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Automatic individual holstein friesian cattle identification via selective local coat pattern matching in RGB-D imagery

机译:通过在RGB-D图像中进行选择性局部皮毛匹配,自动识别荷斯坦黑白花牛

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摘要

The objective of this paper is the fully automated visual identification of individual Holstein Friesian cattle from dorsal RGB-D imagery taken in real-world farm environments. Autonomous and non-intrusive cattle identification could provide an essential tool for economically-viable machinised farming analytics, social monitoring, cattle traceability, food production management and more. We contribute a dataset and propose a system that can reliably derive animal identities from top-down stills by first depth-segmenting animals in RGB-D frames, and then extracting a subset of local ASIFT coat descriptors predicted as sufficiently individually distinctive across the species. Predictions are generated by a support vector machine (SVM) using radial basis function (RBF) kernels for predictions based on the ASIFT descriptor structure. We show that learning such a species-specific ID-model is effective, and we demonstrate robustness to poor or complex input image conditions such as more than one cow present, bad depth segmentation, etc. The proposed system yields 97% identification accuracy over testing on approximately 86,000 image pair comparisons covering a herd of 40 individuals from the FriesianCattle2015 Dataset.
机译:本文的目的是根据在真实农场环境中拍摄的背侧RGB-D图像对单个荷斯坦黑白花牛进行全自动视觉识别。自主和非侵入式的牛身份识别可以为经济可行的机械化农业分析,社会监测,牛可追溯性,食品生产管理等提供重要工具。我们提供了一个数据集,并提出了一个系统,该系统可以通过先在RGB-D帧中对动物进行深度细分,然后从子集中可靠地推导出动物身份,然后提取预测为在整个物种中具有足够独特性的局部ASIFT外套描述符子集。预测是由支持向量机(SVM)使用径向基函数(RBF)内核基于ASIFT描述符结构生成的。我们表明,学习这种特定于物种的ID模型是有效的,并且我们证明了对恶劣或复杂的输入图像条件(例如,多头母牛,深度分割不良等)的鲁棒性。拟议的系统在测试中的识别准确率达97%根据FriesianCattle2015数据集对约40个个体进行了约86,000个图像对比较。

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