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Main Authors: Goni, Osman, Arka, Himadri Saha, Halder, Mithun, Shibly, Mir Moynuddin Ahmed, Shatabda, Swakkhar
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2503.19074
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author Goni, Osman
Arka, Himadri Saha
Halder, Mithun
Shibly, Mir Moynuddin Ahmed
Shatabda, Swakkhar
author_facet Goni, Osman
Arka, Himadri Saha
Halder, Mithun
Shibly, Mir Moynuddin Ahmed
Shatabda, Swakkhar
contents Recent advances in Generative Adversarial Networks (GANs) have demonstrated their capability for producing high-quality images. However, a significant challenge remains mode collapse, which occurs when the generator produces a limited number of data patterns that do not reflect the diversity of the training dataset. This study addresses this issue by proposing a number of architectural changes aimed at increasing the diversity and stability of GAN models. We start by improving the loss function with Wasserstein loss and Gradient Penalty to better capture the full range of data variations. We also investigate various network architectures and conclude that ResNet significantly contributes to increased diversity. Building on these findings, we introduce HingeRLC-GAN, a novel approach that combines RLC Regularization and the Hinge loss function. With a FID Score of 18 and a KID Score of 0.001, our approach outperforms existing methods by effectively balancing training stability and increased diversity.
format Preprint
id arxiv_https___arxiv_org_abs_2503_19074
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle HingeRLC-GAN: Combating Mode Collapse with Hinge Loss and RLC Regularization
Goni, Osman
Arka, Himadri Saha
Halder, Mithun
Shibly, Mir Moynuddin Ahmed
Shatabda, Swakkhar
Machine Learning
Artificial Intelligence
Recent advances in Generative Adversarial Networks (GANs) have demonstrated their capability for producing high-quality images. However, a significant challenge remains mode collapse, which occurs when the generator produces a limited number of data patterns that do not reflect the diversity of the training dataset. This study addresses this issue by proposing a number of architectural changes aimed at increasing the diversity and stability of GAN models. We start by improving the loss function with Wasserstein loss and Gradient Penalty to better capture the full range of data variations. We also investigate various network architectures and conclude that ResNet significantly contributes to increased diversity. Building on these findings, we introduce HingeRLC-GAN, a novel approach that combines RLC Regularization and the Hinge loss function. With a FID Score of 18 and a KID Score of 0.001, our approach outperforms existing methods by effectively balancing training stability and increased diversity.
title HingeRLC-GAN: Combating Mode Collapse with Hinge Loss and RLC Regularization
topic Machine Learning
Artificial Intelligence
url https://arxiv.org/abs/2503.19074