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Main Authors: Xiang, Siyuan, Tseng, Chin, Wen, Congcong, Desai, Deshana, Kou, Yifeng, Starly, Binil, Panozzo, Daniele, Feng, Chen
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2404.19134
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author Xiang, Siyuan
Tseng, Chin
Wen, Congcong
Desai, Deshana
Kou, Yifeng
Starly, Binil
Panozzo, Daniele
Feng, Chen
author_facet Xiang, Siyuan
Tseng, Chin
Wen, Congcong
Desai, Deshana
Kou, Yifeng
Starly, Binil
Panozzo, Daniele
Feng, Chen
contents We introduce the first work on benchmarking and evaluating deep clustering algorithms on large-scale non-categorical 3D CAD models. We first propose a workflow to allow expert mechanical engineers to efficiently annotate 252,648 carefully sampled pairwise CAD model similarities, from a subset of the ABC dataset with 22,968 shapes. Using seven baseline deep clustering methods, we then investigate the fundamental challenges of evaluating clustering methods for non-categorical data. Based on these challenges, we propose a novel and viable ensemble-based clustering comparison approach. This work is the first to directly target the underexplored area of deep clustering algorithms for 3D shapes, and we believe it will be an important building block to analyze and utilize the massive 3D shape collections that are starting to appear in deep geometric computing.
format Preprint
id arxiv_https___arxiv_org_abs_2404_19134
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Evaluating Deep Clustering Algorithms on Non-Categorical 3D CAD Models
Xiang, Siyuan
Tseng, Chin
Wen, Congcong
Desai, Deshana
Kou, Yifeng
Starly, Binil
Panozzo, Daniele
Feng, Chen
Computer Vision and Pattern Recognition
We introduce the first work on benchmarking and evaluating deep clustering algorithms on large-scale non-categorical 3D CAD models. We first propose a workflow to allow expert mechanical engineers to efficiently annotate 252,648 carefully sampled pairwise CAD model similarities, from a subset of the ABC dataset with 22,968 shapes. Using seven baseline deep clustering methods, we then investigate the fundamental challenges of evaluating clustering methods for non-categorical data. Based on these challenges, we propose a novel and viable ensemble-based clustering comparison approach. This work is the first to directly target the underexplored area of deep clustering algorithms for 3D shapes, and we believe it will be an important building block to analyze and utilize the massive 3D shape collections that are starting to appear in deep geometric computing.
title Evaluating Deep Clustering Algorithms on Non-Categorical 3D CAD Models
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2404.19134