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A New Content-Based Image Classification Method Using SVM-weight and Euclidean Distance

机译:支持向量机权重和欧氏距离的基于内容的图像分类新方法

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As the demands and usages for image classification and retrieval increase, the classification methods need to be improved to be more automatic and effective. The traditional text-based image classification fails to recognize the underlying content of image that would lead to misclassifying issue. In this paper, a new classification based on weighted Euclidean distance whereas the weights are estimated via Support Vector Machine (SVM) is proposed. To overcome the problem of misclassification and increase the classifier accuracy for some particular classes, the new classification method uses the weight set estimated from SVM, which is then applied to the Euclidean-based K-Nearest Neighbour (K-NN) method. The experiments have revealed the proposed method has an accuracy of 93.75% which is better than traditional classification such as K-NN and SVM. Moreover, the accuracy of the image feature vector has minimal impact on the accuracy of the method compare to other classifier. The SVM weighted K-NN classifier has provided a promising direction for criteria-based image retrieval.
机译:随着图像分类和检索的需求和用途的增加,需要改进分类方法以使其更加自动化和有效。传统的基于文本的图像分类无法识别图像的基本内容,这将导致错误分类问题。本文提出了一种基于加权欧几里得距离的新分类方法,而权重是通过支持向量机(SVM)进行估计的。为了克服分类错误的问题并提高某些特定类别的分类器准确性,新的分类方法使用从SVM估计的权重集,然后将其应用于基于欧几里得的K最近邻(K-NN)方法。实验表明,该方法具有93.75%的准确率,优于传统的分类方法如K-NN和SVM。此外,与其他分类器相比,图像特征向量的准确性对方法的准确性影响最小。 SVM加权K-NN分类器为基于标准的图像检索提供了有希望的方向。

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