VaCDA: Variational Contrastive Alignment-based Scalable Human Activity Recognition
Soham Khisa, Avijoy Chakma

TL;DR
This paper introduces VaCDA, a novel framework combining variational autoencoders and contrastive learning to improve human activity recognition across diverse sensors and domains, addressing heterogeneity and data annotation challenges.
Contribution
We propose VaCDA, a multi-source domain adaptation method that enhances feature representation and robustness in sensor-based activity recognition using variational autoencoders and contrastive learning.
Findings
VaCDA outperforms baselines in cross-position scenarios.
VaCDA effectively reduces heterogeneity between source and target domains.
The framework improves activity recognition accuracy across multiple datasets.
Abstract
Technological advancements have led to the rise of wearable devices with sensors that continuously monitor user activities, generating vast amounts of unlabeled data. This data is challenging to interpret, and manual annotation is labor-intensive and error-prone. Additionally, data distribution is often heterogeneous due to device placement, type, and user behavior variations. As a result, traditional transfer learning methods perform suboptimally, making it difficult to recognize daily activities. To address these challenges, we use a variational autoencoder (VAE) to learn a shared, low-dimensional latent space from available sensor data. This space generalizes data across diverse sensors, mitigating heterogeneity and aiding robust adaptation to the target domain. We integrate contrastive learning to enhance feature representation by aligning instances of the same class across domains…
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Taxonomy
TopicsContext-Aware Activity Recognition Systems · Human Pose and Action Recognition · Emotion and Mood Recognition
MethodsContrastive Learning
