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Autori principali: Chen, Xiaoyang, Zheng, Hao, Xie, Yifang, Ma, Yuncong, Li, Tengfei
Natura: Preprint
Pubblicazione: 2024
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Accesso online:https://arxiv.org/abs/2405.16328
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author Chen, Xiaoyang
Zheng, Hao
Xie, Yifang
Ma, Yuncong
Li, Tengfei
author_facet Chen, Xiaoyang
Zheng, Hao
Xie, Yifang
Ma, Yuncong
Li, Tengfei
contents Current methods for developing foundation models in medical image segmentation rely on two primary assumptions: a fixed set of classes and the immediate availability of a substantial and diverse training dataset. However, this can be impractical due to the evolving nature of imaging technology and patient demographics, as well as labor-intensive data curation, limiting their practical applicability and scalability. To address these challenges, we introduce a novel segmentation paradigm enabling the segmentation of a variable number of classes within a single classifier-free network, featuring an architecture independent of class number. This network is trained using contrastive learning and produces discriminative feature representations that facilitate straightforward interpretation. Additionally, we integrate this strategy into a knowledge distillation-based incremental learning framework, facilitating the gradual assimilation of new information from non-stationary data streams while avoiding catastrophic forgetting. Our approach provides a unified solution for tackling both class- and domain-incremental learning scenarios. We demonstrate the flexibility of our method in handling varying class numbers within a unified network and its capacity for incremental learning. Experimental results on an incompletely annotated, multi-modal, multi-source dataset for medical image segmentation underscore its superiority over state-of-the-art alternative approaches.
format Preprint
id arxiv_https___arxiv_org_abs_2405_16328
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publishDate 2024
record_format arxiv
spellingShingle A Classifier-Free Incremental Learning Framework for Scalable Medical Image Segmentation
Chen, Xiaoyang
Zheng, Hao
Xie, Yifang
Ma, Yuncong
Li, Tengfei
Computer Vision and Pattern Recognition
Current methods for developing foundation models in medical image segmentation rely on two primary assumptions: a fixed set of classes and the immediate availability of a substantial and diverse training dataset. However, this can be impractical due to the evolving nature of imaging technology and patient demographics, as well as labor-intensive data curation, limiting their practical applicability and scalability. To address these challenges, we introduce a novel segmentation paradigm enabling the segmentation of a variable number of classes within a single classifier-free network, featuring an architecture independent of class number. This network is trained using contrastive learning and produces discriminative feature representations that facilitate straightforward interpretation. Additionally, we integrate this strategy into a knowledge distillation-based incremental learning framework, facilitating the gradual assimilation of new information from non-stationary data streams while avoiding catastrophic forgetting. Our approach provides a unified solution for tackling both class- and domain-incremental learning scenarios. We demonstrate the flexibility of our method in handling varying class numbers within a unified network and its capacity for incremental learning. Experimental results on an incompletely annotated, multi-modal, multi-source dataset for medical image segmentation underscore its superiority over state-of-the-art alternative approaches.
title A Classifier-Free Incremental Learning Framework for Scalable Medical Image Segmentation
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2405.16328