论文标题
深度学习的光谱总变异分解
Deeply Learned Spectral Total Variation Decomposition
论文作者
论文摘要
在过去的几年中,基于一个均匀功能(例如总变化)(例如总变异)的非线性光谱分解已引起了很大的关注。由于它们能够提取与不同尺寸和对比度对象相对应的光谱成分的能力,因此这种分解能够过滤,特征传输,图像融合和其他应用。但是,获得这种分解涉及解决多个非平滑优化问题,因此在计算上是高度密集的。在本文中,我们提出了非线性光谱分解的神经网络近似。与经典的GPU实现相比,我们报告了多达四个数量级($ \ times 10,000 $)的加速度。我们提出的网络TVSpecnet能够隐含地学习基本的PDE,尽管完全是数据驱动的,但仍继承了基于模型的变换的不变。据我们所知,这是学习图像的非线性光谱分解的第一种方法。我们不仅获得了惊人的计算优势,而且这种方法也可以看作是研究可以将图像分解为用户定义的光谱成分而不是手工制作功能的光谱组件的神经网络的一步。
Non-linear spectral decompositions of images based on one-homogeneous functionals such as total variation have gained considerable attention in the last few years. Due to their ability to extract spectral components corresponding to objects of different size and contrast, such decompositions enable filtering, feature transfer, image fusion and other applications. However, obtaining this decomposition involves solving multiple non-smooth optimisation problems and is therefore computationally highly intensive. In this paper, we present a neural network approximation of a non-linear spectral decomposition. We report up to four orders of magnitude ($\times 10,000$) speedup in processing of mega-pixel size images, compared to classical GPU implementations. Our proposed network, TVSpecNET, is able to implicitly learn the underlying PDE and, despite being entirely data driven, inherits invariances of the model based transform. To the best of our knowledge, this is the first approach towards learning a non-linear spectral decomposition of images. Not only do we gain a staggering computational advantage, but this approach can also be seen as a step towards studying neural networks that can decompose an image into spectral components defined by a user rather than a handcrafted functional.