AttWalk: Attentive Cross-Walks for Deep Mesh Analysis

04/23/2021
by   Ran Ben Izhak, et al.
5

Mesh representation by random walks has been shown to benefit deep learning. Randomness is indeed a powerful concept. However, it comes with a price: some walks might wander around non-characteristic regions of the mesh, which might be harmful to shape analysis, especially when only a few walks are utilized. We propose a novel walk-attention mechanism that leverages the fact that multiple walks are used. The key idea is that the walks may provide each other with information regarding the meaningful (attentive) features of the mesh. We utilize this mutual information to extract a single descriptor of the mesh. This differs from common attention mechanisms that use attention to improve the representation of each individual descriptor. Our approach achieves SOTA results for two basic 3D shape analysis tasks: classification and retrieval. Even a handful of walks along a mesh suffice for learning.

READ FULL TEXT

page 1

page 4

page 8

research
12/02/2021

CloudWalker: 3D Point Cloud Learning by Random Walks for Shape Analysis

Point clouds are gaining prominence as a method for representing 3D shap...
research
02/15/2022

Random Walks for Adversarial Meshes

A polygonal mesh is the most-commonly used representation of surfaces in...
research
06/09/2020

MeshWalker: Deep Mesh Understanding by Random Walks

Most attempts to represent 3D shapes for deep learning have focused on v...
research
06/01/2021

Harvesting the Public MeSH Note field

In this document, we report an analysis of the Public MeSH Note field of...
research
10/20/2017

Quasi-random Agents for Image Transition and Animation

Quasi-random walks show similar features as standard random walks, but w...
research
09/21/2023

A New cryptanalysis model based on random and quantum walks

Randomness plays a key role in the design of attacks on cryptographic sy...
research
08/03/2015

Local Color Contrastive Descriptor for Image Classification

Image representation and classification are two fundamental tasks toward...

Please sign up or login with your details

Forgot password? Click here to reset