CVLGJun 17, 2021

Always Be Dreaming: A New Approach for Data-Free Class-Incremental Learning

arXiv:2106.09701v2209 citations
AI Analysis

This addresses the problem of learning new concepts over time without storing past data, which is crucial for applications with memory or legal constraints, though it is an incremental improvement over existing methods.

The paper tackles catastrophic forgetting in data-free class-incremental learning by proposing a novel incremental distillation strategy, resulting in up to a 25.1% increase in final task accuracy compared to state-of-the-art methods.

Modern computer vision applications suffer from catastrophic forgetting when incrementally learning new concepts over time. The most successful approaches to alleviate this forgetting require extensive replay of previously seen data, which is problematic when memory constraints or data legality concerns exist. In this work, we consider the high-impact problem of Data-Free Class-Incremental Learning (DFCIL), where an incremental learning agent must learn new concepts over time without storing generators or training data from past tasks. One approach for DFCIL is to replay synthetic images produced by inverting a frozen copy of the learner's classification model, but we show this approach fails for common class-incremental benchmarks when using standard distillation strategies. We diagnose the cause of this failure and propose a novel incremental distillation strategy for DFCIL, contributing a modified cross-entropy training and importance-weighted feature distillation, and show that our method results in up to a 25.1% increase in final task accuracy (absolute difference) compared to SOTA DFCIL methods for common class-incremental benchmarks. Our method even outperforms several standard replay based methods which store a coreset of images.

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