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Combining Gaussian Markov random fields with the discrete-wavelet transform for endoscopic image classification

机译:将Gaussian Markov随机字段与离散小波变换相结合,用于内窥镜图像分类

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In this work we present a method for automated classification of endoscopic images according to the pit pattern classification scheme. Images taken during colonoscopy are transformed to the wavelet domain using the pyramidal discrete wavelet transform. Then, Gaussian Markov random fields are used to extract features from the resulting wavelet coefficients. Finally, these features are used for a classification using the k-NN classifier and the Bayes classifier. To enhance the classification results feature subset selection is used to reduce the dimensionality of the features. Apart from that, directional neighborhoods for the Markov random fields are introduced. These are exploiting the orientation of the details within the wavelet detail subbands with the goal of further improving the classification performance. The experimental results show that an automated classification using the presented method is feasible.
机译:在这项工作中,我们提出了一种根据凹坑图案分类方案自动分类内窥镜图像的方法。在结肠镜检查期间拍摄的图像使用金字塔透视小波变换转换为小波域。然后,Gaussian Markov随机字段用于从得到的小波系数中提取特征。最后,这些功能用于使用K-NN分类器和贝叶斯分类器的分类。为了增强分类结果,使用子集选择用于减少特征的维度。除此之外,引入了马尔可夫随机字段的方向邻域。这些是利用小波细节子带内细节的方向,其目标是进一步提高分类性能。实验结果表明,使用所提出的方法自动分类是可行的。

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