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Personalized Fall Detection by Balancing Data with Selective Feedback Using Contrastive Learning

arXiv cs.LG / 3/19/2026

💬 OpinionModels & Research

Key Points

  • The paper proposes a personalization framework for fall detection that balances informative user feedback using semi-supervised clustering and contrastive learning to address data imbalance between falls and non-falls.
  • It aims to identify and balance the most informative feedback samples to improve sensitivity to true fall events for real-world deployment.
  • The authors evaluate three retraining strategies—Training from Scratch (TFS), Transfer Learning (TL), and Few-Shot Learning (FSL)—and report that TFS achieves the highest performance with up to 25% improvement over the baseline, while FSL shows a 7% improvement.
  • Real-time experiments with ten participants demonstrate the effectiveness of selective personalization for real-world deployment.

Abstract

Personalized fall detection models can significantly improve accuracy by adapting to individual motion patterns, yet their effectiveness is often limited by the scarcity of real-world fall data and the dominance of non-fall feedback samples. This imbalance biases the model toward routine activities and weakens its sensitivity to true fall events. To address this challenge, we propose a personalization framework that combines semi-supervised clustering with contrastive learning to identify and balance the most informative user feedback samples. The framework is evaluated under three retraining strategies, including Training from Scratch (TFS), Transfer Learning (TL), and Few-Shot Learning (FSL), to assess adaptability across learning paradigms. Real-time experiments with ten participants show that the TFS approach achieves the highest performance, with up to a 25% improvement over the baseline, while FSL achieves the second-highest performance with a 7% improvement, demonstrating the effectiveness of selective personalization for real-world deployment.