Vertical back movement of cows during locomotion: detecting lameness with a simple image processing technique.

IF 1.6 3区 农林科学 Q2 AGRICULTURE, DAIRY & ANIMAL SCIENCE
Ibrahim Akin, Yilmaz Kalkan, Yalcin Alper Ozturan
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引用次数: 0

Abstract

This research paper proposes a simple image processing technique for automatic lameness detection in dairy cows under farm conditions. Seventy-five cows were selected from a dairy farm and visually assessed for a reference/real lameness score (RLS) as they left the milking parlor, while simultaneously being video-captured. The method employed a designated walking path and video recordings processed through image analysis to derive a new computerized automatic lameness score (ALDS) based on calculated factors from back arch posture. The proposed automatic lameness detection system was calibrated using 12 cows, and the remaining 63 were used to evaluate the diagnostic characteristics of the ALDS. The agreement and correlation between ALDS and RLS were investigated. ALDS demonstrated high diagnostic accuracy with 100% sensitivity and specificity and was found to be 100% accurate with a perfect agreement (ρc = 1) and strong correlation (r = 1, P < 0.001) for lameness detection in binary scores (lame/non-lame). Moreover, the ALDS had a strong agreement (ρc = 0.885) and was highly correlated (r = 0.840; 0.796-1.000 95% confidence interval, P < 0.001) with RLS in ordinal scores (lameness severity; LS1 to LS5). Our findings suggest that the proposed method has the potential to compete with vision-based lameness detection methods in dairy cows in farm conditions.

奶牛运动时背部的垂直运动:利用简单的图像处理技术检测跛足。
本研究论文提出了一种在牧场条件下自动检测奶牛跛足的简单图像处理技术。研究人员从一个奶牛场挑选了 75 头奶牛,在它们离开挤奶厅时对其进行视觉评估,得出参考/实际跛足评分(RLS),同时对它们进行视频采集。该方法采用指定的行走路径和通过图像分析处理的视频记录,根据背弓姿势的计算因子得出新的计算机自动跛足评分(ALDS)。利用 12 头奶牛对所提出的自动跛行检测系统进行了校准,并利用其余 63 头奶牛对 ALDS 的诊断特性进行了评估。研究了 ALDS 和 RLS 之间的一致性和相关性。ALDS的诊断准确率很高,灵敏度和特异性均为100%,而且在二元评分(跛足/非跛足)的跛足检测中,ALDS的准确率为100%,具有完美的一致性(ρc = 1)和很强的相关性(r = 1,P < 0.001)。此外,ALDS 与 RLS 在序数评分(跛足严重程度;LS1 至 LS5)上具有很高的一致性(ρc = 0.885)和高度相关性(r = 0.840; 0.796-1.000 95% 置信区间,P < 0.001)。我们的研究结果表明,所提出的方法有可能与基于视觉的奶牛跛足检测方法相媲美。
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来源期刊
Journal of Dairy Research
Journal of Dairy Research 农林科学-奶制品与动物科学
CiteScore
3.80
自引率
4.80%
发文量
117
审稿时长
12-24 weeks
期刊介绍: The Journal of Dairy Research is an international Journal of high-standing that publishes original scientific research on all aspects of the biology, wellbeing and technology of lactating animals and the foods they produce. The Journal’s ability to cover the entire dairy foods chain is a major strength. Cross-disciplinary research is particularly welcomed, as is comparative lactation research in different dairy and non-dairy species and research dealing with consumer health aspects of dairy products. Journal of Dairy Research: an international Journal of the lactation sciences.
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