State Key Laboratory of Integrated Service Network, Xidian University, Xian 710071, China.
State Key Laboratory of Integrated Service Network, Xidian University, Xian 710071, China.
Neural Netw. 2018 Dec;108:272-286. doi: 10.1016/j.neunet.2018.08.021. Epub 2018 Sep 5.
Because of the limited reflected energy and incoming illumination in an individual band, the reflected energy captured by a hyperspectral sensor might be low and there is inevitable noise that significantly decreases the performance of the subsequent analysis. Denoising is therefore of first importance in hyperspectral image (HSI) analysis and interpretation. However, most HSI denoising methods remove noise with the important spectral information being severely distorted. This paper presents an HSI denoising method using trainable spectral difference learning with spatial initialization (called HDnTSDL) aimed at preserving the spectral information. In the proposed HDnTSDL model, a key band is automatically selected and denoised. The denoised key band acts as a starting point to reconstruct the rest of the non-key bands. Meanwhile, a deep convolutional neural network (CNN) with trainable non-linearity functions is proposed to learn the spectral difference mapping. Then, the rest of the non-key bands are denoised under the guidance of the learned spectral difference with the key band as a starting point. Experiments have been conducted on five databases with both indoor and outdoor scenes. Comparative analyses validate that the proposed method: (i) presents superior performance in spatial recovery and spectral preservation, and (ii) requires less computational time than state-of-the-art methods.
由于单个波段内反射能量和入射照明的限制,高光谱传感器捕获的反射能量可能较低,并且不可避免地存在噪声,这会显著降低后续分析的性能。因此,去噪在高光谱图像(HSI)分析和解释中至关重要。然而,大多数 HSI 去噪方法在去除噪声的同时,重要的光谱信息会严重失真。本文提出了一种使用可训练的光谱差分学习与空间初始化的 HSI 去噪方法(称为 HDnTSDL),旨在保留光谱信息。在提出的 HDnTSDL 模型中,自动选择和去噪关键波段。去噪的关键波段作为重建其余非关键波段的起点。同时,提出了一种具有可训练非线性函数的深度卷积神经网络(CNN)来学习光谱差分映射。然后,在学习到的以关键波段为起点的光谱差分的指导下,对其余的非关键波段进行去噪。在具有室内和室外场景的五个数据库上进行了实验。比较分析验证了该方法:(i)在空间恢复和光谱保持方面表现出优异的性能,(ii)比最先进的方法需要更少的计算时间。