Development and validation of an ensemble classifier for real-time recognition of cow behavior patterns from accelerometer data and location data.
Behaviors are important indicators for assessing the health and well-being of dairy cows. The aim of this study is to develop and validate an ensemble classifier for automatically measuring and distinguishing several behavior patterns of dairy cows from accelerometer data and location data. The ense...
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doaj-3fe6669a9cd04095b829484eeea78ccd2020-11-25T01:56:27ZengPublic Library of Science (PLoS)PLoS ONE1932-62032018-01-01139e020354610.1371/journal.pone.0203546Development and validation of an ensemble classifier for real-time recognition of cow behavior patterns from accelerometer data and location data.Jun WangZhitao HeGuoqiang ZhengSong GaoKaixuan ZhaoBehaviors are important indicators for assessing the health and well-being of dairy cows. The aim of this study is to develop and validate an ensemble classifier for automatically measuring and distinguishing several behavior patterns of dairy cows from accelerometer data and location data. The ensemble classifier consists of two parts, our new Multi-BP-AdaBoost algorithm and a data fusion method based on D-S evidence theory. We identify seven behavior patterns: feeding, lying, standing, lying down, standing up, normal walking, and active walking. Accuracy, sensitivity, and precision were used to validate classification performance. The Multi-BP-AdaBoost algorithm performed well when identifying lying (92% accuracy, 93% sensitivity, 82% precision), lying down (99%, 82%, 86%), standing up (99%, 74%, 85%), normal walking (97%, 92%, 86%), and active walking (99%, 94%, 89%). Its results were poor for feeding (80%, 52%, 55%) and standing (80%, 46%, 58%), which are difficult to differentiate using a leg-mounted sensor. Position data made it possible to differentiate feeding and standing. The D-S evidence fusion method for combining accelerometer data and location data in classification was used to fuse two pieces of basic behavior-related evidence into a single estimation model. With this addition, the sensitivity and precision of the two difficult behaviors increased by approximately 20 percentage points. In conclusion, the classification results indicate that the ensemble classifier effectively recognizes various behavior patterns in dairy cows. However, further work is needed to study the robustness of the feature and model by increasing the number of cows enrolled in the trial.http://europepmc.org/articles/PMC6128579?pdf=render |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Jun Wang Zhitao He Guoqiang Zheng Song Gao Kaixuan Zhao |
spellingShingle |
Jun Wang Zhitao He Guoqiang Zheng Song Gao Kaixuan Zhao Development and validation of an ensemble classifier for real-time recognition of cow behavior patterns from accelerometer data and location data. PLoS ONE |
author_facet |
Jun Wang Zhitao He Guoqiang Zheng Song Gao Kaixuan Zhao |
author_sort |
Jun Wang |
title |
Development and validation of an ensemble classifier for real-time recognition of cow behavior patterns from accelerometer data and location data. |
title_short |
Development and validation of an ensemble classifier for real-time recognition of cow behavior patterns from accelerometer data and location data. |
title_full |
Development and validation of an ensemble classifier for real-time recognition of cow behavior patterns from accelerometer data and location data. |
title_fullStr |
Development and validation of an ensemble classifier for real-time recognition of cow behavior patterns from accelerometer data and location data. |
title_full_unstemmed |
Development and validation of an ensemble classifier for real-time recognition of cow behavior patterns from accelerometer data and location data. |
title_sort |
development and validation of an ensemble classifier for real-time recognition of cow behavior patterns from accelerometer data and location data. |
publisher |
Public Library of Science (PLoS) |
series |
PLoS ONE |
issn |
1932-6203 |
publishDate |
2018-01-01 |
description |
Behaviors are important indicators for assessing the health and well-being of dairy cows. The aim of this study is to develop and validate an ensemble classifier for automatically measuring and distinguishing several behavior patterns of dairy cows from accelerometer data and location data. The ensemble classifier consists of two parts, our new Multi-BP-AdaBoost algorithm and a data fusion method based on D-S evidence theory. We identify seven behavior patterns: feeding, lying, standing, lying down, standing up, normal walking, and active walking. Accuracy, sensitivity, and precision were used to validate classification performance. The Multi-BP-AdaBoost algorithm performed well when identifying lying (92% accuracy, 93% sensitivity, 82% precision), lying down (99%, 82%, 86%), standing up (99%, 74%, 85%), normal walking (97%, 92%, 86%), and active walking (99%, 94%, 89%). Its results were poor for feeding (80%, 52%, 55%) and standing (80%, 46%, 58%), which are difficult to differentiate using a leg-mounted sensor. Position data made it possible to differentiate feeding and standing. The D-S evidence fusion method for combining accelerometer data and location data in classification was used to fuse two pieces of basic behavior-related evidence into a single estimation model. With this addition, the sensitivity and precision of the two difficult behaviors increased by approximately 20 percentage points. In conclusion, the classification results indicate that the ensemble classifier effectively recognizes various behavior patterns in dairy cows. However, further work is needed to study the robustness of the feature and model by increasing the number of cows enrolled in the trial. |
url |
http://europepmc.org/articles/PMC6128579?pdf=render |
work_keys_str_mv |
AT junwang developmentandvalidationofanensembleclassifierforrealtimerecognitionofcowbehaviorpatternsfromaccelerometerdataandlocationdata AT zhitaohe developmentandvalidationofanensembleclassifierforrealtimerecognitionofcowbehaviorpatternsfromaccelerometerdataandlocationdata AT guoqiangzheng developmentandvalidationofanensembleclassifierforrealtimerecognitionofcowbehaviorpatternsfromaccelerometerdataandlocationdata AT songgao developmentandvalidationofanensembleclassifierforrealtimerecognitionofcowbehaviorpatternsfromaccelerometerdataandlocationdata AT kaixuanzhao developmentandvalidationofanensembleclassifierforrealtimerecognitionofcowbehaviorpatternsfromaccelerometerdataandlocationdata |
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