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Project

Designing High-Performing Networks for Multi-Scale Computer Vision

Since the emergence of deep learning, the computer vision field has flourished with models improving at a rapid pace on more and more complex tasks. We distinguish three main ways to improve a computer vision model: (1) improving the data aspect by for example training on a large, more diverse dataset, (2) improving the training aspect by for example designing a better optimizer, and (3) improving the network architecture (or network for short).

In this PhD, we choose to improve to latter, \ie improving the network designs of computer vision models. More specifically, we investigate new network designs for multi-scale computer vision tasks, which are tasks requiring to make predictions about concepts at different scales. The goal of these new network designs is to outperform existing baseline designs from the literature. Specific care is taken to make sure the comparisons are fair, by guaranteeing that the different network designs were trained and evaluated with the same settings. Various methods and techniques are put forward achieving the desired goals.

Date:23 Oct 2019 →  24 Jan 2024
Keywords:Computer Vision, Autonomous Driving, Deep Neural Networks
Disciplines:Computer vision
Project type:PhD project