基于生物特征的牛动物唯一识别-各种机器和深度学习计算机视觉方法的比较研究

Neel Patel, Harshal Jain, Vaibhav Sadashiv Lonkar, Dineshkumar Singh
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引用次数: 0

摘要

动物识别是计算机视觉、特征提取、认知科学和模式识别领域的一个不断扩展的研究领域。在人畜共患疾病的背景下,牛的识别已成为现代一个正在发展的研究领域,用于牲畜(牛)的登记、特征识别、验证、疾病暴发控制、生产管理、疫苗接种、所有权转让、保险索赔解决以及牲畜的可追溯性。在现有的使用计算机视觉的非侵入性方法中,本研究阐述了利用牛的口鼻点来区分它们的生物识别方法的基本实现。牛的口吻点特征可以被识别,就像人类指纹可以被识别到最微小的细节一样,以及我们如何产生独特的口吻特征来相互比较。我们回顾了各种方法,如SIFT算法、LBP匹配器方法和图像分类。研究表明,当需要使用基于枪口图像的关键点描述符来区分两只牛时,SIFT和LBP方法更适合。对于其他场景,图像分类方法给出了更好的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Biometric-based Unique Identification for Bovine Animals — Comparative Study of Various Machine and Deep Learning Computer Vision Methods
Animal recognition and identification is an expanding area of inquiry in computer vision, feature extraction, cognitive science, and pattern recognition. In the context of zoonotic diseases, cattle recognition has become an unfolding research field in modern times for registration, distinctive identification, verification of livestock (cattle), controlling outbreaks of diseases, production management, vaccination, assignment of ownership, settlement of insurance claims, and traceability of livestock. Out of the existing noninvasive methods using computer vision, this study illustrates the fundamental implementation of a cattle biometric method to distinguish them using its muzzle (snout) point. Cattle muzzle point characteristics may be recognized in a manner how a human fingerprint can be recognized down to the tiniest of details, and how we can generate unique muzzle signatures to compare with each other. We have reviewed various methods like SIFT algorithm, LBP matcher approach, and image classification. Our study concludes that when the need is to distinctly identify between two cattle using muzzle images-based key points descriptor, then SIFT and LBP approaches are more suitable. For other scenarios, the image classification method gives better results.
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