Liu Shaocong, Li Zhen, Wang Guangyuan, Qiu Xianfei, Liu Tinghao, Cao Jing, Zhang Donghui
Institute of Remote Sensing Satellite, China Academy of Space Technology (CAST), Beijing 100094, China.
Sensors (Basel). 2024 Mar 3;24(5):1652. doi: 10.3390/s24051652.
Hyperspectral anomaly detection is used to recognize unusual patterns or anomalies in hyperspectral data. Currently, many spectral-spatial detection methods have been proposed with a cascaded manner; however, they often neglect the complementary characteristics between the spectral and spatial dimensions, which easily leads to yield high false alarm rate. To alleviate this issue, a spectral-spatial information fusion (SSIF) method is designed for hyperspectral anomaly detection. First, an isolation forest is exploited to obtain spectral anomaly map, in which the object-level feature is constructed with an entropy rate segmentation algorithm. Then, a local spatial saliency detection scheme is proposed to produce the spatial anomaly result. Finally, the spectral and spatial anomaly scores are integrated together followed by a domain transform recursive filtering to generate the final detection result. Experiments on five hyperspectral datasets covering ocean and airport scenes prove that the proposed SSIF produces superior detection results over other state-of-the-art detection techniques.
高光谱异常检测用于识别高光谱数据中的异常模式或异常情况。目前,已经提出了许多级联方式的光谱-空间检测方法;然而,它们常常忽略光谱维和空间维之间的互补特性,这很容易导致产生较高的误报率。为了缓解这个问题,设计了一种用于高光谱异常检测的光谱-空间信息融合(SSIF)方法。首先,利用孤立森林获得光谱异常图,其中通过熵率分割算法构建对象级特征。然后,提出一种局部空间显著性检测方案以产生空间异常结果。最后,将光谱和空间异常得分整合在一起,随后进行域变换递归滤波以生成最终检测结果。在涵盖海洋和机场场景的五个高光谱数据集上进行的实验证明,所提出的SSIF比其他现有先进检测技术产生了更优的检测结果。