Table 3. Results of ensemble learning approach and other comparison algorithms.
Accuracy (%) | Feature Descriptor | Classification Model | |
---|---|---|---|
Hassan et al. [26] | 79.2 | CNN features extracted from the unsegmented images | CNN |
Peyret et al. [6] | 88.3 | Single-scale LBP | SVM |
Peyret et al. [6] | 91.3 | Multi-scale LBP | SVM |
Our Approach 1 | 97.8 | [LBP,LPQ,GLCM,Hist, Perception, BSIF] | SVM |
Chaddad et al. [7] | 98.9 | [LoG,DW,GLCM] | LDA |
Our Approach 2 | 99.1 | [LBP,LPQ,GLCM,Hist] | SVM |
Hassan et al. [26] | 99.2 | CNN features extracted from the segmented images | CNN |
Peyret et al. [24] | 99.6 | Stacked Multispectral Multi-scale LBP | SVM |