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アイテム

  1. シンポジウム
  2. シンポジウムシリーズ
  3. マルチメディア、分散、協調とモバイルシンポジウム(DICOMO)
  4. 2020

ExerSense: Real-time Exercise Segmentation, Classification and Counting using IMU

https://ipsj.ixsq.nii.ac.jp/records/210737
https://ipsj.ixsq.nii.ac.jp/records/210737
70c284cf-b50c-411b-b3ad-15f2bf8a553e
名前 / ファイル ライセンス アクション
IPSJ-DICOMO2020024.pdf IPSJ-DICOMO2020024.pdf (1.1 MB)
Copyright (c) 2020 by the Information Processing Society of Japan
オープンアクセス
Item type Symposium(1)
公開日 2020-06-17
タイトル
タイトル ExerSense: Real-time Exercise Segmentation, Classification and Counting using IMU
タイトル
言語 en
タイトル ExerSense: Real-time Exercise Segmentation, Classification and Counting using IMU
言語
言語 eng
キーワード
主題Scheme Other
主題 ユビキタスコンピューティングシステム
資源タイプ
資源タイプ識別子 http://purl.org/coar/resource_type/c_5794
資源タイプ conference paper
著者所属
Aoyama Gakuin University
著者所属
Aoyama Gakuin University
著者所属
Turku University of Applied Sciences
著者所属
Aoyama Gakuin University
著者所属(英)
en
Aoyama Gakuin University
著者所属(英)
en
Aoyama Gakuin University
著者所属(英)
en
Turku University of Applied Sciences
著者所属(英)
en
Aoyama Gakuin University
著者名 Ishii, Shun

× Ishii, Shun

Ishii, Shun

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Yokokubo, Anna

× Yokokubo, Anna

Yokokubo, Anna

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Luimura, Mika

× Luimura, Mika

Luimura, Mika

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Lopez, Guillaume

× Lopez, Guillaume

Lopez, Guillaume

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著者名(英) Ishii, Shun

× Ishii, Shun

en Ishii, Shun

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Yokokubo, Anna

× Yokokubo, Anna

en Yokokubo, Anna

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Luimura, Mika

× Luimura, Mika

en Luimura, Mika

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Lopez, Guillaume

× Lopez, Guillaume

en Lopez, Guillaume

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論文抄録
内容記述タイプ Other
内容記述 Even though it is well known that physical exercises have numerous emotional and physical health benefits, maintaining a regular exercise routine is quite challenging. Fortunately, there exist technologies that promote us to do physical activities. Nonetheless, almost all of these technologies only target a narrow set of physical exercises (e.g., either running or physical workouts but not both) and are only applicable either in indoor or in outdoor environments, but do not work well in both environments. This paper introduces ExerSense, a real-time segmentation and classification algorithm that recognizes physical exercises, and that works well in both indoor and outdoor environments. The proposed algorithm achieves a 95% classification accuracy for five indoor and outdoor exercises, including segmentation error. This accuracy is similar or better than previous works that handled only indoor workouts, and those use a vision-based approach. Moreover, while comparable machine learning-based approaches need many training data, the proposed correlation-based method needs only one sample of motion data of each target exercise.
論文抄録(英)
内容記述タイプ Other
内容記述 Even though it is well known that physical exercises have numerous emotional and physical health benefits, maintaining a regular exercise routine is quite challenging. Fortunately, there exist technologies that promote us to do physical activities. Nonetheless, almost all of these technologies only target a narrow set of physical exercises (e.g., either running or physical workouts but not both) and are only applicable either in indoor or in outdoor environments, but do not work well in both environments. This paper introduces ExerSense, a real-time segmentation and classification algorithm that recognizes physical exercises, and that works well in both indoor and outdoor environments. The proposed algorithm achieves a 95% classification accuracy for five indoor and outdoor exercises, including segmentation error. This accuracy is similar or better than previous works that handled only indoor workouts, and those use a vision-based approach. Moreover, while comparable machine learning-based approaches need many training data, the proposed correlation-based method needs only one sample of motion data of each target exercise.
書誌情報 マルチメディア,分散協調とモバイルシンポジウム2043論文集

巻 2020, p. 151-154, 発行日 2020-06-17
出版者
言語 ja
出版者 情報処理学会
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