奶牛飞节伤自动检测。

W. Flanders , P.S. Basran , M. Wieland
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引用次数: 0

摘要

奶牛的飞节评分是一种重要的福利评估工具,用于评估奶牛的飞节状况,特别是受伤、肿胀或病变的迹象。这些分数提供了对动物整体健康状况的洞察,对于确保适当的管理和住房条件至关重要。准确的飞节评分是至关重要的,因为它可以表明诸如床上用品质量差或空间不足等问题,这些问题直接影响畜群的健康和生产力。传统上,飞节评分是由训练有素的观察员手动完成的。然而,得分的一致性可能是一个挑战。进行了两项研究来量化飞节评分的不一致性。在一项研究中,测量了人工评分的可重复性。在第二项研究中,测量了手工和视频评分的重复性。用加权的科恩卡帕度量来量化重复性。人工评分被发现不一致,但比视频评分更一致。这种可变性突出了需要一种更可靠、更客观的评分方法。为了解决这个问题,我们使用人工智能探索了典当分数检测的自动化。具体来说,我们采用了一种简单的U-net语义分割算法来检测飞节上的伤口,而不将它们分类到特定的类别中。自动化检测过程可以减少观察者的偏见,提高一致性,并允许对大型畜群进行连续监测。这种方法通过提供一种更有效和准确的评估奶牛跗关节健康的方法,有望提高动物福利。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automating hock wound detection in dairy cattle
Hock scoring in dairy cattle is a crucial welfare assessment tool used to evaluate the condition of a cow's hocks, particularly for signs of injury, swelling, or lesions. These scores provide insight into the overall well-being of the animals and are essential for ensuring proper management and housing conditions. Accurate hock scoring is vital because it can indicate issues such as poor bedding quality or inadequate space, which directly affect the health and productivity of the herd. Traditionally, hock scoring is performed manually by trained observers. However, consistency in scoring can be a challenge. Two studies were conducted to quantify inconsistency in hock scoring. In one study, manual scoring reproducibility was measured. In the second study, manual and video scoring repeatability was measured. Repeatability was quantified with a weighted Cohen's kappa metric. Manual scoring was found to be inconsistent but more consistent than video scoring. This variability highlights the need for a more reliable, objective method of scoring. To address this, we explored the automation of hock score detection using artificial intelligence. Specifically, we employed a simple U-net semantic segmentation algorithm to detect wounds on the hocks without classifying them into specific categories. Automating the detection process can reduce observer bias, improve consistency, and allow for continuous monitoring of large herds. This approach holds promise for enhancing animal welfare by providing a more efficient and accurate method of assessing hock health in dairy cattle.
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来源期刊
JDS communications
JDS communications Animal Science and Zoology
CiteScore
2.00
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