Analysis of primitive features for medical image modality classification
- Resource Type
- Conference
- Authors
- Khan, Sameer Ahmad; Yong, Suet-Peng
- Source
- 2015 International Symposium on Mathematical Sciences and Computing Research (iSMSC) Mathematical Sciences and Computing Research (iSMSC), International Symposium on. :60-65 May, 2015
- Subject
- Computing and Processing
Feature extraction
Medical diagnostic imaging
Histograms
Filter banks
Image classification
Transforms
Global descriptors
local descriptors
performance evaluation
- Language
In this paper the performance of various descriptors is evaluated for medical image categorization. Many descriptors have been proposed in the literature for medical image categorization. It is unclear which descriptor encodes the content information efficiently. The descriptors that are calculated from these medical images should be descriptive, distinctive and robust to various transformations. The stability of these descriptors are evaluated under various transformations and are then analyzed for their discriminatory ability for the task of classification. In this study the criteria of transformations, repeatability, matching score and computations cost is used to evaluate the performance of these descriptors. The experimental results illustrates that among global descriptors local features patches histogram and among local descriptors SIFT encodes the content information quite efficiently.