Abstract

Simple SummaryVisual identification of cattle in a realistic farming environment is helpful for real-time cattle monitoring. Based on continuous cattle detection, identification, and behavior recognition, it is possible to utilize cameras on farms within company or government networks to provide the services of production supervision, early disease detection, and animal science research for precision livestock farming. However, cattle identification in the wild is still a difficult problem due to the high similarities of different identities and the variances of the same identity as posture or perspective changes. Our proposed method based on deep convolutional neural networks and deep metric learning provides a promising approach for cattle identification and paves the way toward continuous monitoring of cattle in a nearly natural state.Visual identification of cattle in the wild provides an essential way for real-time cattle monitoring applicable to precision livestock farming. Chinese Simmental exhibit a yellow or brown coat with individually characteristic white stripes or spots, which makes a biometric identifier for identification possible. This work employed the observable biometric characteristics to perform cattle identification with an image from any viewpoint. We propose multi-center agent loss to jointly supervise the learning of DCNNs by SoftMax with multiple centers and the agent triplet. We reformulated SoftMax with multiple centers to reduce intra-class variance by offering more centers for feature clustering. Then, we utilized the agent triplet, which consisted of the features and the agents, to enforce separation among different classes. As there are no datasets for the identification of cattle with multi-view images, we created CNSID100, consisting of 11,635 images from 100 Chinese Simmental identities. Our proposed loss was comprehensively compared with several well-known losses on CNSID100 and OpenCows2020 and analyzed in an engineering application in the farming environment. It was encouraging to find that our approach outperformed the state-of-the-art models on the datasets above. The engineering application demonstrated that our pipeline with detection and recognition is promising for continuous cattle identification in real livestock farming scenarios.

Highlights

  • This article is an open access articleChinese Simmental, native to Switzerland, are the cattle mainly farmed in China due to their comprehensive performance in milk and meat production [1]

  • To show the performance of our proposed multi-center agent loss, a series of experiments was conducted to compare with the triplet loss [18], ArcFace [24], and Softtriple loss [26] on our CNSID100 database and SoftMax-based reciprocal triplet loss on the

  • The Deep Convolutional Neural Networks (DCNNs) backbone architecture used in our work was ResNet50 [28], with weights pretrained on ImageNet [29]

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Summary

Introduction

This article is an open access articleChinese Simmental, native to Switzerland, are the cattle mainly farmed in China due to their comprehensive performance in milk and meat production [1]. Observable biometric identifiers for cattle, including the muzzle [4,5,6], iris image [7,8], retina vascular patterns [9], and coat pattens [10,11,12,13,14,15], promote cattle identification technology from the semi-automated to automated stage. Chinese Simmental exhibit a yellow or brown coat with intrinsic white stripes or spots on the head, body, limbs, and tails, which is visually akin to those generated from Turing’s reaction–diffusion systems. This coat pattern makes it possible to identify cattle individuals from any viewpoint. Compared with the current use of biometric features, this work utilized the coat patten of Chinese

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