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Pattern Classification for Dermoscopic Images Based on Structure Textons and Bag-of-Features Model

机译:基于结构纹理和特征包模型的皮肤镜图像模式分类

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An effective method of pattern classification for dermoscopic images based on structure textons and Bag-of-Features (BoFs) model is proposed in this paper. Firstly, the pattern structures of images were enhanced. Secondly, images with obvious directivity were rotated to align their principal directions with horizontal axis, and Otsu method was used to obtain interesting regions. The intensity values of each pixel in the interesting region and its neighborhood composed patch vector. For each pattern, patch vectors of training images were clustered to generate K structure textons and a dictionary with 5K elements was obtained. Then BoFs model was applied to obtain texton histograms for training and testing images respectively. Finally, a nearest neighbor classifier with chi-square distance was adopted to classify. The experimental results shows that our enhancement method is beneficial to pattern classification and correct classification rate achieves 91.87%.
机译:提出了一种基于结构纹理和特征袋(BoFs)模型的皮肤镜图像模式分类的有效方法。首先,增强了图像的图案结构。其次,旋转具有明显方向性的图像,使其主方向​​与水平轴对齐,然后使用Otsu方法获得有趣的区域。感兴趣区域中的每个像素及其邻域组成的斑块矢量的强度值。对于每种模式,将训练图像的斑块矢量聚类以生成K个结构纹理,并获得具有5K个元素的字典。然后使用BoFs模型分别获得训练和测试图像的直方图直方图。最后,采用卡方距离最近的邻居分类器进行分类。实验结果表明,我们的增强方法有利于模式分类,正确分类率达到91.87%。

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