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  3. Active Learning with Context Sampling and One-vs-Rest Entropy for Semantic Segmentation
 

Active Learning with Context Sampling and One-vs-Rest Entropy for Semantic Segmentation

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BORIS DOI
10.48620/84541
Date of Publication
February 28, 2025
Publication Type
Working Paper
Division/Institute

ARTORG Center for Bio...

ARTORG Center for Bio...

ARTORG Center - Artif...

Author
Wu, Fei
ARTORG Center for Biomedical Engineering Research - Motorlearning and Neurorehabilitation
ARTORG Center - Gerontechnology and Rehabilitation
ARTORG Center - Artificial Intelligence in Medical Image Computing
Marquez-Neila, Pablo
ARTORG Center for Biomedical Engineering Research
ARTORG Center - Artificial Intelligence in Medical Image Computing
Rafii-Tari, Hedyeh
Sznitman, Raphaelorcid-logo
ARTORG Center - Artificial Intelligence in Medical Image Computing
ARTORG Center for Biomedical Engineering Research
Publisher
Cornell University
Language
English
Description
Multi-class semantic segmentation remains a cornerstone challenge in computer vision. Yet, dataset creation remains excessively demanding in time and effort, especially for specialized domains. Active Learning (AL) mitigates this challenge by selecting data points for annotation strategically. However, existing patch-based AL methods often overlook boundary pixels critical information, essential for accurate segmentation. We present OREAL, a novel patch-based AL method designed for multi-class semantic segmentation. OREAL enhances boundary detection by employing maximum aggregation of pixel-wise uncertainty scores. Additionally, we introduce one-vs-rest entropy, a novel uncertainty score function that computes class-wise uncertainties while achieving implicit class balancing during dataset creation. Comprehensive experiments across diverse datasets and model architectures validate our hypothesis.
Related URL
https://doi.org/10.48550/arXiv.2412.06470
Handle
https://boris-portal.unibe.ch/handle/20.500.12422/202736
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FileFile TypeFormatSizeLicensePublisher/Copright statementContent
2412.06470v1.pdftextAdobe PDF3.1 MBAttribution (CC BY 4.0)publishedOpen
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