Incremental Class Learning using Variational Autoencoders with Similarity Learning
Jiahao Huo, Terence L. van Zyl

TL;DR
This paper investigates catastrophic forgetting in incremental class learning with similarity-based loss functions, proposing a VAE-based method that outperforms existing techniques without needing stored exemplars.
Contribution
It introduces a novel VAE-based exemplar generation technique for incremental learning with similarity loss functions, reducing reliance on stored images.
Findings
Angular loss is least affected by forgetting.
VAE-based method outperforms state-of-the-art techniques.
Representation generation helps preserve embedding space regions.
Abstract
Catastrophic forgetting in neural networks during incremental learning remains a challenging problem. Previous research investigated catastrophic forgetting in fully connected networks, with some earlier work exploring activation functions and learning algorithms. Applications of neural networks have been extended to include similarity learning. Understanding how similarity learning loss functions would be affected by catastrophic forgetting is of significant interest. Our research investigates catastrophic forgetting for four well-known similarity-based loss functions during incremental class learning. The loss functions are Angular, Contrastive, Center, and Triplet loss. Our results show that the catastrophic forgetting rate differs across loss functions on multiple datasets. The Angular loss was least affected, followed by Contrastive, Triplet loss, and Center loss with good mining…
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Taxonomy
TopicsDomain Adaptation and Few-Shot Learning · Multimodal Machine Learning Applications · COVID-19 diagnosis using AI
MethodsElastic Weight Consolidation
