基于人脸识别的犬种分类方法

M. Chanvichitkul, P. Kumhom, K. Chamnongthai
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引用次数: 12

摘要

狗的品种分类或鉴定对狗的训练和治疗很重要。传统的识别方法是基于专家的,很难找到。本文提出了一种基于狗脸图像的犬种分类方法。该方法基于粗到细的概念,利用模板匹配技术将图像粗分类为5组。然后,在每一组中,应用主成分分析(PCA)对犬种进行精细分类。在基于PCA的分类中,人脸特征是用权重向量表示的。每个犬种的一组样本图像被用来学习犬种的特征。将粗分类后的平均权重向量存储为品种特征模板。在粗分类后的运行时间内,对狗脸图像进行主成分分析,求其向量表示。然后将此向量与数据库中每个品种的特征模板进行比较。待测图像被分类为twp向量之间距离最小的品种。为了评估该方法的性能,对35个犬种的700张狗脸图像进行了实验。在测试前,使用每个品种的5张狗脸图像(共175张狗脸)来训练系统。实验表明,该方法(粗分类和PCA进行精细分类)的准确率约为93%,优于不加粗分类的基于PCA的分类器。改进幅度约为16%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Face recognition based dog breed classification using coarse-to-fine concept and PCA
Dog breed classification or identification is important for dog training, and curing. The conventional identification method is based on experts which is hard to find. This paper proposes a method to classify dog breed based on the dog face images. The proposed method is based on the coarse to fine concept, where the template matching technique is applied for coarsely classifying the images into 5 groups. Then, within each group, the principle component analysis (PCA) is applied to finely classifying the dog breed. In the PCA- based classification, face features are represented in term of a weight vector. A set of sample image of each dog breed are used for learning the features of the breed. The average weight vectors are stored as the templates of features for breeds after the coarse classification. During the running time after the coarse classification, a dog face image is passed through the PCA to find it vector representation. This vector will then be compared with feature template for each breed in the database. The image under test is classified as the breed that gives the minimum distance between the twp vectors. To evaluate the performance of the proposed method, experiments with 700 dog face images from 35 dog breeds had been performed. Before the testing, 5 dog face images from every breed (totally 175 dog faces) were used to train the system. The experiments showed that the proposed method (coarse classification and PCA for fine classification) gives approximately 93% accuracy which is better than the PCA-based classifier without the coarse classification. The improvement is 16% approximately.
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