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A fusion neural network classifier for image classification

机译:用于图像分类的融合神经网络分类器

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Neural networks have been commonly used for image classification problems by fusing input features extracted from multiple MPEG-7 descriptors. It is because they can provide better performance than those extracted from single descriptor. However the input feature dimension can be various according to MPEG-7 descriptors. Usually input features with large dimension are dominant over those with small dimension for generating outputs of the neural networks, even though their contribution to output is almost same. In order to solve the problem, we propose a fusion neural network classifier which divides each descriptor by the number of its input features. And we consider the importance of the input features in each descriptor during training the classifier. In the experimental section, we showed the analysis of our method and compared the performance of sports image classification with conventional neural network classifier, using six classes of sports images collected on the Internet.
机译:通过融合从多个MPEG-7描述符提取的输入特征,神经网络已普遍用于图像分类问题。这是因为它们可以提供比从单个描述符中提取的性能更好的性能。但是,输入特征尺寸可以根据MPEG-7描述符而变化。通常,大尺寸的输入特征比小尺寸的输入特征在生成神经网络输出时要占优势,即使它们对输出的贡献几乎相同。为了解决该问题,我们提出了一种融合神经网络分类器,该分类器将每个描述符除以其输入特征的数量。并且我们在训练分类器时考虑了每个描述符中输入特征的重要性。在实验部分,我们展示了我们的方法的分析,并使用Internet上收集的六类运动图像将运动图像分类的性能与常规神经网络分类器进行了比较。

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