Abstract

This paper presents a novel approach to microcalcification clusters (MCs) detection in mammograms based on the discriminant subspace learning. The ground truth of MCs in mammograms is assumed to be known as a priori. Several typical subspace learning algorithms, such as principal component analysis (PCA), linear discriminant analysis (LDA), tensor subspace analysis (TSA) and general tensor discriminant Analysis (GTDA), are employed to extract subspace features. In subspace feature domain, the MCs detection procedure is formulated as a supervised learning and classification problem, and SVM is used as a classifier to make decision for the presence of MCs or not. A large number of experiments are carried out to evaluate and compare the performance of the proposed MCs detection algorithms. The experiment result suggests that correlation filters is a promising technique for MCs detection.

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