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Anytime, Anywhere, Anyone: Investigating the Feasibility of Segment
  Anything Model for Crowd-Sourcing Medical Image Annotations

Anytime, Anywhere, Anyone: Investigating the Feasibility of Segment Anything Model for Crowd-Sourcing Medical Image Annotations

22 March 2024
Pranav Kulkarni
Adway U. Kanhere
Dharmam Savani
Andrew Chan
Devina Chatterjee
Paul H. Yi
Vishwa S. Parekh
    MedIm
ArXivPDFHTML

Papers citing "Anytime, Anywhere, Anyone: Investigating the Feasibility of Segment Anything Model for Crowd-Sourcing Medical Image Annotations"

3 / 3 papers shown
Title
There is no SAMantics! Exploring SAM as a Backbone for Visual
  Understanding Tasks
There is no SAMantics! Exploring SAM as a Backbone for Visual Understanding Tasks
Miguel Espinosa
Chenhongyi Yang
Linus Ericsson
Jingyu Sun
Elliot J. Crowley
VLM
77
0
0
22 Nov 2024
A Survey on Segment Anything Model (SAM): Vision Foundation Model Meets
  Prompt Engineering
A Survey on Segment Anything Model (SAM): Vision Foundation Model Meets Prompt Engineering
Chaoning Zhang
Fachrina Dewi Puspitasari
Sheng Zheng
Chenghao Li
Yu Qiao
...
Caiyan Qin
François Rameau
Lik-Hang Lee
Sung-Ho Bae
Choong Seon Hong
VLM
84
63
0
12 May 2023
U-Net: Convolutional Networks for Biomedical Image Segmentation
U-Net: Convolutional Networks for Biomedical Image Segmentation
Olaf Ronneberger
Philipp Fischer
Thomas Brox
SSeg
3DV
429
76,039
0
18 May 2015
1