eXtraordinary - AI Lab

11 May 2023
Congratulation to Mr. Li for the acceptance of his new paper at the journal of IEEE Transactions on Geoscience and Remote Sensing
Mr. Li's paper entitled "CBANet: An End-to-end Cross Band 2-D Attention Network for Hyperspectral Change Detection in Remote Sensing" is accepted in IEEE Transactions on Geoscience and Remote Sensing. This paper was a collaboration of Mr. Yinhe Li, Prof. Jinchang Ren, Dr. Yijun Yan, Dr. Qiaoyuan Liu, Dr. Ping Ma, Dr. Andrei Petrovski, and Prof. Haijiang Sun
Abstract:
As a fundamental task in remote sensing observation of the earth, change detection using hyperspectral images (HSI) features high accuracy due to the combination of the rich spectral and spatial information, especially for identifying land-cover variations in bi-temporal HSIs. Relying on the image difference, existing HSI change detection methods fail to preserve the spectral characteristics and suffer from high data dimensionality, making them extremely challenging to deal with changing areas of various sizes. To tackle these challenges, we propose a cross-band 2-D selfattention Network (CBANet) for end-to-end HSI change detection. By embedding a cross-band feature extraction module into a 2-D spatial-spectral self-attention module, CBANet is highly capable of extracting the spectral difference of matching pixels by considering the correlation between adjacent pixels. The CBANet has shown three key advantages: 1) less parameters and high efficiency; 2) high efficacy of extracting representative spectral information from bi-temporal images; and 3) high stability and accuracy for identifying both sparse sporadic changing pixels and large changing areas whilst preserving the edges. Comprehensive experiments on three publicly available datasets have fully validated the efficacy and efficiency of the proposed methodology.
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