System ,
- Action Recognition ,
- Human Activity Recognition ,
- Activity Recognition System ,
- Classification Accuracy ,
- Detection Accuracy ,
- Average Accuracy ,
- Channel State ,
- Communication Links ,
- Average Classification Accuracy ,
- Multiple Links ,
- WiFi Signals ,
- Learning Algorithms ,
- Training Dataset ,
- Support Vector Machine ,
- Low-pass ,
- K-nearest Neighbor ,
- Line-of-sight ,
- Hand Movements ,
- Received Signal Strength Indicator ,
- Static Environment ,
- Median Absolute Deviation ,
- Majority Voting ,
- Wi-Fi Devices ,
- Reflection Signal ,
- kNN Classifier ,
- Antenna Pair ,
- Receiver Antenna ,
- Amplitude Characteristics
- Author Keywords