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Image Texture Classification Using Wavelet Based Curve Fitting and Probabilistic Neural Network

机译:基于小波曲线拟合和概率神经网络的图像纹理分类

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This article describes a new approach for image texture classification based on curve fitting of wavelet domain singular values and probabilistic neural networks. Image textures are wavelet packet transformed and singular value decomposition is then employed on subband coefficient matrices after introducing non-linearity. Lower singular values are truncated based on energy distribution to effectively classify textures in the presence of noise. The selected singular values are fitted to the exponential curve. The model parameters are estimated using population-sample analogues method and the parameters are used for performing classification. A modified form of probabilistic neural network (PNN) called weighted PNN (WPNN) is employed for performing the classification. Compared to probabilistic neural network, WPNN includes weighting factors between pattern layer and summation layer of the PNN. Performance of the approach is compared with model based and feature based methods in terms of signal to noise ratio and classification rate. Experimental results prove that the proposed approach gives better classification rate under noisy environment.
机译:本文介绍了一种基于小波域奇异值的曲线拟合和概率神经网络的图像纹理分类新方法。对图像纹理进行小波包变换,然后在引入非线性之后对子带系数矩阵进行奇异值分解。根据能量分布将较低的奇异值截断,以在存在噪声的情况下有效地对纹理进行分类。所选的奇异值将拟合到指数曲线。使用总体样本类似物方法估算模型参数,并使用这些参数进行分类。改进的概率神经网络(PNN)形式称为加权PNN(WPNN)用于执行分类。与概率神经网络相比,WPNN包含PNN的模式层和求和层之间的加权因子。在信噪比和分类率方面,将该方法的性能与基于模型和基于特征的方法进行了比较。实验结果证明,该方法在噪声环境下具有较好的分类率。

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