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Texture classification using neural networks and discrete wavelet transform

机译:使用神经网络和离散小波变换的纹理分类

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Describes a method for classifying textured images using neural networks and discrete wavelet transform (DWT). In this method, a multiresolution analysis is applied to textured images to extract a set of intelligible features. These extracted features, in the form of DWT coefficient matrices, are used as inputs to four different multilayer perceptron (MLP) neural networks and classified. Generalization performance is improved when a locally connected, weight-sharing network topology is utilized, thus drastically decreasing the number of free parameters during training. This architecture takes advantage of the quasi-periodic nature of the textured images. A novel voting network scheme is also employed to achieve a system classification result from the four networks. The efficacy of the algorithm is demonstrated using real-world textured images.
机译:描述使用神经网络和离散小波变换(DWT)对纹理图像进行分类的方法。在该方法中,将多分辨率分析应用于纹理图像以提取一组可懂的功能。这些提取的特征,以DWT系数矩阵的形式用作四个不同的多层Perceptron(MLP)神经网络的输入和分类。当使用局部连接的重量共享网络拓扑时,泛化性能得到改善,从而大大降低了训练期间的自由参数的数量。该架构利用纹理图像的准周期性性质。还采用了一种新的投票网络方案来实现来自四个网络的系统分类结果。使用真实世界的纹理图像来证明算法的功效。

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