The Performance of Post-Fall Detection Using the Cross-Dataset: Feature Vectors, Classifiers and Processing Conditions

In this study, algorithms to detect post-falls were evaluated using the cross-dataset according to feature vectors (time-series and discrete data), classifiers (ANN and SVM), and four different processing conditions (normalization, equalization, increase in the number of training data, and additiona...

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Main Authors: Bummo Koo, Jongman Kim, Yejin Nam, Youngho Kim
Format: Article
Language:English
Published: MDPI AG 2021-07-01
Series:Sensors
Subjects:
Online Access:https://www.mdpi.com/1424-8220/21/14/4638
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spelling doaj-c3cf42fb213b428cbc56f0125e48fda62021-07-23T14:05:07ZengMDPI AGSensors1424-82202021-07-01214638463810.3390/s21144638The Performance of Post-Fall Detection Using the Cross-Dataset: Feature Vectors, Classifiers and Processing ConditionsBummo Koo0Jongman Kim1Yejin Nam2Youngho Kim3Department of Biomedical Engineering, Yonsei University, Wonju 26493, KoreaDepartment of Biomedical Engineering, Yonsei University, Wonju 26493, KoreaDepartment of Biomedical Engineering, Yonsei University, Wonju 26493, KoreaDepartment of Biomedical Engineering, Yonsei University, Wonju 26493, KoreaIn this study, algorithms to detect post-falls were evaluated using the cross-dataset according to feature vectors (time-series and discrete data), classifiers (ANN and SVM), and four different processing conditions (normalization, equalization, increase in the number of training data, and additional training with external data). Three-axis acceleration and angular velocity data were obtained from 30 healthy male subjects by attaching an IMU to the middle of the left and right anterior superior iliac spines (ASIS). Internal and external tests were performed using our lab dataset and SisFall public dataset, respectively. The results showed that ANN and SVM were suitable for the time-series and discrete data, respectively. The classification performance generally decreased, and thus, specific feature vectors from the raw data were necessary when untrained motions were tested using a public dataset. Normalization made SVM and ANN more and less effective, respectively. Equalization increased the sensitivity, even though it did not improve the overall performance. The increase in the number of training data also improved the classification performance. Machine learning was vulnerable to untrained motions, and data of various movements were needed for the training.https://www.mdpi.com/1424-8220/21/14/4638fall detectionartificial neural networksupport vector machinecross-dataset
collection DOAJ
language English
format Article
sources DOAJ
author Bummo Koo
Jongman Kim
Yejin Nam
Youngho Kim
spellingShingle Bummo Koo
Jongman Kim
Yejin Nam
Youngho Kim
The Performance of Post-Fall Detection Using the Cross-Dataset: Feature Vectors, Classifiers and Processing Conditions
Sensors
fall detection
artificial neural network
support vector machine
cross-dataset
author_facet Bummo Koo
Jongman Kim
Yejin Nam
Youngho Kim
author_sort Bummo Koo
title The Performance of Post-Fall Detection Using the Cross-Dataset: Feature Vectors, Classifiers and Processing Conditions
title_short The Performance of Post-Fall Detection Using the Cross-Dataset: Feature Vectors, Classifiers and Processing Conditions
title_full The Performance of Post-Fall Detection Using the Cross-Dataset: Feature Vectors, Classifiers and Processing Conditions
title_fullStr The Performance of Post-Fall Detection Using the Cross-Dataset: Feature Vectors, Classifiers and Processing Conditions
title_full_unstemmed The Performance of Post-Fall Detection Using the Cross-Dataset: Feature Vectors, Classifiers and Processing Conditions
title_sort performance of post-fall detection using the cross-dataset: feature vectors, classifiers and processing conditions
publisher MDPI AG
series Sensors
issn 1424-8220
publishDate 2021-07-01
description In this study, algorithms to detect post-falls were evaluated using the cross-dataset according to feature vectors (time-series and discrete data), classifiers (ANN and SVM), and four different processing conditions (normalization, equalization, increase in the number of training data, and additional training with external data). Three-axis acceleration and angular velocity data were obtained from 30 healthy male subjects by attaching an IMU to the middle of the left and right anterior superior iliac spines (ASIS). Internal and external tests were performed using our lab dataset and SisFall public dataset, respectively. The results showed that ANN and SVM were suitable for the time-series and discrete data, respectively. The classification performance generally decreased, and thus, specific feature vectors from the raw data were necessary when untrained motions were tested using a public dataset. Normalization made SVM and ANN more and less effective, respectively. Equalization increased the sensitivity, even though it did not improve the overall performance. The increase in the number of training data also improved the classification performance. Machine learning was vulnerable to untrained motions, and data of various movements were needed for the training.
topic fall detection
artificial neural network
support vector machine
cross-dataset
url https://www.mdpi.com/1424-8220/21/14/4638
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