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Image classification with the use of radial basis function neural networks and the minimization of the localized generalization error

机译:使用径向基函数神经网络进行图像分类和最小化局部泛化误差

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Image classification arises as an important phase in the overall process of automatic image annotation and image retrieval. In this study, we are concerned with the design of image classifiers developed in the feature space formed by low level primitives defined in the setting of the MPEG-7 standard. Our objective is to investigate the discriminatory properties of such standard image descriptors and look at efficient architectures of the classifiers along with their design pursuits. The generalization capabilities of an image classifier are essential to its successful usage in image retrieval and annotation. Intuitively, it is expected that the classifier should achieve high classification accuracy on unseen images that are quite "similar" to those occurring in the training set. On the other hand, we may assume that the performance of the classifier could not be guaranteed in the case of images that are very much dissimilar from the elements of the training set. To follow this observation, we develop and use a concept of the localized generalization error and show how it guides the design of the classifier. As image classifier, we consider the usage of the radial basis function neural networks (RBFNNs). Through intensive experimentation we show that the resulting classifier outperforms other classifiers such as a multi-class support vector machines (SVMs) as well as "standard" RBFNNs (viz. those developed without the guidance offered by the optimization of the localized generalization error). The experimental studies reveal some interesting interpretation abilities of the RBFNN classifiers being related with their receptive fields. (c) 2006 Pattern Recognition Society. Published by Elsevier Ltd. All rights reserved.
机译:在自动图像注释和图像检索的整个过程中,图像分类成为一个重要阶段。在这项研究中,我们关注在由MPEG-7标准的设置中定义的低级基元形成的特征空间中开发的图像分类器的设计。我们的目标是研究此类标准图像描述符的区别性,并研究分类器的有效架构及其设计追求。图像分类器的泛化功能对于其在图像检索和注释中的成功使用至关重要。直观地,期望分类器应该在与训练集中出现的图像“非常相似”的看不见的图像上实现高分类精度。另一方面,我们可以假设在图像与训练集的元素非常不同的情况下,无法保证分类器的性能。为了遵循此观察,我们开发并使用了局部化泛化误差的概念,并展示了其如何指导分类器的设计。作为图像分类器,我们考虑使用径向基函数神经网络(RBFNN)。通过深入的实验,我们证明了所得分类器的性能优于其他分类器,例如多类支持向量机(SVM)以及“标准” RBFNN(即那些未经优化的局部化泛化误差提供指导而开发的分类器)。实验研究表明,RBFNN分类器的一些有趣的解释能力与其接受域有关。 (c)2006模式识别学会。由Elsevier Ltd.出版。保留所有权利。

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