Automatic classification of breeds of dog using convolutional neural network

P.O. Adejumobi, I.O. Adejumobi, O.A. Adebisi, S.O. Ayanlade, I.I. Adeaga
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Abstract

Dog is a mammal that has been a friend of man for ages, it is naturally a domestic animal with a high level of phenotype differences in behaviour and morphology. Breeding and crossbreeding activities have increased the number of dog breeds globally, thereby resulting in dogs with inter breed similarities and intra breed differences thereby creating a difficulty in their classification. The American Kennel Club (AKC) classified breeds of dog into groups based on characteristic, purpose, behaviuor and uses in order to optimize the potentials in the breeds. However, most people find it difficult to identify and classify the dog breed groups. Existing works did not consider the automatic grouping of dog breeds. Hence, there is need for automatic techniques to classify dog breeds into groups with improved accuracy. This work used the concept of Convolutional Neural Network (CNN) to develop a model that will automatically classify dog breeds into group based on the American Kennel Club standard using the Stanford’s dog dataset. The developed model achieved 92.2% accuracy, 80.0% sensitivity, 95.3% specificity and 93.4% area under curve (AUC). The model’s performance is excellent compared to existing works that used the same dataset. The experimental result was validated with two classic CNN models (ResNet-50 and SqueezeNet) using the same parameters.
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基于卷积神经网络的犬种自动分类
狗是一种哺乳动物,多年来一直是人类的朋友,它自然是一种家畜,在行为和形态上具有很高的表型差异。育种和杂交活动增加了全球犬种的数量,从而导致犬种间的相似性和犬种内的差异性,从而给犬种分类带来了困难。美国养犬俱乐部(AKC)根据狗的特点、用途、行为和用途将狗的品种分类,以优化品种的潜力。然而,大多数人发现很难识别和分类狗的品种群。现有的工作没有考虑犬种的自动分组。因此,有必要采用自动技术来提高犬种分类的准确性。这项工作使用卷积神经网络(CNN)的概念开发了一个模型,该模型将使用斯坦福大学的狗数据集,根据美国养犬俱乐部的标准,自动将狗的品种分类。该模型准确率为92.2%,灵敏度为80.0%,特异性为95.3%,曲线下面积(AUC)为93.4%。与使用相同数据集的现有研究相比,该模型的性能非常出色。用两个经典的CNN模型(ResNet-50和SqueezeNet)使用相同的参数对实验结果进行验证。
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来源期刊
Nigerian Journal of Technological Development
Nigerian Journal of Technological Development Engineering-Engineering (miscellaneous)
CiteScore
1.00
自引率
0.00%
发文量
40
审稿时长
24 weeks
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