Classification of endoscopie images using support vector machines

D. Surangsrirat, M. Tapia, Weizhao Zhao
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引用次数: 4

Abstract

This paper presents an application of support vector machines (SVMs) to mu I ti class problem in endoscopie image classification. Many studies have reported that SVMs have met with success in the texture classification problem. As an endoscopie image poses rich information expressed by texture features, we therefore investigate the potential of SVMs in this task. Strategy for multiclass problem based on an ensemble of binary classifiers is also implemented since the traditional SVMs algorithm deals with single label classification problems. The proposed scheme demonstrated an excellent classification result for multiclass problem in endoscopie image classification. We also show how a distortion correction helps further improve the results.
内窥镜图像的支持向量机分类
提出了支持向量机(svm)在内窥镜图像分类中的应用。许多研究报道支持向量机在纹理分类问题上取得了成功。由于内窥镜图像具有通过纹理特征表达的丰富信息,因此我们研究支持向量机在该任务中的潜力。由于传统的支持向量机算法处理的是单标签分类问题,本文还实现了基于二分类器集成的多类问题处理策略。该方法对内镜图像分类中的多类问题具有很好的分类效果。我们还展示了失真校正如何有助于进一步改善结果。
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