Generalized Domain Adaptation for Visual Domains
abstract: Humans have a great ability to recognize objects in different environments irrespective of their variations. However, the same does not apply to machine learning models which are unable to generalize to images of objects from different domains. The generalization of these models to new dat...
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Online Access: | http://hdl.handle.net/2286/R.I.57226 |
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ndltd-asu.edu-item-572262020-06-02T03:01:22Z Generalized Domain Adaptation for Visual Domains abstract: Humans have a great ability to recognize objects in different environments irrespective of their variations. However, the same does not apply to machine learning models which are unable to generalize to images of objects from different domains. The generalization of these models to new data is constrained by the domain gap. Many factors such as image background, image resolution, color, camera perspective and variations in the objects are responsible for the domain gap between the training data (source domain) and testing data (target domain). Domain adaptation algorithms aim to overcome the domain gap between the source and target domains and learn robust models that can perform well across both the domains. This thesis provides solutions for the standard problem of unsupervised domain adaptation (UDA) and the more generic problem of generalized domain adaptation (GDA). The contributions of this thesis are as follows. (1) Certain and Consistent Domain Adaptation model for closed-set unsupervised domain adaptation by aligning the features of the source and target domain using deep neural networks. (2) A multi-adversarial deep learning model for generalized domain adaptation. (3) A gating model that detects out-of-distribution samples for generalized domain adaptation. The models were tested across multiple computer vision datasets for domain adaptation. The dissertation concludes with a discussion on the proposed approaches and future directions for research in closed set and generalized domain adaptation. Dissertation/Thesis Nagabandi, Bhadrinath (Author) Panchanathan, Sethuraman (Advisor) Venkateswara, Hemanth (Advisor) McDaniel, Troy (Committee member) Arizona State University (Publisher) Computer science Adversarial Computer Vision Deep Learning Domain Adaptation Machine Learning semi-supervised learning eng 72 pages Masters Thesis Computer Science 2020 Masters Thesis http://hdl.handle.net/2286/R.I.57226 http://rightsstatements.org/vocab/InC/1.0/ 2020 |
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English |
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Computer science Adversarial Computer Vision Deep Learning Domain Adaptation Machine Learning semi-supervised learning |
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Computer science Adversarial Computer Vision Deep Learning Domain Adaptation Machine Learning semi-supervised learning Generalized Domain Adaptation for Visual Domains |
description |
abstract: Humans have a great ability to recognize objects in different environments irrespective of their variations. However, the same does not apply to machine learning models which are unable to generalize to images of objects from different domains. The generalization of these models to new data is constrained by the domain gap. Many factors such as image background, image resolution, color, camera perspective and variations in the objects are responsible for the domain gap between the training data (source domain) and testing data (target domain). Domain adaptation algorithms aim to overcome the domain gap between the source and target domains and learn robust models that can perform well across both the domains.
This thesis provides solutions for the standard problem of unsupervised domain adaptation (UDA) and the more generic problem of generalized domain adaptation (GDA). The contributions of this thesis are as follows. (1) Certain and Consistent Domain Adaptation model for closed-set unsupervised domain adaptation by aligning the features of the source and target domain using deep neural networks. (2) A multi-adversarial deep learning model for generalized domain adaptation. (3) A gating model that detects out-of-distribution samples for generalized domain adaptation.
The models were tested across multiple computer vision datasets for domain adaptation.
The dissertation concludes with a discussion on the proposed approaches and future directions for research in closed set and generalized domain adaptation. === Dissertation/Thesis === Masters Thesis Computer Science 2020 |
author2 |
Nagabandi, Bhadrinath (Author) |
author_facet |
Nagabandi, Bhadrinath (Author) |
title |
Generalized Domain Adaptation for Visual Domains |
title_short |
Generalized Domain Adaptation for Visual Domains |
title_full |
Generalized Domain Adaptation for Visual Domains |
title_fullStr |
Generalized Domain Adaptation for Visual Domains |
title_full_unstemmed |
Generalized Domain Adaptation for Visual Domains |
title_sort |
generalized domain adaptation for visual domains |
publishDate |
2020 |
url |
http://hdl.handle.net/2286/R.I.57226 |
_version_ |
1719315795427721216 |