@article{oai:muroran-it.repo.nii.ac.jp:00010436, author = {LI, He and 李, 鶴 and OTA, Kaoru and 太田, 香 and DONG, Mianxiong and 董, 冕雄 and GUO, Minyi}, journal = {室蘭工業大学紀要, Memoirs of the Muroran Institute of Technology}, month = {Mar}, note = {application/pdf, Wi-Fi channel state information (CSI) provides adequate information for recognizing and analyzing human activities. Because of the short distance and low transmit power of Wi-Fi communications, people usually deploy multiple access points (APs) in a small area. Traditional Wi-Fi CSI based human activity recognition methods adopt Wi-Fi CSI from a single AP, which is not so appropriate for a high-density Wi-Fi environment. In this paper, we propose a learning method that analyzes the CSI of multiple APs in a small area to detect and recognize human activities. We introduce a deep learning model to process complex and large CSI information from multiple APs. From extensive experiment results, our method performs better than other solutions in a given environment where multiple Wi-Fi APs exist., 特集}, pages = {65--72}, title = {Learning Human Activities through Wi-Fi Channel State Information with Multiple Access Points}, volume = {70}, year = {2021}, yomi = {リ, ホ and オオタ, カオル and トウ, メンユウ} }