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Main Authors: Li, Xiaofan, Peng, Bo, Hu, Jie, Ma, Changyou, Yang, Daipeng, Xie, Zhuyang
Format: Preprint
Published: 2023
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Online Access:https://arxiv.org/abs/2309.13289
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author Li, Xiaofan
Peng, Bo
Hu, Jie
Ma, Changyou
Yang, Daipeng
Xie, Zhuyang
author_facet Li, Xiaofan
Peng, Bo
Hu, Jie
Ma, Changyou
Yang, Daipeng
Xie, Zhuyang
contents Unsupervised skin lesion segmentation offers several benefits, including conserving expert human resources, reducing discrepancies due to subjective human labeling, and adapting to novel environments. However, segmenting dermoscopic images without manual labeling guidance presents significant challenges due to dermoscopic image artifacts such as hair noise, blister noise, and subtle edge differences. To address these challenges, we introduce an innovative Uncertainty Self-Learning Network (USL-Net) designed for skin lesion segmentation. The USL-Net can effectively segment a range of lesions, eliminating the need for manual labeling guidance. Initially, features are extracted using contrastive learning, followed by the generation of Class Activation Maps (CAMs) as saliency maps using these features. The different CAM locations correspond to the importance of the lesion region based on their saliency. High-saliency regions in the map serve as pseudo-labels for lesion regions while low-saliency regions represent the background. However, intermediate regions can be hard to classify, often due to their proximity to lesion edges or interference from hair or blisters. Rather than risk potential pseudo-labeling errors or learning confusion by forcefully classifying these regions, we consider them as uncertainty regions, exempting them from pseudo-labeling and allowing the network to self-learn. Further, we employ connectivity detection and centrality detection to refine foreground pseudo-labels and reduce noise-induced errors. The application of cycle refining enhances performance further. Our method underwent thorough experimental validation on the ISIC-2017, ISIC-2018, and PH2 datasets, demonstrating that its performance is on par with weakly supervised and supervised methods, and exceeds that of other existing unsupervised methods.
format Preprint
id arxiv_https___arxiv_org_abs_2309_13289
institution arXiv
publishDate 2023
record_format arxiv
spellingShingle USL-Net: Uncertainty Self-Learning Network for Unsupervised Skin Lesion Segmentation
Li, Xiaofan
Peng, Bo
Hu, Jie
Ma, Changyou
Yang, Daipeng
Xie, Zhuyang
Computer Vision and Pattern Recognition
Artificial Intelligence
I.2.1
Unsupervised skin lesion segmentation offers several benefits, including conserving expert human resources, reducing discrepancies due to subjective human labeling, and adapting to novel environments. However, segmenting dermoscopic images without manual labeling guidance presents significant challenges due to dermoscopic image artifacts such as hair noise, blister noise, and subtle edge differences. To address these challenges, we introduce an innovative Uncertainty Self-Learning Network (USL-Net) designed for skin lesion segmentation. The USL-Net can effectively segment a range of lesions, eliminating the need for manual labeling guidance. Initially, features are extracted using contrastive learning, followed by the generation of Class Activation Maps (CAMs) as saliency maps using these features. The different CAM locations correspond to the importance of the lesion region based on their saliency. High-saliency regions in the map serve as pseudo-labels for lesion regions while low-saliency regions represent the background. However, intermediate regions can be hard to classify, often due to their proximity to lesion edges or interference from hair or blisters. Rather than risk potential pseudo-labeling errors or learning confusion by forcefully classifying these regions, we consider them as uncertainty regions, exempting them from pseudo-labeling and allowing the network to self-learn. Further, we employ connectivity detection and centrality detection to refine foreground pseudo-labels and reduce noise-induced errors. The application of cycle refining enhances performance further. Our method underwent thorough experimental validation on the ISIC-2017, ISIC-2018, and PH2 datasets, demonstrating that its performance is on par with weakly supervised and supervised methods, and exceeds that of other existing unsupervised methods.
title USL-Net: Uncertainty Self-Learning Network for Unsupervised Skin Lesion Segmentation
topic Computer Vision and Pattern Recognition
Artificial Intelligence
I.2.1
url https://arxiv.org/abs/2309.13289