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Weakly Supervised Few-shot Object Segmentation using Co-Attention with
  Visual and Semantic Embeddings

Weakly Supervised Few-shot Object Segmentation using Co-Attention with Visual and Semantic Embeddings

26 January 2020
Mennatullah Siam
Naren Doraiswamy
Boris N. Oreshkin
Hengshuai Yao
Martin Jägersand
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Papers citing "Weakly Supervised Few-shot Object Segmentation using Co-Attention with Visual and Semantic Embeddings"

4 / 4 papers shown
Title
Query Semantic Reconstruction for Background in Few-Shot Segmentation
Query Semantic Reconstruction for Background in Few-Shot Segmentation
Haoyan Guan
Michael W. Spratling
29
3
0
21 Oct 2022
CobNet: Cross Attention on Object and Background for Few-Shot
  Segmentation
CobNet: Cross Attention on Object and Background for Few-Shot Segmentation
Haoyan Guan
Michael W. Spratling
27
0
0
21 Oct 2022
Self-Supervision with Superpixels: Training Few-shot Medical Image
  Segmentation without Annotation
Self-Supervision with Superpixels: Training Few-shot Medical Image Segmentation without Annotation
Cheng Ouyang
C. Biffi
Chia-Ju Chen
Turkay Kart
Huaqi Qiu
Daniel Rueckert
25
205
0
20 Jul 2020
Water level prediction from social media images with a multi-task
  ranking approach
Water level prediction from social media images with a multi-task ranking approach
P. Chaudhary
Stefano Dáronco
J. Leitão
K. Schindler
Jan Dirk Wegner
26
46
0
14 Jul 2020
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