Title :
Local Spectrum-Trend Similarity Approach for Detecting Land-Cover Change by Using SPOT-5 Satellite Images
Author :
Penglin Zhang ; Zhiyong Lv ; Wenzhong Shi
Author_Institution :
Sch. of Remote Sensing & Inf. Eng., Wuhan Univ., Wuhan, China
Abstract :
Spectra-based change detection (CD) methods, such as image difference method and change vector analysis, have been widely used for land-cover CD using remote sensing data. However, the spectra-based approach suffers from a strict requirement of radiometric consistency in the multitemporal images. This letter proposes a new image feature named spectrum trend, which is explored from the spectral values of the image in a local geographic area (e.g., a 3 × 3 sliding window) through raster encoding and curve fitting techniques. The piecewise similarity between the paired local areas in the multitemporal images is calculated by using a sliding window centered at the pixel to generate the change magnitude image. Finally, CD is achieved by a threshold decision or a classified method. This proposed approach, called “local spectrum-trend similarity,” is applied and validated by a case study of land-cover CD in Wuqin District, Tianjin City, China, by using SPOT-5 satellite images. Accuracies of “change” versus “no-change” detection are assessed. Experimental results confirm the feasibility and adaptability of the proposed approach in land-cover CD.
Keywords :
curve fitting; feature extraction; geophysical image processing; terrain mapping; China; SPOT-5 satellite images; Tianjin City; Wuqin District; change vector analysis; curve fitting; image difference method; image feature; land cover CD; land cover change detection; local spectrum trend similarity approach; multitemporal images; radiometric consistency; raster encoding; remote sensing data; sliding window; spectra based approach; threshold decision; Accuracy; Earth; Educational institutions; Market research; Remote sensing; Satellites; Vectors; Change detection (CD); land cover; local spectrum-trend similarity (LSTS); remote sensing image;
Journal_Title :
Geoscience and Remote Sensing Letters, IEEE
DOI :
10.1109/LGRS.2013.2278205