Monash University
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Learning Adaptively with Few Observations and its Applications in Computer Vision

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thesis
posted on 2022-12-12, 00:56 authored by RONGKAI MA
In this thesis, we investigate developing machine learning models that can adapt to new tasks and environments rapidly with few observations. To this end, we propose to tackle the problem by learning an adaptive metric space, learning a set of more generalized priors, and learning additional parameters. Empirically, we also show that such adaptation methods can benefit the visual tracking task.

History

Campus location

Australia

Principal supervisor

Mehrtash Harandi

Additional supervisor 1

Tom Drummond

Year of Award

2022

Department, School or Centre

Electrical and Computer Systems Engineering

Course

Doctor of Philosophy

Degree Type

DOCTORATE

Faculty

Faculty of Engineering

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