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Ariadne's Thread:Using Text Prompts to Improve Segmentation of Infected Areas from Chest X-ray images

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arxiv 2307.03942 v1 pith:M7JXMVCW submitted 2023-07-08 eess.IV cs.CV

Ariadne's Thread:Using Text Prompts to Improve Segmentation of Infected Areas from Chest X-ray images

classification eess.IV cs.CV
keywords methodssegmentationtextareasdataimageimage-onlyimprove
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Segmentation of the infected areas of the lung is essential for quantifying the severity of lung disease like pulmonary infections. Existing medical image segmentation methods are almost uni-modal methods based on image. However, these image-only methods tend to produce inaccurate results unless trained with large amounts of annotated data. To overcome this challenge, we propose a language-driven segmentation method that uses text prompt to improve to the segmentation result. Experiments on the QaTa-COV19 dataset indicate that our method improves the Dice score by 6.09% at least compared to the uni-modal methods. Besides, our extended study reveals the flexibility of multi-modal methods in terms of the information granularity of text and demonstrates that multi-modal methods have a significant advantage over image-only methods in terms of the size of training data required.

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