Saved in:
Bibliographic Details
Main Authors: Zhang, Jing, Fang, Irving, Zhang, Juexiao, Wu, Hao, Kaushik, Akshat, Rodriguez, Alice, Zhao, Hanwen, Zheng, Zhuo, Iovita, Radu, Feng, Chen
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2403.13171
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866911817906782208
author Zhang, Jing
Fang, Irving
Zhang, Juexiao
Wu, Hao
Kaushik, Akshat
Rodriguez, Alice
Zhao, Hanwen
Zheng, Zhuo
Iovita, Radu
Feng, Chen
author_facet Zhang, Jing
Fang, Irving
Zhang, Juexiao
Wu, Hao
Kaushik, Akshat
Rodriguez, Alice
Zhao, Hanwen
Zheng, Zhuo
Iovita, Radu
Feng, Chen
contents Lithic Use-Wear Analysis (LUWA) using microscopic images is an underexplored vision-for-science research area. It seeks to distinguish the worked material, which is critical for understanding archaeological artifacts, material interactions, tool functionalities, and dental records. However, this challenging task goes beyond the well-studied image classification problem for common objects. It is affected by many confounders owing to the complex wear mechanism and microscopic imaging, which makes it difficult even for human experts to identify the worked material successfully. In this paper, we investigate the following three questions on this unique vision task for the first time:(i) How well can state-of-the-art pre-trained models (like DINOv2) generalize to the rarely seen domain? (ii) How can few-shot learning be exploited for scarce microscopic images? (iii) How do the ambiguous magnification and sensing modality influence the classification accuracy? To study these, we collaborated with archaeologists and built the first open-source and the largest LUWA dataset containing 23,130 microscopic images with different magnifications and sensing modalities. Extensive experiments show that existing pre-trained models notably outperform human experts but still leave a large gap for improvements. Most importantly, the LUWA dataset provides an underexplored opportunity for vision and learning communities and complements existing image classification problems on common objects.
format Preprint
id arxiv_https___arxiv_org_abs_2403_13171
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle LUWA Dataset: Learning Lithic Use-Wear Analysis on Microscopic Images
Zhang, Jing
Fang, Irving
Zhang, Juexiao
Wu, Hao
Kaushik, Akshat
Rodriguez, Alice
Zhao, Hanwen
Zheng, Zhuo
Iovita, Radu
Feng, Chen
Computer Vision and Pattern Recognition
Lithic Use-Wear Analysis (LUWA) using microscopic images is an underexplored vision-for-science research area. It seeks to distinguish the worked material, which is critical for understanding archaeological artifacts, material interactions, tool functionalities, and dental records. However, this challenging task goes beyond the well-studied image classification problem for common objects. It is affected by many confounders owing to the complex wear mechanism and microscopic imaging, which makes it difficult even for human experts to identify the worked material successfully. In this paper, we investigate the following three questions on this unique vision task for the first time:(i) How well can state-of-the-art pre-trained models (like DINOv2) generalize to the rarely seen domain? (ii) How can few-shot learning be exploited for scarce microscopic images? (iii) How do the ambiguous magnification and sensing modality influence the classification accuracy? To study these, we collaborated with archaeologists and built the first open-source and the largest LUWA dataset containing 23,130 microscopic images with different magnifications and sensing modalities. Extensive experiments show that existing pre-trained models notably outperform human experts but still leave a large gap for improvements. Most importantly, the LUWA dataset provides an underexplored opportunity for vision and learning communities and complements existing image classification problems on common objects.
title LUWA Dataset: Learning Lithic Use-Wear Analysis on Microscopic Images
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2403.13171