Student research opportunities
Image Segmentation and Scene Understanding
Project Code: CECS_817
This project is available at the following levels:
CS single semester, Honours, Summer Scholar, Masters
Keywords:
computer vision, machine learning
Supervisor:
Professor Stephen GouldOutline:
Programming a computer to automatically interpret the content of an image is a long-standing challenge in artificial intelligence and computer vision. One way to interpret an image is via semantic segmentation, which is the task of automatically breaking an image into objects and regions and labelling each with a semantic class label (such as road, building, person, car, etc).
In this project you will work on cutting-edge computer vision and machine learning algorithms (including deep learning) to enhance the state-of-the-art in semantic segmentation.
Goals of this project
Develop algorithms and software for semantic segmentation. Work done in this project could lead to a scientific publication in a top quality conference or journal.
Requirements/Prerequisites
Strong programming skills in C++, Matlab and/or Python are required. A background in computer vision and machine learning is desirable.
Student Gain
Experience it cutting-edge research in machine learning and computer vision.
Background Literature
* http://users.cecs.anu.edu.au/~sgould/papers/cacm14-scene.pdf
* http://users.cecs.anu.edu.au/~sgould/papers/eccv14-spgraph.pdf
* http://users.cecs.anu.edu.au/~sgould/papers/cvpr12-multiSeg.pdf
* http://users.cecs.anu.edu.au/~sgould/papers/iccv09-sceneDecomposition.pdf






