ツボカワ ヒロシ
  坪川 宏
   所属   工学部 電気電子工学科
   職種   准教授
言語種別 英語
発行・発表の年月 2024/01
形態種別 国際会議論文
査読 査読あり
標題 An Examination of Learning Data for Behavior Identification and Range Expansion Using Doppler Senso
執筆形態 共著
掲載誌名 IEEE 42nd International Conference on Consumer Electronics
掲載区分国外
出版社・発行元 IEEE
巻・号・頁 CT06-1
著者・共著者 Kota Sonohara , Hiroshi Tsubokawa
概要 In recent years, the rate of older people has been increasing with the aging of population. In such a situation, many elderly people suffer injuries from falls every year. In the case of living alone, it is difficult to find accidents by others, and there is a possibility of sequelae or death due to the delay in discovery. It has been reported that this is the case. In view of this background, we think that it is necessary to quickly identify dangerous situations such as falls and stumbling and daily life situations of elderly people living alone. In this paper, we use Doppler sensors to detect falls in this study. We perform spectral analysis using short-time Fourier transform on the signals obtained from the sensors, and construct a classifier that identifies falling actions by CNN. In addition, we focus on the overall activity recognition in the living space, and aim to expand the practical range of the proposed system, and examine the measurement range of a single sensor and the learning data. Even when installed on the wall (for horizontal detection) or on the ceiling (for vertical detection), dangerous situations such as "Fall" and "Stumble" were 100% identifiable. In addition, it was revealed that the identification of "Down" and "Up" was improved by about 13.3% when installed on the ceiling. Furthermore, by learning the motion data from directly below at 1m, 2m, 3m, and 4m, "Fall" and "Stumble" within 賊4m in the horizontal direction and 賊2m in the vertical direction were identifiable with an accuracy of more than 83.3%.
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