Gated Adaptation for Continual Learning in Human Activity Recognition
Reza Rahimi Azghan, Gautham Krishna Gudur, Mohit Malu, Edison Thomaz, Giulia Pedrielli, Pavan Turaga, Hassan Ghasemzadeh

TL;DR
This paper introduces a parameter-efficient continual learning method for human activity recognition using wearable sensors, which reduces forgetting and improves accuracy by gating pretrained features without extensive retraining.
Contribution
The authors propose a gating-based adaptation framework that operates through feature selection, preserving pretrained representations while enabling subject-specific learning in HAR.
Findings
Significantly reduces forgetting from 39.7% to 16.2%.
Improves final accuracy from 56.7% to 77.7%.
Uses less than 2% of parameters for adaptation.
Abstract
Wearable sensors in Internet of Things (IoT) ecosystems increasingly support applications such as remote health monitoring, elderly care, and smart home automation, all of which rely on robust human activity recognition (HAR). Continual learning systems must balance plasticity (learning new tasks) with stability (retaining prior knowledge), yet AI models often exhibit catastrophic forgetting, where learning new tasks degrades performance on earlier ones. This challenge is especially acute in domain-incremental HAR, where on-device models must adapt to new subjects with distinct movement patterns while maintaining accuracy on prior subjects without transmitting sensitive data to the cloud. We propose a parameter-efficient continual learning framework based on channel-wise gated modulation of frozen pretrained representations. Our key insight is that adaptation should operate through…
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Taxonomy
TopicsContext-Aware Activity Recognition Systems · Domain Adaptation and Few-Shot Learning · Human Pose and Action Recognition
