Title :
A Novel Image Classification Algorithm Using Overcomplete Wavelet Transforms
Author :
Myint, Soe W. ; Tong Zhu ; Baojuan Zheng
Author_Institution :
Sch. of Geogr. Sci. & Urban Planning, Arizona State Univ., Tempe, AZ, USA
Abstract :
A novel frequency-based classification framework and new wavelet algorithm (Wave-CLASS) is proposed using an over-complete decomposition procedure. This approach omits the downsampling procedure and produces four-texture information with the same dimension of the original image or window at infinite scale. Three image subsets of QuickBird data (i.e., park, commercial, and rural) over a central region in the city of Phoenix were used to examine the effectiveness of the new wavelet over-complete algorithm in comparison with a widely used classical approach (i.e., maximum likelihood). While the maximum-likelihood classifier produced <; 78.29% overall accuracies for all three image subsets, the Wave-CLASS algorithm achieved high overall accuracies-95.05% for the commercial subset (Kappa = 0.94), 93.71% for the park subset (Kappa = 0.93), and 89.33% for the rural subset (Kappa = 0.86). Results from this study demonstrate that the proposed method is effective in identifying detailed urban land cover types in high spatial resolution data.
Keywords :
geophysical image processing; image classification; image sampling; land cover; wavelet transforms; QuickBird; Wave-CLASS algorithm; downsampling procedure; image classification algorithm; infinite scale; overcomplete decomposition procedure; overcomplete wavelet transform; spatial resolution; urban land cover; wavelet overcomplete algorithm; Accuracy; Buildings; Remote sensing; Spatial resolution; Training; Wavelet transforms; Classification; high spatial resolution; infinite scale; overcomplete decomposition; urban land cover; wavelet transforms;
Journal_Title :
Geoscience and Remote Sensing Letters, IEEE
DOI :
10.1109/LGRS.2015.2390133