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首页> 外文期刊>IEEE Transactions on Geoscience and Remote Sensing >A 3-D Atrous Convolution Neural Network for Hyperspectral Image Denoising
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A 3-D Atrous Convolution Neural Network for Hyperspectral Image Denoising

机译:用于高光谱图像去噪的3D Atrous卷积神经网络

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摘要

Deep learning, especially a discriminative model for image denoising, has shown great potential in removing complex spectral-spatial noise in hyperspectral images (HSI). For HSI denoising, it is crucial to extract more context information around each pixel and to predict each pixel according to the surrounding context. Therefore, the effective receptive field plays an important role when performing denoising task. Generally, an HSI denoising model can achieve better performance by reserving the correlation of adjacent spectral bands and extracting more pixel features in the spatial domain. In this paper, 3-D atrous denoising convolution neural network (3DADCNN) is proposed for HSI. The model extracts feature maps along both spatial and spectral dimensions and enlarges the receptive field without significantly increasing the number of network parameters. Simultaneously, the multibranch and multiscale structure is utilized to reduce training difficulty, lessen overfitting risk, and preserve details in texture. The proposed model can be applied to the corrupted image with a mixed type of photon and thermal noise. Experimental results of the quantitative and qualitative evaluation show that 3DADCNN outperforms state-of-the-art HSI denoising methods.
机译:深度学习,尤其是用于图像降噪的判别模型,已经显示出消除高光谱图像(HSI)中复杂的光谱空间噪声的巨大潜力。对于HSI降噪,至关重要的是提取每个像素周围的更多上下文信息,并根据周围的上下文预测每个像素。因此,有效的接收场在执行去噪任务时起着重要的作用。通常,HSI去噪模型可以通过保留相邻光谱带的相关性并在空间域中提取更多像素特征来实现更好的性能。本文针对HSI提出了3-D降噪卷积神经网络(3DADCNN)。该模型沿空间和光谱维度提取特征图,并在不显着增加网络参数数量的情况下扩大了接收场。同时,利用多分支和多尺度结构来减少训练难度,降低过度拟合的风险并保留纹理细节。所提出的模型可以应用于光子和热噪声混合类型的损坏图像。定量和定性评估的实验结果表明3DADCNN优于最新的HSI去噪方法。

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