Due to inadequate energy captured by the hyperspectral camera sensor in poor illumination conditions, low-light hyperspectral images (HSIs) usually suffer from low visibility, spectral distortion, and various noises. A range of HSI restoration methods have been developed, yet their effectiveness in enhancing low-light HSIs is constrained. This work focuses on the low-light HSI enhancement task, which aims to reveal the spatial-spectral information hidden in darkened areas. To facilitate the development of low-light HSI processing, we collect a low-light HSI (LHSI) dataset of both indoor and outdoor scenes. Based on Laplacian pyramid decomposition and reconstruction, we developed an end-to-end data-driven low-light HSI enhancement (HSIE) approach trained on the LHSI dataset. With the observation that illumination is related to the low-frequency component of HSI, while textural details are closely correlated to the high-frequency component, the proposed HSIE is designed to have two branches. The illumination enhancement branch is adopted to enlighten the low-frequency component with reduced resolution. The high-frequency refinement branch is utilized for refining the high-frequency component via a predicted mask. In addition, to improve information flow and boost performance, we introduce an effective channel attention block (CAB) with residual dense connection, which served as the basic block of the illumination enhancement branch. The effectiveness and efficiency of HSIE both in quantitative assessment measures and visual effects are demonstrated by experimental results on the LHSI dataset. According to the classification performance on the remote sensing Indian Pines dataset, downstream tasks benefit from the enhanced HSI. Datasets and codes are available: \href{https://github.com/guanguanboy/HSIE}{https://github.com/guanguanboy/HSIE}.
翻译:由于超光谱照相机传感器在光化条件差的情况下摄取的能量不足,低光超光谱图像通常受到低可见度、光谱扭曲和各种噪音的影响。我们已经开发出一系列HSI恢复方法,但它们在加强低光HSI方面的效力受到限制。这项工作的重点是低光HSI增强任务,目的是揭示隐藏在黑暗地区的低频光光谱信息。为了便利低光HSI处理的发展,我们收集了室内和室外场的低光 HSI(LHSI)数据集。根据Laplacian金字形分解和重建,我们开发了一种端对端数据驱动的低光光光光光光光光光光光光光光光图像(HSIE)恢复方法,但在LHSI数据集的低光光光光光光光光光光光光增强方法方面,由于观测到低频率部分,HSIE(HGIE/HSI)的文本细节设计分为两个分支。 光光度增强处通过分辨率分解法,在高频端SLIS(HIS)中,高频级数据升级部分用于提高数据流。