Polyp-SAM++: Can A Text Guided SAM Perform Better for Polyp Segmentation?

12 Aug 2023  ·  Risab Biswas ·

Meta recently released SAM (Segment Anything Model) which is a general-purpose segmentation model. SAM has shown promising results in a wide variety of segmentation tasks including medical image segmentation. In the field of medical image segmentation, polyp segmentation holds a position of high importance, thus creating a model which is robust and precise is quite challenging. Polyp segmentation is a fundamental task to ensure better diagnosis and cure of colorectal cancer. As such in this study, we will see how Polyp-SAM++, a text prompt-aided SAM, can better utilize a SAM using text prompting for robust and more precise polyp segmentation. We will evaluate the performance of a text-guided SAM on the polyp segmentation task on benchmark datasets. We will also compare the results of text-guided SAM vs unprompted SAM. With this study, we hope to advance the field of polyp segmentation and inspire more, intriguing research. The code and other details will be made publically available soon at https://github.com/RisabBiswas/Polyp-SAM++.

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Task Dataset Model Metric Name Metric Value Global Rank Result Benchmark
Medical Image Segmentation CVC-ClinicDB Polyp-SAM++ mean Dice 0.915 # 28
mIoU 0.86 # 3
F-measure 0.91 # 1
Medical Image Segmentation Kvasir-SEG Polyp-SAM++ mean Dice 0.902 # 28
mIoU 0.862 # 21
F-measure 0.92 # 1

Methods