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Bayesian texture classification and retrieval based on multiscale feature vector

机译:基于多尺度特征向量的贝叶斯纹理分类与检索

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This paper proposes a supervised multiscale Bayesian texture classifier. The classifier exploits the dual-tree complex wavelet transform (DT-CWT) to obtain complex-valued multiscale representations of training texture samples for each texture class. The high-pass subbands of DT-CWT decomposition of a texture image are used to form a multiscale feature vector representing magnitude and phase features. For computational efficiency, the dimensionality of feature vectors is reduced using principal component analysis (PCA). The class conditional probability density function of low-dimensional feature vectors for each texture class is then estimated by using Parzen-window estimate with identical Gaussian kernels and is used to represent the texture class. A query texture image is classified as the correspond-ing texture class with the highest a posteriori probability according to a Bayesian inferencing. The superior performance and robustness of the proposed classifier is demonstrated for classifying texture images from image databases. The proposed multiscale texture feature vector extracted from both magnitude and phase of DT-CWT subbands of a query image is also shown to be effective for texture retrieval.
机译:提出了一种监督多尺度贝叶斯纹理分类器。分类器利用双树复数小波变换(DT-CWT)为每个纹理类别获取训练纹理样本的复数值多尺度表示。纹理图像的DT-CWT分解的高通子带用于形成表示幅度和相位特征的多尺度特征向量。为了提高计算效率,使用主成分分析(PCA)可以减少特征向量的维数。然后,通过使用具有相同高斯核的Parzen窗口估计来估计每个纹理类的低维特征向量的类条件概率密度函数,并将其用于表示纹理类。根据贝叶斯推断,将查询纹理图像分类为后验概率最高的对应纹理类。证明了所提出的分类器的优越性能和鲁棒性,用于对来自图像数据库的纹理图像进行分类。从查询图像的DT-CWT子带的幅度和相位中提取的多尺度纹理特征向量也被证明对纹理检索有效。

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