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深度学习在多牛跛行检测中的姿态估计。

Deep learning pose estimation for multi-cattle lameness detection.

机构信息

School of Natural and Environmental Science, Newcastle University, Newcastle Upon Tyne, NE1 7RU, UK.

School of Engineering, Newcastle University, Newcastle Upon Tyne, NE1 7RU, UK.

出版信息

Sci Rep. 2023 Mar 18;13(1):4499. doi: 10.1038/s41598-023-31297-1.

Abstract

The objective of this study was to develop a fully automated multiple-cow real-time lameness detection system using a deep learning approach for cattle detection and pose estimation that could be deployed across dairy farms. Utilising computer vision and deep learning, the system can analyse simultaneously both the posture and gait of each cow within a camera field of view to a very high degree of accuracy (94-100%). Twenty-five video sequences containing 250 cows in varying degrees of lameness were recorded and independently scored by three accredited Agriculture and Horticulture Development Board (AHDB) mobility scorers using the AHDB dairy mobility scoring system to provide ground truth lameness data. These observers showed significant inter-observer reliability. Video sequences were broken down into their constituent frames and with a further 500 images downloaded from google, annotated with 15 anatomical points for each animal. A modified Mask-RCNN estimated the pose of each cow to output 5 key-points to determine back arching and 2 key-points to determine head position. Using the SORT (simple, online, and real-time tracking) algorithm, cows were tracked as they move through frames of the video sequence (i.e., in moving animals). All the features were combined using the CatBoost gradient boosting algorithm with accuracy being determined using threefold cross-validation including recursive feature elimination. Precision was assessed using Cohen's kappa coefficient and assessments of precision and recall. This methodology was applied to cows with varying degrees of lameness (according to accredited scoring, n = 3) and demonstrated that some characteristics directly associated with lameness could be monitored simultaneously. By combining the algorithm results over time, more robust evaluation of individual cow lameness was obtained. The model showed high performance for predicting and matching the ground truth lameness data with the outputs of the algorithm. Overall, threefold lameness detection accuracy of 100% and a lameness severity classification accuracy of 94% respectively was achieved with a high degree of precision (Cohen's kappa = 0.8782, precision = 0.8650 and recall = 0.9209).

摘要

本研究旨在开发一种完全自动化的多牛实时跛行检测系统,采用深度学习方法进行牛检测和姿势估计,可在奶牛场中部署。该系统利用计算机视觉和深度学习技术,可以非常高的精度(94-100%)同时分析相机视场中每头牛的姿势和步态。记录了包含 250 头不同跛行程度的奶牛的 25 个视频序列,并由三名经过认可的农业和园艺发展局(AHDB)流动性评估员使用 AHDB 奶牛流动性评分系统对每个视频序列进行独立评分,提供跛行数据的真实性。这些观察者表现出了显著的观察者间可靠性。将视频序列分解为其组成的帧,并从谷歌下载了另外 500 张图像,为每只动物标注了 15 个解剖点。修改后的 Mask-RCNN 估计每头奶牛的姿势,输出 5 个关键点来确定背部拱起,2 个关键点来确定头部位置。使用 SORT(简单、在线和实时跟踪)算法,当奶牛在视频序列的帧中移动时对其进行跟踪(即,在移动的动物中)。使用 CatBoost 梯度提升算法结合所有特征,使用三分交叉验证包括递归特征消除来确定准确性。使用 Cohen 的 kappa 系数评估精度,并评估精度和召回率。该方法应用于不同跛行程度的奶牛(根据认可的评分,n=3),结果表明可以同时监测一些与跛行直接相关的特征。通过随时间合并算法结果,获得了对个体奶牛跛行更稳健的评估。该模型在预测和匹配算法输出与真实跛行数据方面表现出了很高的性能。总体而言,实现了 100%的三分跛行检测准确率和 94%的跛行严重程度分类准确率,具有很高的精度(Cohen 的 kappa=0.8782,精度=0.8650,召回率=0.9209)。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/5fdb/10024686/a4cba8d44bb0/41598_2023_31297_Fig1_HTML.jpg

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