Convolutional neural networks (CNNs) constructed natively on the sphere have been developed recently and shown to be highly effective for the analysis of spherical data. While an efficient framework has been formulated, spherical CNNs are nevertheless highly computationally demanding; typically they cannot scale beyond spherical signals of thousands of pixels. We develop scattering networks constructed natively on the sphere that provide a powerful representational space for spherical data. Spherical scattering networks are computationally scalable and exhibit rotational equivariance, while their representational space is invariant to isometries and provides efficient and stable signal representations. By integrating scattering networks as an additional type of layer in the generalized spherical CNN framework, we show how they can be leveraged to scale spherical CNNs to the high-resolution data typical of many practical applications, with spherical signals of many tens of megapixels and beyond.
翻译:最近开发了以本领域为主的进化神经网络(CNNs),这些网络对分析球体数据非常有效,虽然已经制定了高效的框架,但球体CNN在计算上要求很高,通常不能超过数千像素的球状信号。我们开发了以本领域为主、为球体数据提供强大代表空间的散射网络。球体散射网络在计算上是可扩缩的,并展示了轮换的相等性,而其代表空间对异体是无法变换的,并且提供了高效和稳定的信号表示。通过将散射网络作为广域CNN框架中的一种额外类型的层,我们展示了如何利用它们将球状CNN用于将许多实际应用中典型的高分辨率数据缩放,以及许多超大像素外的球状信号。