Final project
The goal of the final project is to get in-depth experience in one specific area in the field of deep-learning. You are free to choose any project as long as it involved a deep network. You may work in a group of up to 4 students.
The project may cover your research, but can not intersect with other class projects.
Timeline
- Project proposal (5%): Due Sun Oct 3.
- Preliminary report (5%): Due Sun Nov 21.
- Final report (25%): Due Sun Dec 5.
- Project presentation (5%): Nov 30 or Dec 02
Project proposal
Your project proposal should a paragraph describing:
- What problem you want to tackle
- What network you want to train
- What data you will use
- Any relevant baselines (prior work)
- A plan to evaluate your model
Each criterion has a weight of 2pt with a bias of -5pt (for a max total of 5pt).
Submission on canvas
Project milestone
Write a report 2 pages in latex cvpr format. Your report should cover
- Introduction: Motivation of your problem
- Problem statement (part of intro section): Motivation and high level overview of your solution
- Related work: Prior work and your relationship to it
- Technical approach: A detailed overview of your technical approach
- Preliminary results: State results you already obtained, and experiments you would like to still run
Each criterion has a weight of 2pt with a bias of -5pt (for a max total of 5pt).
Submission on canvas
Final report
Write a report 4 pages in latex cvpr format. Your report should cover
- Introduction: Motivation of your problem
- Problem statement (part of intro section): Motivation and high level overview of your solution
- Related work: Prior work and your relationship to it
- Technical approach:
- Originality (with respect to published work)
- Fit (Is your approach a good solution to the problem)
- Breath (Did you consider alternatives)
- Results:
- Discuss your experiments
- Ablate your method (experimentally verify that your method is better than alterantives)
- Compare to prior work
- Conclusion
Each criterion (sub-criterion) has a weight of 5pt with a bias of -25pt (for a max total of 25pt).
Submission on canvas
Please indicate external authors or contributors.
Project presentation
5 min presentation
- Introduce your topic, give some context (~1min)
- Talk about your technical approach (1-2min)
- Talk about alternatives (<1min)
- Talk about results (1-2min) 1 min Q/A
Please stick to the time limit. Presentations may be smoother if only one person presents (which is perfectly fine).