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Coarse-to-Fine Covid-19 Segmentation via Vision-Language Alignment

dandan shan (Xiamen University); Zihan Li (University of Illinois at Urbana-Champaign); Wentao Chen (Beijing University of Posts and Telecommunications); Qingde Li (University of Hull); Jie Tian (); Qingqi Hong (Xiamen University)

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06 Jun 2023

Segmentation of COVID-19 lesions can assist physicians in better diagnosis and treatment of COVID-19. However, there are few relevant studies due to the lack of detailed information and high-quality annotation in the COVID-19 dataset. To solve the above problem, we propose C2FVL, a Coarse-to-Fine segmentation framework via Vision-Language alignment to merge text information containing the number of lesions and specific locations of image information. Introducing text information allows the network to achieve better prediction results on challenging datasets. We conduct extensive experiments on two COVID-19 datasets, including chest X-ray and CT, and the results demonstrate that our proposed method outperforms other state-of-the-art segmentation methods.

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