Joint-ViVo: Selecting and Weighting Visual Words Jointly for Bag-of-Features based Tissue Classification in Medical Images
Jingyan Wang

TL;DR
Joint-ViVo introduces a novel iterative algorithm that jointly learns visual vocabulary and weighting for bag-of-features in medical tissue classification, improving accuracy across MRI, HRCT, and mammogram datasets.
Contribution
The paper proposes a new algorithm that jointly learns visual vocabulary and weights, unlike previous methods that treat these steps separately, enhancing tissue classification performance.
Findings
Effective in classifying brain, lung, and breast tissues
Improves classification accuracy over traditional methods
Works across multiple medical imaging modalities
Abstract
Automatically classifying the tissues types of Region of Interest (ROI) in medical imaging has been an important application in Computer-Aided Diagnosis (CAD), such as classification of breast parenchymal tissue in the mammogram, classify lung disease patterns in High-Resolution Computed Tomography (HRCT) etc. Recently, bag-of-features method has shown its power in this field, treating each ROI 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 classifier jointly, we try to…
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Taxonomy
TopicsAI in cancer detection · Image Retrieval and Classification Techniques · Advanced Image and Video Retrieval Techniques
