Deep Learning for Perception: Project Proposal Guidelines
Explore the guidelines for submitting a project proposal in the course ECE 6504 - Deep Learning for Perception. Learn about the necessary information required for the proposal webpage, project categories, main deliverables, and milestones. Understand the expectations regarding project teams, software libraries, data sets, and experimental results. Get insights into the importance of deconvolution and Toeplitz matrices in deep learning applications.
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ECE 6504: Deep Learning for Perception Topics: Deconvolution Dhruv Batra Virginia Tech
Administrativia HW2 Out today Due in 2 weeks Please please please please please start early https://computing.ece.vt.edu/~f15ece6504/homework2/ Project Proposal Due: Oct 2, 11:59pm webpage (C) Dhruv Batra 2
Project Groups of 1-3 we prefer teams of 1 or 2 Deliverables: Project proposal: webpage with abstract + picture + goals Final report: webpage with results (C) Dhruv Batra 3
Proposal Webpage Necessary Information: Project title Project idea. This should be approximately two paragraphs. Data set details Ideally existing dataset. No data-collection projects. Software Which libraries will you use? What will you write? Papers to read. Include 1-3 relevant papers. You will probably want to read at least one of them before submitting your proposal. Teammate Will you have a teammate? If so, what s the break-down of labor? Maximum team size is 3 students. Mid-sem Milestone What will you complete by the project milestone due date? Experimental results of some kind are expected here. (C) Dhruv Batra 4
Project Main categories Application/Survey Compare a bunch of existing algorithms on a new application domain of your interest Formulation/Development Formulate a new model or algorithm for a new or old problem Theory Theoretically analyze an existing algorithm Rules Should fit in Deep Learning Can apply DL to your own research. Must be done this semester. OK to combine with other class-projects Must declare to both course instructors Must have explicit permission from BOTH instructors Must have a sufficient ML component (C) Dhruv Batra 5
Plan for Today Deconvolution 1D with Toeplitz Matrix 2D deconv intuition (C) Dhruv Batra 6
Toeplitz Matrix Diagonals are constants Aij = ai-j (C) Dhruv Batra 7
Why do we care? (Discrete) Convolution = Matrix Multiplication with Toeplitz Matrices (C) Dhruv Batra 8
"Convolution of box signal with itself2" by Convolution_of_box_signal_with_itself.gif: Brian Ambergderivative work: Tinos (talk) - Convolution_of_box_signal_with_itself.gif. Licensed under CC BY-SA 3.0 via Commons - https://commons.wikimedia.org/wiki/File:Convolution_of_box_signal_with_itself2.gif#/media/File:Convolution_of_box_signal_wi th_itself2.gif (C) Dhruv Batra 9