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Main Authors: Kaur, Manpreet, Tomar, Ankur, Mishra, Srijan, Verma, Shashwat
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2412.01935
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author Kaur, Manpreet
Tomar, Ankur
Mishra, Srijan
Verma, Shashwat
author_facet Kaur, Manpreet
Tomar, Ankur
Mishra, Srijan
Verma, Shashwat
contents Deep Learning methods are highly local and sensitive to the domain of data they are trained with. Even a slight deviation from the domain distribution affects prediction accuracy of deep networks significantly. In this work, we have investigated a set of techniques aimed at increasing accuracy of generator networks which perform translation from one domain to the other in an adversarial setting. In particular, we experimented with activations, the encoder-decoder network architectures, and introduced a Loss called cyclic loss to constrain the Generator network so that it learns effective source-target translation. This machine learning problem is motivated by myriad applications that can be derived from domain adaptation networks like generating labeled data from synthetic inputs in an unsupervised fashion, and using these translation network in conjunction with the original domain network to generalize deep learning networks across domains.
format Preprint
id arxiv_https___arxiv_org_abs_2412_01935
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Cross Domain Adaptation using Adversarial networks with Cyclic loss
Kaur, Manpreet
Tomar, Ankur
Mishra, Srijan
Verma, Shashwat
Machine Learning
Artificial Intelligence
Deep Learning methods are highly local and sensitive to the domain of data they are trained with. Even a slight deviation from the domain distribution affects prediction accuracy of deep networks significantly. In this work, we have investigated a set of techniques aimed at increasing accuracy of generator networks which perform translation from one domain to the other in an adversarial setting. In particular, we experimented with activations, the encoder-decoder network architectures, and introduced a Loss called cyclic loss to constrain the Generator network so that it learns effective source-target translation. This machine learning problem is motivated by myriad applications that can be derived from domain adaptation networks like generating labeled data from synthetic inputs in an unsupervised fashion, and using these translation network in conjunction with the original domain network to generalize deep learning networks across domains.
title Cross Domain Adaptation using Adversarial networks with Cyclic loss
topic Machine Learning
Artificial Intelligence
url https://arxiv.org/abs/2412.01935