SOTAVerified

Interpolated SelectionConv for Spherical Images and Surfaces

2022-10-18Code Available0· sign in to hype

David Hart, Michael Whitney, Bryan Morse

Code Available — Be the first to reproduce this paper.

Reproduce

Code

Abstract

We present a new and general framework for convolutional neural network operations on spherical (or omnidirectional) images. Our approach represents the surface as a graph of connected points that doesn't rely on a particular sampling strategy. Additionally, by using an interpolated version of SelectionConv, we can operate on the sphere while using existing 2D CNNs and their weights. Since our method leverages existing graph implementations, it is also fast and can be fine-tuned efficiently. Our method is also general enough to be applied to any surface type, even those that are topologically non-simple. We demonstrate the effectiveness of our technique on the tasks of style transfer and segmentation for spheres as well as stylization for 3D meshes. We provide a thorough ablation study of the performance of various spherical sampling strategies.

Tasks

Benchmark Results

DatasetModelMetricClaimedVerifiedStatus
Stanford2D3D PanoramicInterpolated SelectionConvmIoU41.4Unverified

Reproductions