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A Deep Learning Approach for Dog Face Verification and Recognition

机译:狗面验证和识别的深度学习方法

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Recently, deep learning methods for biometrics identification have mainly focused on human face identification and have proven their efficiency. However, little research have been performed on animal biometrics identification. In this paper, a deep learning approach for dog face verification and recognition is proposed and evaluated. Due to the lack of available datasets and the complexity of dog face shapes this problem is harder than human identification. The first publicly available dataset is thus composed, and a deep convolutional neural network coupled with the triplet loss is trained on this dataset. The model is then evaluated on a verification problem, on a recognition problem and on clustering dog faces. For an open-set of 48 different dogs, it reaches an accuracy of 92% on a verification task and a rank-5 accuracy of 88% on a one-shot recognition task. The model can additionally cluster pictures of these unknown dogs. This work could push zoologists to further investigate these new kinds of techniques for animal identification or could help pet owners to find their lost animal. The code and the dataset of this project are publicly available.
机译:最近,生物识别的深度学习方法主要集中在人脸上,并证明了他们的效率。然而,对动物生物识别识别进行了很少的研究。在本文中,提出并评估了狗面验证和识别的深度学习方法。由于缺乏可用的数据集和狗脸形状的复杂性,这个问题比人类识别更难。因此,第一个公开的数据集因此组成,并且在该数据集中培训了与三重态丢失耦合的深度卷积神经网络。然后在识别问题和聚类狗面上进行验证问题进行评估该模型。对于48个不同的狗的开放式,它在验证任务上达到92%的准确性,并且在一次识别任务上的秩-5准确度为88%。该模型可以另外还可以纳入这些未知狗的图片。这项工作可以推动动物学家进一步调查这些新型的动物识别技术,或者可以帮助宠物主人找到失去的动物。该项目的代码和数据集是公开可用的。

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