AI RESEARCH

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

arXiv CS.LG

ArXi:2603.17148v1 Announce Type: new 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.