Change detection in high resolution SAR images based on multiscale texture features

Autor: Wen, Caihuan, Gao, Ziqiang
Zdroj: Proceedings of SPIE; November 2011, Vol. 8006 Issue: 1 p80062D-80062D-7, 720566p
Abstrakt: This paper studied on change detection algorithm of high resolution (HR) Synthetic Aperture Radar (SAR) images based on multi-scale texture features. Firstly, preprocessed multi-temporal Terra-SAR images were decomposed by 2-D dual tree complex wavelet transform (DT-CWT), and multi-scale texture features were extracted from those images. Then, log-ratio operation was utilized to get difference images, and the Bayes minimum error theory was used to extract change information from difference images. Lastly, precision assessment was done. Meanwhile, we compared with the result of method based on texture features extracted from gray-level cooccurrence matrix (GLCM). We had a conclusion that, change detection algorithm based on multi-scale texture features has a great more improvement, which proves an effective method to change detect of high spatial resolution SAR images.
Databáze: Supplemental Index