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Pixel-Aware Deep Function-Mixture Network for Spectral Super-Resolution

机译:像素感知深度函数混合网络,用于光谱超分辨率

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Spectral super-resolution (SSR) aims at generating a hyper-spectral image (HSI) from a given RGB image. Recently, a promising direction is to learn a complicated mapping function from the RGB image to the HSI counterpart using a deep convolutional neural network. This essentially involves mapping the RGB context within a size-specific receptive field centered at each pixel to its spectrum in the HSI. The focus thereon is to appropriately determine the receptive field size and establish the mapping function from RGB context to the corresponding spectrum. Due to their differences in category or spatial position, pixels in HSIs often require different-sized receptive fields and distinct mapping functions. However, few efforts have been invested to explicitly exploit this prior. To address this problem, we propose a pixel-aware deep function-mixture network for SSR, which is composed of a new class of modules, termed function-mixture (FM) blocks. Each FM block is equipped with some basis functions, i.e., parallel subnets of different-sized receptive fields. Besides, it incorporates an extra subnet as a mixing function to generate pixel-wise weights, and then linearly mixes the outputs of all basis functions with those generated weights. This enables us to pixel-wisely determine the receptive field size and the mapping function. Moreover, we stack several such FM blocks to further increase the flexibility of the network in learning the pixel-wise mapping. To encourage feature reuse, intermediate features generated by the FM blocks are fused in late stage, which proves to be effective for boosting the SSR performance. Experimental results on three benchmark HSI datasets demonstrate the superiority of the proposed method.
机译:光谱超分辨率(SSR)旨在从给定RGB图像生成超光谱图像(HSI)。最近,有希望的方向是使用深卷积神经网络从RGB图像到HSI对应的复杂映射函数。这基本上涉及将RGB上下文映射在以每个像素为中心的尺寸特定的接收字段内,以在HSI中的频谱。其上的重点是适当地确定接收场大小并将从RGB上下文建立映射函数到相应的频谱。由于它们的类别或空间位置的差异,HSIS中的像素通常需要不同大小的接收领域和不同的映射函数。但是,已经投入了很少的努力来明确地利用这个。为了解决这个问题,我们提出了一种用于SSR的像素感知深函数混合网络,其由新类模块组成,称为功能 - 混合(FM)块。每个FM块都配备了某种基本功能,即不同大小的接收领域的并行子网。此外,它包含额外的子网作为混合函数来产生像素方面的权重,然后线性将所有基本函数的输出与那些生成的权重混合。这使我们能够智能地确定接收场大小和映射函数。此外,我们堆叠了几个这样的FM块,以进一步提高网络在学习像素明智的映射时的灵活性。为了鼓励功能重用,由FM块生成的中间功能在晚期融合,这证明是为了提高SSR性能。三个基准HSI数据集的实验结果证明了所提出的方法的优越性。

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