This paper reformulates cross-dataset human pose estimation as a continual learning task, aiming to integrate new keypoints and pose variations into existing models without losing accuracy on previously learned datasets. We benchmark this formulation against established regularization-based methods for mitigating catastrophic forgetting, including EWC, LFL, and LwF. Moreover, we propose a novel regularization method called Importance-Weighted Distillation (IWD), which enhances conventional LwF by introducing a layer-wise distillation penalty and dynamic temperature adjustment based on layer importance for previously learned knowledge. This allows for a controlled adaptation to new tasks that respects the stability-plasticity balance critical in continual learning. Through extensive experiments across three datasets, we demonstrate that our approach outperforms existing regularization-based continual learning strategies. IWD shows an average improvement of 3.60% over the state-of-the-art LwF method. The results highlight the potential of our method to serve as a robust framework for real-world applications where models must evolve with new data without forgetting past knowledge.
Continual Human Pose Estimation for Incremental Integration of Keypoints and Pose Variations
A novel regularization method, Importance-Weighted Distillation, enhances continual learning in cross-dataset human pose estimation by integrating new data while maintaining accuracy on previously learned tasks.
- Year
- 2024
- Venue
- arXiv 2024
- Authors
- 4
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- Abstract onlyARXIV-DEFAULT
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- arxiv.org/abs/2409.20469ARXIV-DEFAULT
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