基于拓扑纹理的乳腺超声图像肿块检测方法

F. Zhao, Xiaoxing Li, S. Biswas, R. Mullick, Paulo R. S. Mendonça, V. Vaidya
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引用次数: 6

摘要

纹理分析在许多图像处理任务中起着重要的作用。在这项工作中,我们提出了一种基于偏移集拓扑的纹理描述子,该描述子来源于Minkowski泛函的概念,并评估了它们在二维乳房超声图像中检测乳房肿块的有用性。该应用包括三个主要阶段:预处理,包括在Fisher-Tippet噪声模型下通过计算梯度浓度生成候选值(这也是本文的另一个贡献);纹理特征提取;使用随机森林分类器进行区域分类。在135张具有139个质量的二维BUS图像上对该方法进行了性能评估。我们的方法达到91%的灵敏度,平均错误检测为1.19,并且所提出的纹理特征在完全相同的任务上优于常用的灰度共生矩阵。
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Topological texture-based method for mass detection in breast ultrasound image
Texture analysis plays an important role in many image processing tasks. In this work, we present a texture descriptor based on the topology of excursion sets, derived from the concept of Minkowski functionals, and evaluate their usefulness in the detection of breast masses in 2D breast ultrasound images. The application includes three major stages: preprocessing, including candidate generation through computation of gradient concentration under a Fisher-Tippet noise model (in itself another contribution of the paper); texture feature extraction; and region classification using a Random Forests classifier. Performance of the proposed method is evaluated on 135 2D BUS images with 139 masses. Our method reaches 91% sensitivity with an averaged 1.19 false detections, and the proposed texture feature compares favorably against the often-used grey level co-occurrence matrices on the exact the same task.
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