3D Separable Convolution based Super-Resolution of Hyperspectral Images using CNN

K. G. Prasad, S. Deepak, D. Patra
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引用次数: 1

Abstract

Recently CNN based Super-Resolution methods have seen rise in popularity in solving the problem ill posed problem of Hyperspectral (HS) Image super resolution. One major factor for this popularity is that CNN based super-resolution methods have been developed to improve the performance and eliminate spectral distortion occurred due to sparse coding based methods which involve fusion of HS image and normal RGB image. Even though these Deep Learning based methods have outperformed the classic sparse coding methods for HS image super resolution, they lag behind in proper exploration of spectral features of the image and at the same time the number of training parameters used are very high, which eventually costs valuable time and computational resources. In order to eliminate these drawbacks, in this paper we propose a 3D Separable Convolution method to address two major tasks at hand. First is to reduce the number of parameters in the network and efficiently reuse the parameters for reducing the training time and resources, which is achieved by employing the 3D Separable Networks comprising of separable filters inside the Deep Feature Extraction subnetwork whose operational analysis is elaborately explained in the upcoming sections. Second, to efficiently use the strong correlation between spectral and spatial features and of the HS image and is performed by the 2D network which makes use of the feature maps obtained by the 3D Separable network to spatially convolve along the feature dimensions of the network extracted by the 3D filters. The experimental results show that the proposed model has achieved reduction in number of training parameters from 19lakhs to 17lakhs compared to the State-of-the-Art (SOTA) method. The proposed method has outperformed the SOTA methods with 5dB improvement in PSNR along with 0.9929 SSIM and 1.668°SAM.
基于CNN的三维可分离卷积的高光谱图像超分辨率研究
近年来,基于CNN的超分辨率方法在解决高光谱(HS)图像超分辨率问题上得到了越来越多的应用。这种流行的一个主要因素是基于CNN的超分辨率方法被开发出来,以提高性能并消除由于基于稀疏编码的方法涉及HS图像和正常RGB图像的融合而产生的频谱失真。尽管这些基于深度学习的方法在HS图像超分辨率方面优于经典稀疏编码方法,但在对图像的光谱特征进行适当探索方面存在不足,同时使用的训练参数数量非常多,最终耗费了宝贵的时间和计算资源。为了消除这些缺点,在本文中,我们提出了一种三维可分离卷积方法来解决手头的两个主要任务。首先是减少网络中的参数数量,并有效地重用参数以减少训练时间和资源,这是通过在深度特征提取子网络中使用由可分离滤波器组成的3D可分离网络来实现的,其操作分析将在接下来的章节中详细解释。二是有效利用HS图像的光谱特征与空间特征之间的强相关性,利用三维可分网络获得的特征映射,沿三维滤波器提取的网络特征维度进行空间卷积。实验结果表明,与最先进的SOTA方法相比,该模型将训练参数的数量从190万个减少到170万个。在0.9929 SSIM和1.668°SAM下,该方法的PSNR比SOTA方法提高了5dB。
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