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Weakly Supervised Semantic Segmentation: A Survey
PhD Qualifying Examination
Title: "Weakly Supervised Semantic Segmentation: A Survey"
by
Mr. Zhihan GAO
Abstract:
Many applications related to computer vision require efficient understanding of
input images and videos. Semantic segmentation is to understand images and
videos at pixel level, i.e., to make dense predictions of the class labels for
each pixel. Over the past few years, deep learning methods have achieved a
great success in this field and have made it a much more popular research
topic. However, manually annotated pixel-level masks, which are extremely
expensive and require experts, are highly demanded for model training. Thus, it
is important and promising to explore the training strategies of semantic
segmentation models with various forms of weak supervision, including image
tags, bounding boxes, scribbles, etc. Currently most of the weakly supervised
semantic segmentation methods are based on the network architectures that
proposed for fully supervised learning, while differ a lot in training
segmentation networks using weak labels. In this survey, we first provide a
review about semantic segmentation, including the existing state-of-the-art
methods of image semantic segmentation. Then we review the existing weakly
supervised semantic segmentation methods and categorize them according to the
types of weak supervision. Finally, we make a summary and point out some
potential research directions.
Date: Monday, 21 May 2018
Time: 10:00am - 12:00noon
Venue: Room 5508
Lifts 25/26
Committee Members: Prof. Dit-Yan Yeung (Supervisor)
Prof. Chi-Keung Tang (Chairperson)
Prof. Albert Chung
Dr. Yangqiu Song
**** ALL are Welcome ****