Hierarchical Spherical CNNs with Lifting-based Adaptive Wavelets for Pooling and Unpooling
Mingxing Xu, Chenglin Li, Wenrui Dai, Siheng Chen, Junni Zou, Pascal, Frossard, Hongkai Xiong

TL;DR
This paper introduces LiftHS-CNN, a hierarchical spherical CNN framework utilizing learnable wavelets with a lifting structure for adaptive pooling and unpooling, enhancing feature preservation and task performance on spherical data.
Contribution
It proposes a novel lifting-based adaptive wavelet framework for pooling and unpooling in spherical CNNs, improving information retention and task adaptability.
Findings
Outperforms existing spherical CNN models in various tasks.
Effectively preserves more information during pooling.
Demonstrates superior feature restoration with invertible unpooling.
Abstract
Pooling and unpooling are two essential operations in constructing hierarchical spherical convolutional neural networks (HS-CNNs) for comprehensive feature learning in the spherical domain. Most existing models employ downsampling-based pooling, which will inevitably incur information loss and cannot adapt to different spherical signals and tasks. Besides, the preserved information after pooling cannot be well restored by the subsequent unpooling to characterize the desirable features for a task. In this paper, we propose a novel framework of HS-CNNs with a lifting structure to learn adaptive spherical wavelets for pooling and unpooling, dubbed LiftHS-CNN, which ensures a more efficient hierarchical feature learning for both image- and pixel-level tasks. Specifically, adaptive spherical wavelets are learned with a lifting structure that consists of trainable lifting operators (i.e.,…
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Taxonomy
TopicsAutomated Road and Building Extraction · Remote-Sensing Image Classification · Geological Modeling and Analysis
