Bag-of-Features Based Classification of Breast Parenchymal Tissue in the Mammogram via Jointly Selecting and Weighting Visual Words

Image and Graphics(2011)

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摘要
Automatically classifying the tissues types of region of interest (ROI) in medical imaging has been a important application in computer-aided diagnosis, such as classification of breast parenchymal tissue in the mammogram. Recently, bag-of-features method has show its power in this field, treating each medical image as a set of local features. In this paper, we investigate using the bag-of-features strategy to classify the tissue types in medical imaging applications. Two important issues are considered here: the visual vocabulary learning and weighting. Although there are already plenty of algorithms to deal with them, all of them treat them independently, namely, the vocabulary learned first and then the histogram weighted. Inspired by Auto-Context who learns the features and classier jointly, we try to develop a novel algorithm who learns the vocabulary and weights jointly. The new algorithm, called Joint-ViVo, works in a iterative way. In each iteration, we first learn the weights for each visual word by maximizing the margin of ROI triplets, and then based on the learned weights, we select the most discriminate visual words for the next iteration. We test our algorithm by classifying breast tissue density in mammograms. The results show that Joint-ViVo can perform effectively for classifying tissues and support the idea that vocabulary should be learned jointly with the weights.
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关键词
weighting visual words,mammography,novel algorithm,discriminate visual word,auto-context,breast parenchymal tissue classification,joint-vivo,visual vocabulary,visual words weighting,medical imaging application,classifying breast tissue density,image classification,iteration,tissues type classification,medical image,bag-of-features based classification,mammogram,biological tissues,classifying tissue,breast parenchymal tissue,new algorithm,medical imaging,region of interest,jointly selecting,visual vocabulary learning,computer-aided diagnosis,iterative methods,medical image processing,histograms,visualization,databases,biomedical imaging
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