1. The Combinations of Loss Functions and Schemes for Mammographic Classification
- Author
-
Lintong Li and Guangren Duan
- Subjects
medicine.diagnostic_test ,Computer science ,Entropy (statistical thermodynamics) ,Feature extraction ,Image segmentation ,010501 environmental sciences ,medicine.disease ,01 natural sciences ,030218 nuclear medicine & medical imaging ,03 medical and health sciences ,0302 clinical medicine ,Breast cancer ,Rate of convergence ,Discriminative model ,Binary classification ,medicine ,Entropy (information theory) ,Mammography ,Entropy (energy dispersal) ,Algorithm ,0105 earth and related environmental sciences - Abstract
The analysis of mammographic images effectively is a burning question recently. So the research of binary classification whether a whole mammographic image has masses or not is proposed in this paper. The two main issues are the class imbalance of INbreast database and the effect of classification. To address these, focal loss, center loss and three kinds of schemes are proposed. Focal loss is put forward to address class imbalance by multiplying a modulating factor. Center loss concerns about enhancement of discriminative power by handling inter-class features, that is similar to the first two schemes. Moreover, the third scheme is used to solve the class imbalance with $L_{1}$ norm. The experimental analyses demonstrate the effectiveness of the combination of diverse loss functions and schemes. The convergence rate increases to varying degrees.
- Published
- 2018