基于头颈背部关键点的奶牛跛行检测
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内蒙古自然基金(2024MS06026);内蒙古自治区科技计划项目(2023YFSW0014);内蒙古自治区高校基本科研业务项目(2023QNJS193)


Detecting cow lameness using the key points of head, neck, and back
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    摘要:

    为实现奶牛跛行的自动检测,该研究鉴于跛行奶牛行走时,头部起伏较大且背部弓起的特点,提出了一种基于深度学习的奶牛头、颈、背部6个关键点的跛行检测算法。首先,在通道旁固定摄像头,采集奶牛行走的视频数据,利用YOLOv8n-seg实例分割算法将奶牛从图像中识别出来;其次,使用DeepLabCut算法提取视频帧序列中奶牛的头、颈、肩、背部中心、腰和尾部6个关键点坐标,对比分析实例分割得到的6种格式输入图像在MobileNet-V2和ResNet系列主干网络上的训练效果后,最终选择按目标检测框裁剪后的分割结果图和ResNet-152作为DeepLabCut算法的最佳输入和最优主干网络;最后,对比分析4种时间序列模型和FN-BiLSTM模型在奶牛跛行检测中的表现。试验结果表明,FN-BiLSTM算法的性能最优,在包含16头奶牛16段视频的测试集上跛行识别的准确率达到了97.16%。研究表明,该算法可为养殖场奶牛跛行检测提供技术支持。

    Abstract:

    Cow lameness has represented a significant challenge on the economic viability of dairy operations. The overall performance can increase the risk of health issues for affected cows, leading to reduced milk production. Consequently, cow lameness is crucial to maintain both the welfare of the herd and the profitability of dairy farms. Lame cows typically show the observable indicators during walking, such as a lowered head position, pronounced head movement, and an arched back, whereas, healthy cows demonstrate the minimal head movement, straight back, normal gait and body equilibrium. In this study, a deep learning-based algorithm was proposed to automatic detect the lameness in cows, according to these outstanding movement features. A systematic investigation was implemented to detect the cow lameness, thus tracking the movement patterns of six key anatomical points: the head, neck, shoulder, center of the back, loin, and tail. Firstly, two mobile devices were positioned adjacent to the passage, leading to the milking area. The video data was collected for 160 walking sequences from 83 cows. YOLOv8n-seg instance segmentation was employed to accurately identify the cows in the images, and then extract their coordinates and pixel regions. The computational efficiency and accuracy were improved to reduce the effects of light variations in the channel, background barbed wire fence boundaries, and foreground fence occlusion. Secondly, the six types of keypoint detection datasets were constructed after instance segmentation, including RGB images, binary mask images, segmentation images along with their cropped versions, according to the target detection frame. Four backbone networks, MobileNet-V2, ResNet-50, ResNet-101, and ResNet-152, were used to train and test these datasets. Segmented images that cropped by the detection frame were selected as the optimal input format, with ResNet-152 chosen as the best-performing backbone network. Then, the DeepLabCut algorithm was used to automatically extract the coordinates of six key points from the video sequences: the head, neck, shoulder, center of the back, waist, and tail, resulting in the creation of a lameness detection dataset. Lastly, a comparative analysis was performed to evaluate the performance of Temporal Convolutional Network (TCN), Gated Recurrent Unit (GRU), Long Short-Term Memory (LSTM), Bidirectional LSTM, BiLSTM, and FN-BiLSTM models in the claudication detection. (Bidirectional LSTM, BiLSTM), and FN-BiLSTM models in the lameness detection. Ablation experiments were conducted on the FN-BiLSTM model, in order to verify the effects of the Filter and Noise layers on the lameness detection in cows. The results demonstrated that the FN-BiLSTM model was achieved in the optimal performance with 97.16% accuracy, 95.71% precision, and 99.04% recall for the lameness recognition on a test set of 16 videos from 16 cows. Moreover, the instance segmentation model exhibited the high efficacy to capture the image sequences of cows and their whole-body semantic information, even under variable illumination conditions and different bovine-to-camera distances. The precision, recall, and mAP of the test set reached 99.97%, 100%, and 99.5%, respectively. During the keypoint detection phase, the optimal performance was achieved, when utilizing the cropped segmentation maps as input, with ResNet-152 as the backbone network, resulting in the root mean square errors of 2.04 pixels and 4.28 pixels for the training and test sets, respectively. These findings can offer a valuable technical approach for the automated detection of cow lameness in the livestock industry. This finding has the potential to enhance the efficiency and animal welfare of dairy operations, thereby promoting the sustainable development of the livestock.

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张智荣,褚燕华,王月明,王丽颖,申煜浩,李鑫.基于头颈背部关键点的奶牛跛行检测[J].农业工程学报,2024,40(21):157-164. DOI:10.11975/j. issn.1002-6819.202406078

ZHANG Zhirong, CHU Yanhua, WANG Yueming, WANG Liying, SHEN Yuhao, LI Xin. Detecting cow lameness using the key points of head, neck, and back[J]. Transactions of the Chinese Society of Agricultural Engineering (Transactions of the CSAE),2024,40(21):157-164. DOI:10.11975/j. issn.1002-6819.202406078

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  • 收稿日期:2024-06-12
  • 最后修改日期:2024-09-29
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  • 在线发布日期: 2024-11-01
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