SRA–CEM: An Improved CEM Target Detection Algorithm for Hyperspectral Images Based on Subregion Analysis
Jiale Zhao, Guanglong Wang, Bing Zhou, Jiaju Ying, Jie Liu
Abstract
Due to the limitations of spatial resolution and detector level, traditional hyperspectral image target detection focuses more on spectral analysis, and spatial morphology information is not fully utilized in hyperspectral image target detection. The Constrained Energy Minimization (CEM) method is a classic hyperspectral image target detection algorithm that can highlight the information of the target, suppress background information, and achieve the effect of separating the target from the image. However, the CEM method is a supervised algorithm that requires obtaining spectral information of the target in advance. Due to various factors such as material composition, object shape, and imaging conditions, the spectral reflectance of targets usually exhibits strong uncertainty, which is the main reason why the detection performance of traditional target detection algorithms is not ideal. To address the above issues, an improved CEM target detection algorithm for hyperspectral images based on sub-region analysis (SRA-CEM) was proposed. The SRA-CEM method first obtains the sub-region where the target is located based on its external features and then uses background detection to infer the specific location of the target. SRA-CEM uses prior background spectral reflectance to replace the spectral reflectance of unknown and variable targets and can avoid the impact of the target signal as a background signal in the traditional CEM algorithm on the detection results. Experiments were conducted using publicly available and self-test hyperspectral data,respectively. The results showed that compared to other target detection algorithms, the SRA-CEM method could effectively improve the accuracy of hyperspectral target detection. Especially in hyperspectral images under land-based imaging conditions, the AUC value of the SRA-CEM method has increased by about 0.11.