Stochastic model and probabilistic decision-based classifier for mass detection in digital mammography

Huai Li, K. J. Liu, S. Lo, Y. Wang
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引用次数: 3

Abstract

We have developed a combined method utilizing morphological operations, a finite generalized Gaussian mixture (FGGM) modeling, and a contextual Bayesian relaxation labeling technique (CBRL) to enhance and extract suspicious masses. A feature space is constructed based on multiple feature extraction from the regions of interest (ROIs). Finally, a multi-modular probabilistic decision-based classifier is employed to distinguish true masses from non-masses.
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基于随机模型和概率决策的数字乳房x线肿块检测分类器
我们开发了一种组合方法,利用形态学操作,有限广义高斯混合(FGGM)建模和上下文贝叶斯松弛标记技术(CBRL)来增强和提取可疑肿块。从感兴趣区域(roi)中提取多个特征,构建特征空间。最后,采用基于多模概率决策的分类器来区分真质量和非质量。
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Computer Analysis of Images and Patterns: 19th International Conference, CAIP 2021, Virtual Event, September 28–30, 2021, Proceedings, Part I Computer Analysis of Images and Patterns: 19th International Conference, CAIP 2021, Virtual Event, September 28–30, 2021, Proceedings, Part II Computer Analysis of Images and Patterns: CAIP 2019 International Workshops, ViMaBi and DL-UAV, Salerno, Italy, September 6, 2019, Proceedings Computer Analysis of Images and Patterns: 18th International Conference, CAIP 2019, Salerno, Italy, September 3–5, 2019, Proceedings, Part I Computer Analysis of Images and Patterns: 18th International Conference, CAIP 2019, Salerno, Italy, September 3–5, 2019, Proceedings, Part II
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