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http://dx.doi.org/10.5187/jast.2021.e35

A computer vision-based approach for behavior recognition of gestating sows fed different fiber levels during high ambient temperature  

Kasani, Payam Hosseinzadeh (College of Animal Life Sciences, Kangwon National University)
Oh, Seung Min (Gyeongbuk Livestock Research Institute)
Choi, Yo Han (Swine Division, National Institute of Animal Science, Rural Development Administration)
Ha, Sang Hun (College of Animal Life Sciences, Kangwon National University)
Jun, Hyungmin (Division of Mechanical System Engineering, Jeonbuk National University)
Park, Kyu hyun (College of Animal Life Sciences, Kangwon National University)
Ko, Han Seo (College of Animal Life Sciences, Kangwon National University)
Kim, Jo Eun (Swine Division, National Institute of Animal Science, Rural Development Administration)
Choi, Jung Woo (College of Animal Life Sciences, Kangwon National University)
Cho, Eun Seok (Swine Division, National Institute of Animal Science, Rural Development Administration)
Kim, Jin Soo (College of Animal Life Sciences, Kangwon National University)
Publication Information
Journal of Animal Science and Technology / v.63, no.2, 2021 , pp. 367-379 More about this Journal
Abstract
The objectives of this study were to evaluate convolutional neural network models and computer vision techniques for the classification of swine posture with high accuracy and to use the derived result in the investigation of the effect of dietary fiber level on the behavioral characteristics of the pregnant sow under low and high ambient temperatures during the last stage of gestation. A total of 27 crossbred sows (Yorkshire × Landrace; average body weight, 192.2 ± 4.8 kg) were assigned to three treatments in a randomized complete block design during the last stage of gestation (days 90 to 114). The sows in group 1 were fed a 3% fiber diet under neutral ambient temperature; the sows in group 2 were fed a diet with 3% fiber under high ambient temperature (HT); the sows in group 3 were fed a 6% fiber diet under HT. Eight popular deep learning-based feature extraction frameworks (DenseNet121, DenseNet201, InceptionResNetV2, InceptionV3, MobileNet, VGG16, VGG19, and Xception) used for automatic swine posture classification were selected and compared using the swine posture image dataset that was constructed under real swine farm conditions. The neural network models showed excellent performance on previously unseen data (ability to generalize). The DenseNet121 feature extractor achieved the best performance with 99.83% accuracy, and both DenseNet201 and MobileNet showed an accuracy of 99.77% for the classification of the image dataset. The behavior of sows classified by the DenseNet121 feature extractor showed that the HT in our study reduced (p < 0.05) the standing behavior of sows and also has a tendency to increase (p = 0.082) lying behavior. High dietary fiber treatment tended to increase (p = 0.064) lying and decrease (p < 0.05) the standing behavior of sows, but there was no change in sitting under HT conditions.
Keywords
Convolutional neural network; Dietary fiber; Heat stress; Machine learning; Sows;
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