HYPERSPECTRAL IMAGE CLASSIFICATION BASED ON INTELLIGENT OPTIMIZATION FEATURE SELECTION
Journal: INTERNATIONAL JOURNAL OF RESEARCH -GRANTHAALAYAH (Vol.8, No. 4)Publication Date: 2020-04-30
Authors : Peng Yanbin; Zheng Zhijun;
Page : 104-111
Keywords : Hyperspectral Image; Classification; Band Selection; Intelligent Optimization; Mutual Information;
Abstract
Hyperspectral image classification has always been a hot topic. The problem of "dimension disaster" is caused by the high dimension of pixel points and the lack of labeled training sample points. In order to reduce the data dimension, an intelligent optimization algorithm was proposed for feature selection. The new method introduces the principle of mutual information and symmetric uncertainty, constructs the fitness function, selects the candidate feature set with the intelligent optimization algorithm, and obtains the optimal feature set. The SVM classifier was trained in the optimized feature set. In real hyperspectral data set, the new method was compared with various feature selection methods, and the experimental results showed that the optimal feature set has a high classification accuracy.
Other Latest Articles
- CONCEPTUAL STUDY OF ANTI-TOXIC ACTION OF TAGARADI AGADA ON POISONOUS INSECTS BITE: A SHORT REVIEW
- HANDS-ON ACTIVITY ABOUT WIRELESS ELECTRICITY TO PHYSICS UNDERGRADUATE STUDENTS
- PERFORMANCE OF REGULATED MARKETS IN TAMIL NADU
- TEACHERS’ RESILIENCE: A CHALLENGE OF COMMITMENT AND EFFECTIVENESS
- COVID-19 WILL LEAD TO INCREASED CRIME RATES IN INDIA
Last modified: 2020-07-18 15:23:53