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Real-Time Optical Flow Using Neural Networks

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Short Description

Optical flow data is an ingredient to many complex computer vision systems. There are already quite a few algorithms to determing the optical flow between to frames very well. Some of these approaches use spatial correlation of small image patches, others work by looking at few well-trackable points (corners, edges, ...) and then solve complex optimization problems to find reasonable solutions between these key points.

Evaluation of these algorithms is very time-consuming, often taking many seconds per frame on powerful workstations. This puts real-time applications out of reach, particularly on low-power and mobile platforms, where computer vision is most interesting.

We would like to take an unconventional approach to resolve this problem, training deep convolutional neural networks on





Status: Available

Looking for 1 Master or 2 semester project students
Contact: Lukas Cavigelli

Prerequisites

Knowledge of Matlab and/or C/C++
Interest in video processing and machine learning


Character

20% Theory / Literature Research
20% Software Development, 60% FPGA Development & Verification
or 80% software development

Professor

Luca Benini

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Detailed Task Description

Goals

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