Laishram Menalsh, Mandal Satyendra Nath, Haldar Avijit, Das Shubhajyoti, Bera Santanu, Samanta Rajarshi
Department of Livestock Production Management, West Bengal University of Animal and Fishery Sciences, Kolkata700037, West Bengal, India.
Department of Information Technology, Kalyani Government Engineering College, Kalyani, Nadia- 741235, West Bengal, India.
Anim Biosci. 2023 Jun;36(6):980-989. doi: 10.5713/ab.22.0157. Epub 2022 Nov 14.
Iris pattern recognition system is well developed and practiced in human, however, there is a scarcity of information on application of iris recognition system in animals at the field conditions where the major challenge is to capture a high-quality iris image from a constantly moving non-cooperative animal even when restrained properly. The aim of the study was to validate and identify Black Bengal goat biometrically to improve animal management in its traceability system.
Forty-nine healthy, disease free, 3 months±6 days old female Black Bengal goats were randomly selected at the farmer's field. Eye images were captured from the left eye of an individual goat at 3, 6, 9, and 12 months of age using a specialized camera made for human iris scanning. iGoat software was used for matching the same individual goats at 3, 6, 9, and 12 months of ages. Resnet152V2 deep learning algorithm was further applied on same image sets to predict matching percentages using only captured eye images without extracting their iris features.
The matching threshold computed within and between goats was 55%. The accuracies of template matching of goats at 3, 6, 9, and 12 months of ages were recorded as 81.63%, 90.24%, 44.44%, and 16.66%, respectively. As the accuracies of matching the goats at 9 and 12 months of ages were low and below the minimum threshold matching percentage, this process of iris pattern matching was not acceptable. The validation accuracies of resnet152V2 deep learning model were found 82.49%, 92.68%, 77.17%, and 87.76% for identification of goat at 3, 6, 9, and 12 months of ages, respectively after training the model.
This study strongly supported that deep learning method using eye images could be used as a signature for biometric identification of an individual goat.
虹膜模式识别系统在人类中已得到充分发展和应用,然而,在野外条件下,关于虹膜识别系统在动物中的应用信息却很少,其中主要挑战是即使在动物被妥善约束的情况下,也要从不断移动的不合作动物身上获取高质量的虹膜图像。本研究的目的是通过生物特征识别来验证和识别黑孟加拉山羊,以改善其可追溯系统中的动物管理。
在农民的田地里随机挑选了49只健康、无病、3个月±6天大的雌性黑孟加拉山羊。使用专门用于人类虹膜扫描的相机,在山羊3、6、9和12月龄时从其左眼采集眼部图像。使用iGoat软件对3、6、9和12月龄的同一只山羊进行匹配。Resnet152V2深度学习算法进一步应用于相同的图像集,仅使用捕获的眼部图像而不提取虹膜特征来预测匹配百分比。
山羊内部和之间计算的匹配阈值为55%。3、6、9和12月龄山羊模板匹配的准确率分别记录为81.63%、90.24%、44.44%和16.66%。由于9和12月龄山羊的匹配准确率较低且低于最低阈值匹配百分比,因此这种虹膜模式匹配过程是不可接受的。在对模型进行训练后,发现Resnet152V2深度学习模型对3、6、9和12月龄山羊识别的验证准确率分别为82.49%、92.68%、77.17%和87.76%。
本研究有力地支持了使用眼部图像的深度学习方法可作为个体山羊生物特征识别的一种特征。