X-ray image classification using Random Forests with Local Binary Patterns

Seong-Hoon Kim, Ji-Hyun Lee, ByoungChul Ko, J. Nam
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引用次数: 30

Abstract

This paper presents a novel algorithm for the efficient classification of X-ray images to enhance the accuracy and performance. As for describing the characteristics of X-ray image, new Local Binary Patterns (LBP) is employed that allows simple and efficient feature extraction for texture information. To achieve fast and accurate classification task, Random Forests that is decision tree based ensemble classifier is applied. Comparing with other feature descriptors and classifiers, the testing results show that the proposed method improves accuracy, especially the speed for either training or testing.
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基于局部二值模式的随机森林x射线图像分类
为了提高x射线图像的分类精度和性能,提出了一种新的x射线图像分类算法。在描述x射线图像的特征时,采用了新的局部二值模式(Local Binary Patterns, LBP),对纹理信息进行简单高效的特征提取。为了实现快速准确的分类任务,采用了基于决策树的集成分类器随机森林。与其他特征描述符和分类器相比,测试结果表明该方法提高了准确率,特别是训练和测试的速度。
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