Breakthrough Conventional Based Approach for Dog Breed Classification Using CNN with Transfer Learning

Punyanuch Borwarnginn, Kittikhun Thongkanchorn, Sarattha Kanchanapreechakorn, Worapan Kusakunniran
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引用次数: 22

Abstract

Dogs are one of the most common domestic animals. Due to a large number of dogs, there are several issues such as population control, decrease outbreak such as Rabies, vaccination control, and legal ownership. At present, there are over 180 dog breeds. Each dog breed has specific characteristics and health conditions. In order to provide appropriate treatments and training, it is essential to identify individuals and their breeds. The paper presents the classification methods for dog breed classification using two image processing approaches 1) conventional based approaches by Local Binary Pattern (LBP) and Histogram of Oriented Gradient (HOG) 2) the deep learning based approach by using convolutional neural networks (CNN) with transfer learning. The result shows that our retrained CNN model performs better in classifying a dog breeds. It achieves 96.75% accuracy compared with 79.25% using the HOG descriptor.
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基于迁移学习的CNN犬种分类突破传统方法
狗是最常见的家畜之一。由于狗的数量众多,有几个问题,如人口控制,减少爆发,如狂犬病,疫苗接种控制和合法所有权。目前,中国有180多个犬种。每个品种的狗都有特定的特点和健康状况。为了提供适当的治疗和训练,必须确定个体及其品种。本文提出了基于两种图像处理方法的犬种分类方法:1)基于传统的基于局部二值模式(LBP)和定向梯度直方图(HOG)的分类方法;2)基于深度学习的基于卷积神经网络(CNN)的迁移学习分类方法。结果表明,我们重新训练的CNN模型在分类狗的品种方面表现更好。它的准确率达到96.75%,而使用HOG描述符的准确率为79.25%。
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