Intermediate Domain-guided Adaptation for Unsupervised Chorioallantoic Membrane Vessel Segmentation

Bibliographic Details
Title: Intermediate Domain-guided Adaptation for Unsupervised Chorioallantoic Membrane Vessel Segmentation
Authors: Song, Pengwu, Xu, Liang, Yao, Peng, Shen, Shuwei, Shao, Pengfei, Sun, Mingzhai, Xu, Ronald X.
Publication Year: 2025
Subject Terms: Electrical Engineering and Systems Science - Image and Video Processing
More Details: The chorioallantoic membrane (CAM) model is widely employed in angiogenesis research, and distribution of growing blood vessels is the key evaluation indicator. As a result, vessel segmentation is crucial for quantitative assessment based on topology and morphology. However, manual segmentation is extremely time-consuming, labor-intensive, and prone to inconsistency due to its subjective nature. Moreover, research on CAM vessel segmentation algorithms remains limited, and the lack of public datasets contributes to poor prediction performance. To address these challenges, we propose an innovative Intermediate Domain-guided Adaptation (IDA) method, which utilizes the similarity between CAM images and retinal images, along with existing public retinal datasets, to perform unsupervised training on CAM images. Specifically, we introduce a Multi-Resolution Asymmetric Translation (MRAT) strategy to generate intermediate images to promote image-level interaction. Then, an Intermediate Domain-guided Contrastive Learning (IDCL) module is developed to disentangle cross-domain feature representations. This method overcomes the limitations of existing unsupervised domain adaptation (UDA) approaches, which primarily concentrate on directly source-target alignment while neglecting intermediate domain information. Notably, we create the first CAM dataset to validate the proposed algorithm. Extensive experiments on this dataset show that our method outperforms compared approaches. Moreover, it achieves superior performance in UDA tasks across retinal datasets, highlighting its strong generalization capability. The CAM dataset and source codes are available at https://github.com/Light-47/IDA.
Document Type: Working Paper
Access URL: http://arxiv.org/abs/2503.03546
Accession Number: edsarx.2503.03546
Database: arXiv
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