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通过开源卷积神经网络检测屠宰猪的耳部病变

Detecting ear lesions in slaughtered pigs through open-source convolutional neural networks.

作者信息

D'Angelo Matteo, Sciota Domenico, Romano Anastasia, Rosamilia Alfonso, Guarnieri Chiara, Cecchini Chiara, Olivastri Alberto, Marruchella Giuseppe

机构信息

Department of Bioscience and Agro-Food and Environmental Technology, University of Teramo, Via R. Balzarini, 64100, Teramo, Italy.

Department of Veterinary Medicine, University of Teramo, Loc. Piano d'Accio, 64100, Teramo, Italy.

出版信息

Porcine Health Manag. 2025 May 23;11(1):29. doi: 10.1186/s40813-025-00442-9.

Abstract

BACKGROUND

Ear biting is a damaging behavior of pigs, likely triggered by a genetic predisposition, previous health issues and/or poor environmental conditions. The accurate assessment of animal health and welfare relies on the systematic gathering of data about animals, resources and management. In this respect, slaughterhouse surveys offer valuable insights, as distinct tail and skin lesions can act as 'iceberg' parameters, suitable to estimate welfare during the entire animals' lifecycle. However, the routine recording of lesions is often costly and time-consuming, making it unfeasible in high-throughput abattoirs. This study aims to train open-source convolutional neural networks for detecting ear biting lesions in slaughtered pigs, as a pre-requisite for a systematic and cost-effective welfare monitoring.

RESULTS

A total of 3,140 pictures were employed to train and test open-source convolutional neural networks. Investigations were carried out by three veterinarians, who agreed to assess porcine ears using a simplified method, to minimize inter-observers' variability and to facilitate the convolutional neural networks' training: a) healthy auricles (label 0); deformed auricles displaying alterations in their contour due to real lesions (label 1); postmortem artefacts due to slaughtering (label 2). The entire dataset (training set and test set) was evaluated by one observer, while a supplementary set of 150 pictures was assessed by all veterinarians. Overall, the agreement among observers was very high (Cohen's kappa coefficient > 0.88). Moreover, convolutional neural networks' performances appeared suitable when compared with veterinarians: overall accuracy 0.89, specificity 0.96, sensitivity 0.86, agreement with each individual observer 0.79 (Cohen's kappa coefficient).

CONCLUSIONS

Open-source convolutional neural networks can achieve good performances, especially when the task is strictly defined and rather easy. Valuable experiences are being gathered about the routine application of artificial intelligence-powered tools in pig abattoirs. We consider that such tools will likely enable the systematic collection of data, addressing the distinct needs of stakeholders in a cost-effective manner.

摘要

背景

咬耳是猪的一种有害行为,可能由遗传易感性、先前的健康问题和/或恶劣的环境条件引发。对动物健康和福利的准确评估依赖于系统收集有关动物、资源和管理的数据。在这方面,屠宰场调查提供了有价值的见解,因为不同的尾巴和皮肤损伤可作为“冰山”参数,适用于估计动物整个生命周期的福利状况。然而,损伤的常规记录通常成本高且耗时,这使得在高通量屠宰场中不可行。本研究旨在训练开源卷积神经网络以检测屠宰猪的咬耳损伤,作为系统且具成本效益的福利监测的先决条件。

结果

总共使用3140张图片来训练和测试开源卷积神经网络。由三名兽医进行调查,他们同意使用一种简化方法评估猪耳,以尽量减少观察者间的变异性并便于卷积神经网络的训练:a)健康耳廓(标签0);因实际损伤导致轮廓改变的变形耳廓(标签1);屠宰造成的死后假象(标签2)。整个数据集(训练集和测试集)由一名观察者评估,而一组150张补充图片由所有兽医评估。总体而言,观察者之间的一致性非常高(科恩kappa系数>0.88)。此外,与兽医相比,卷积神经网络的表现似乎合适:总体准确率0.89,特异性0.96,敏感性0.86,与每位个体观察者的一致性为0.79(科恩kappa系数)。

结论

开源卷积神经网络可以取得良好的表现,特别是当任务严格定义且相对简单时。关于人工智能驱动工具在猪屠宰场的常规应用正在积累宝贵经验。我们认为此类工具可能会实现数据的系统收集,以具有成本效益的方式满足利益相关者的不同需求。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/5255/12102859/ea7ce925fdf8/40813_2025_442_Fig1_HTML.jpg

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