首页|Segment Anything Is Not Always Perfect:An Investigation of SAM on Different Real-world Applications

Segment Anything Is Not Always Perfect:An Investigation of SAM on Different Real-world Applications

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Recently,Meta AI Research approaches a general,promptable segment anything model(SAM)pre-trained on an unpreced-entedly large segmentation dataset(SA-1B).Without a doubt,the emergence of SAM will yield significant benefits for a wide array of practical image segmentation applications.In this study,we conduct a series of intriguing investigations into the performance of SAM across various applications,particularly in the fields of natural images,agriculture,manufacturing,remote sensing and healthcare.We analyze and discuss the benefits and limitations of SAM,while also presenting an outlook on its future development in segmentation tasks.By doing so,we aim to give a comprehensive understanding of SAM's practical applications.This work is expected to provide in-sights that facilitate future research activities toward generic segmentation.Source code is publicly available at https://github.com/Li-uTingWed/SAM-Not-Perfect.

Segment anything model(SAM)visual perceptionsegmentationfoundational modelcomputer vision

Wei Ji、Jingjing Li、Qi Bi、Tingwei Liu、Wenbo Li、Li Cheng

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University of Alberta,Edmonton T6G 2R3,Canada

Wuhan University,Wuhan 430072,China

Dalian University of Technology,Dalian 116024,China

Samsung Research America,Mountain View 94043,USA

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Mitacs,CFI-JELFNSERC Discovery grants

2024

机器智能研究(英文)
中国科学院自动化所

机器智能研究(英文)

CSTPCDEI
影响因子:0.49
ISSN:2731-538X
年,卷(期):2024.21(4)