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A survey on automatic image semantic segmentation techniques
PhD Qualifying Examination Title: "A survey on automatic image semantic segmentation techniques" by Mr. Honghui Zhang Abstract: emantic segmentation, assigning each pixel in an image to one of several pre-de ned semantic categories, has many application of high practical value. In this survey, some state-of-the-art semantic segmentation techniques are reviewed,including the learning based methods and the label transfer based methods. In the learning based methods, semantic segmentation is treated as a supervised classi cation problem.They usually train a statistical model by using some given training data fi rst, like the widely graphical model, and then segment new images with the trained model. The label transfer based method works with a totally di erent way. The semantic segmentation problem is reduced to match the test image to an existing set of images with annotation, and transfer the annotation from these annotated images to the test image. Together with the advantages and disadvantages of each class of methods, some future directions in semantic segmentation will be discussed in this survey. Date: Monday, 30 August 2010 Time: 2:30pm - 4:30pm Venue: Room 3501 lifts 25/26 Committee Members: Prof. Long Quan (Supervisor) Dr. Huamin Qu (Chairperson) Dr. Pedro Sander Dr. Chiew-Lan Tai **** ALL are Welcome ****