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An adaptive pig face recognition approach using Convolutional Neural Networks

机译:卷积神经网络的自适应猪脸识别方法

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The evolution of agriculture towards intensive farming leads to an increasing demand for animal identification associated with high traceability, driven by the need for quality control and welfare management in agricultural animals. Automatic identification of individual animals is an important step to achieve individualised care in terms of disease detection and control, and improvement of the food quality. For example, as feeding patterns can differ amongst pigs in the same pen, even in homogenous groups, automatic registration shows the most potential when applied to an individual pig. In the EU for instance, this capability is required for certification purposes. Although the RFID technology has been gradually developed and widely applied for this task, chip implanting might still be time-consuming and costly for current practical applications. In this paper, a novel framework composed of computer vision algorithms, machine learning and deep learning techniques is proposed to offer a relatively low-cost and scalable solution of pig recognition. Firstly, pig faces and eyes are detected automatically by two Haar feature-based cascade classifiers and one shallow convolutional neural network to extra high-quality images. Secondly, face recognition is performed by employing a deep convolutional neural network. Additionally, class activation maps generated by grad-CAM and saliency maps are utilised to visually understand how the discriminating parameters have been learned by the neural network. By applying the proposed approach on 10 randomly selected pigs filmed in farm condition, the proposed method demonstrates the superior performance against the state-of-art method with an accuracy of 83% over 320 testing images. The outcome of this study will facilitate the real-application of AI-based animal identification in swine production.
机译:由于农业动物质量控制和福利管理的需求,农业迈向集约化农业的发展导致了与高可追溯性相关的动物鉴定需求。自动识别个体动物是在疾病检测和控制方面实现个性化护理的重要步骤,以及提高食品质量。例如,由于饲养模式可以在同一笔中的猪中不同,即使在均匀的群体中,即使在均匀的群体中,施加到单个猪时的自动注册都显示出最潜力。例如,在欧盟中,该功能是认证目的所必需的。虽然RFID技术已逐步开发并广泛应用于此任务,但芯片植入仍可能耗时,并且对于当前的实际应用可能昂贵。本文提出了一种由计算机视觉算法,机器学习和深度学习技术组成的新颖框架,以提供相对低成本和可扩展的猪识别解决方案。首先,通过两个哈尔特征的级联分类器和一个浅卷积神经网络自动检测猪面和眼睛,以额外的高质量图像。其次,通过采用深度卷积神经网络来执行面部识别。另外,通过毕业凸轮和显着图产生的类激活图用于在视觉上了解神经网络如何学习辨别参数。通过在农场条件拍摄的10种随机选择的猪上应用所提出的方法,该方法通过320次测试图像的准确度展示了对最先进的方法的优异性能。本研究的结果将促进猪生产中基于AI的动物鉴定的实际应用。

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