Weakly-and Semi-Supervised Learning of a Deep Convolutional Network for Semantic Image Segmentation

Author(s):  
George Papandreou ◽  
Liang-Chieh Chen ◽  
Kevin P. Murphy ◽  
Alan L. Yuille
Author(s):  
Tong Shen ◽  
Guosheng Lin ◽  
Chunhua Shen ◽  
Ian Reid

Semantic image segmentation is a fundamental task in image understanding. Per-pixel semantic labelling of an image benefits greatly from the ability to consider region consistency both locally and globally. However, many Fully Convolutional Network based methods do not impose such consistency, which may give rise to noisy and implausible predictions. We address this issue by proposing a dense multi-label network module that is able to encourage the region consistency at different levels. This simple but effective module can be easily integrated into any semantic segmentation systems. With comprehensive experiments, we show that the dense multi-label can successfully remove the implausible labels and clear the confusion so as to boost the performance of semantic segmentation systems.


2020 ◽  
Vol 539 ◽  
pp. 277-294
Author(s):  
Cam-Hao Hua ◽  
Thien Huynh-The ◽  
Sung-Ho Bae ◽  
Sungyoung Lee

Author(s):  
Aayush Kumar Chaudhary ◽  
Prashnna K Gyawali ◽  
Linwei Wang ◽  
Jeff B Pelz

2021 ◽  
Vol 7 (2) ◽  
pp. 37
Author(s):  
Isah Charles Saidu ◽  
Lehel Csató

We present a sample-efficient image segmentation method using active learning, we call it Active Bayesian UNet, or AB-UNet. This is a convolutional neural network using batch normalization and max-pool dropout. The Bayesian setup is achieved by exploiting the probabilistic extension of the dropout mechanism, leading to the possibility to use the uncertainty inherently present in the system. We set up our experiments on various medical image datasets and highlight that with a smaller annotation effort our AB-UNet leads to stable training and better generalization. Added to this, we can efficiently choose from an unlabelled dataset.


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