Title of article :
Sparse Representation Based Multi-Instance Learning for Breast Ultrasound Image Classification
Author/Authors :
Bing, Lu School of Information and Computer Science - Shanghai Business School - Shanghai, China , Wang, Wei Department of Science and Technology - Shanghai Municipal Public Security Bureau - Shanghai, China
Abstract :
We propose a novel method based on sparse representation for breast ultrasound image classification under the framework of
multi-instance learning (MIL). After image enhancement and segmentation, concentric circle is used to extract the global and local
features for improving the accuracy in diagnosis and prediction. The classification problem of ultrasound image is converted to
sparse representation based MIL problem. Each instance of a bag is represented as a sparse linear combination of all basis vectors
in the dictionary, and then the bag is represented by one feature vector which is obtained via sparse representations of all instances
within the bag. The sparse and MIL problem is further converted to a conventional learning problem that is solved by relevance
vector machine (RVM). Results of single classifiers are combined to be used for classification. Experimental results on the breast
cancer datasets demonstrate the superiority of the proposed method in terms of classification accuracy as compared with state-ofthe-art MIL methods.
Keywords :
Ultrasound , Classification , Multi-Instance , MIL
Journal title :
Computational and Mathematical Methods in Medicine