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Combining CRF and Multi-hypothesis Detection for Accurate Lesion Segmentation in Breast Sonograms

机译:结合CRF和多假设检测对乳腺超声图像进行准确的病变分割

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The implementation of lesion segmentation for breast ultrasound image relies on several diagnostic rules on intensity, texture, etc. In this paper, we propose a novel algorithm to achieve a comprehensive decision upon these rules by incorporating image over-segmentation and lesion detection in a pairwise CRF model, rather than a term-by-term translation. Multiple detection hypotheses are used to propagate object-level cues to segments and a unified classifier is trained based on the concatenated features. The experimental results show that our algorithm can avoid the drawbacks of separate detection or bottom-up segmentation, and can deal with very complicated cases.
机译:乳房超声图像病变分割的实现依赖于强度,纹理等多个诊断规则。在本文中,我们提出了一种新颖的算法,通过将图像过度分割和病变检测成对地结合在一起,可以对这些规则做出全面的决策。 CRF模型,而不是逐项翻译。多个检测假设用于将对象级别的提示传播到片段,并基于连接的特征训练统一的分类器。实验结果表明,该算法可以避免单独检测或自底向上分割的弊端,可以处理非常复杂的情况。

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