Title
Texture descriptors for representing feature vectors
Abstract
Pattern representation affects classification performance. Although discovering “universal” features that work for many classification problems is ideal, most representations are problem specific. In this paper, we improve the classification performance of a classifier system by transforming a one-dimensional input descriptor into a two-dimensional space so that effective texture extractors can be extracted to capture hidden data information. We develop two new methods for matrix representation where features are extracted that are more generalizable. The first method for generating a two-dimensional representation of patterns is based on trees, the objective being to reshape the feature vector into a matrix, and the second method performs mathematical operations to build a matrix representation. The proposed framework is then evaluated for its specific power on three medical problems. To evaluate generalizability, we compare the proposed approaches with several other baseline methods across some well-known benchmark datasets that reflect a diversity of classification problems. Not only does our approach show high robustness, but it also exhibits low sensitivity to parameters. When different approaches for transforming a vector into a matrix are combined with several texture descriptors, the resulting system often works well without requiring any ad-hoc optimization. The performance of the tested systems is compared by Wilcoxon signed rank test and Friedman's test.
Department(s)
Information Technology and Cybersecurity
Document Type
Article
DOI
https://doi.org/10.1016/j.eswa.2018.12.052
Keywords
Ensemble of classifiers, General-purpose classifier, Medical dataset, Two-dimensional representation
Publication Date
5-15-2019
Recommended Citation
Nanni, Loris, Sheryl Brahnam, and Alessandra Lumini. "Texture descriptors for representing feature vectors." Expert Systems with Applications 122 (2019): 163-172.
Journal Title
Expert Systems with Applications