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  1. 学術雑誌論文
  2. 5 技術(工学)

A Method for Sensor-Based Activity Recognition in Missing Data Scenario

http://hdl.handle.net/10228/00008457
http://hdl.handle.net/10228/00008457
1203f253-22ab-4ec4-8080-7679efed728f
名前 / ファイル ライセンス アクション
sensors-20-03811-v2.pdf sensors-20-03811-v2.pdf (2.3 MB)
アイテムタイプ 学術雑誌論文 = Journal Article(1)
公開日 2021-09-10
資源タイプ
資源タイプ識別子 http://purl.org/coar/resource_type/c_6501
資源タイプ journal article
タイトル
タイトル A Method for Sensor-Based Activity Recognition in Missing Data Scenario
言語 en
言語
言語 eng
著者 Hossain, Tahera

× Hossain, Tahera

WEKO 31302

en Hossain, Tahera

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Ahad, Md Atiqur Rahman

× Ahad, Md Atiqur Rahman

WEKO 31303

en Ahad, Md Atiqur Rahman

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井上, 創造

× 井上, 創造

WEKO 27425
e-Rad_Researcher 90346825
Scopus著者ID 9335840200
九工大研究者情報 140

en Inoue, Sozo

ja 井上, 創造

ja-Kana イノウエ, ソウゾウ


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抄録
内容記述タイプ Abstract
内容記述 Sensor-based human activity recognition has various applications in the arena of healthcare, elderly smart-home, sports, etc. There are numerous works in this field—to recognize various human activities from sensor data. However, those works are based on data patterns that are clean data and have almost no missing data, which is a genuine concern for real-life healthcare centers. Therefore, to address this problem, we explored the sensor-based activity recognition when some partial data were lost in a random pattern. In this paper, we propose a novel method to improve activity recognition while having missing data without any data recovery. For the missing data pattern, we considered data to be missing in a random pattern, which is a realistic missing pattern for sensor data collection. Initially, we created different percentages of random missing data only in the test data, while the training was performed on good quality data. In our proposed approach, we explicitly induce different percentages of missing data randomly in the raw sensor data to train the model with missing data. Learning with missing data reinforces the model to regulate missing data during the classification of various activities that have missing data in the test module. This approach demonstrates the plausibility of the machine learning model, as it can learn and predict from an identical domain. We exploited several time-series statistical features to extricate better features in order to comprehend various human activities. We explored both support vector machine and random forest as machine learning models for activity classification. We developed a synthetic dataset to empirically evaluate the performance and show that the method can effectively improve the recognition accuracy from 80.8% to 97.5%. Afterward, we tested our approach with activities from two challenging benchmark datasets: the human activity sensing consortium (HASC) dataset and single chest-mounted accelerometer dataset. We examined the method for different missing percentages, varied window sizes, and diverse window sliding widths. Our explorations demonstrated improved recognition performances even in the presence of missing data. The achieved results provide persuasive findings on sensor-based activity recognition in the presence of missing data.
言語 en
書誌情報 en : Sensors

巻 20, 号 14, p. 3811-1-3811-23, 発行日 2020-07-08
出版社
出版者 MDPI
DOI
関連タイプ isIdenticalTo
識別子タイプ DOI
関連識別子 https://doi.org/10.3390/s20143811
日本十進分類法
主題Scheme NDC
主題 501
ISSN
収録物識別子タイプ EISSN
収録物識別子 1424-8220
著作権関連情報
権利情報Resource http://creativecommons.org/licenses/by/4.0/
権利情報 Copyright (c) 2020 by the authors. Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (http://creativecommons.org/licenses/by/4.0/).
キーワード
主題Scheme Other
主題 human activity recognition (HAR)
キーワード
主題Scheme Other
主題 sensor network
キーワード
主題Scheme Other
主題 missing values
キーワード
主題Scheme Other
主題 random forest
キーワード
主題Scheme Other
主題 SVM
出版タイプ
出版タイプ VoR
出版タイプResource http://purl.org/coar/version/c_970fb48d4fbd8a85
査読の有無
値 yes
研究者情報
URL https://hyokadb02.jimu.kyutech.ac.jp/html/140_ja.html
論文ID(連携)
値 10379297
連携ID
値 9264
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