Towards Generalizable Human Activity Recognition: A Survey
Yize Cai, Baoshen Guo, Flora Salim, Zhiqing Hong

TL;DR
This survey reviews 229 papers on IMU-based human activity recognition, focusing on methods to improve generalization across diverse users and environments, and discusses challenges and future research directions in the field.
Contribution
It provides a comprehensive overview of recent methodologies, datasets, and tools for generalizable HAR, highlighting new model-centric and data-centric approaches and outlining future research avenues.
Findings
Categorized approaches into model-centric and data-centric methods.
Summarized key datasets, tools, and benchmarks in the field.
Discussed challenges like data scarcity and evaluation reliability.
Abstract
As a critical component of Wearable AI, IMU-based Human Activity Recognition (HAR) has attracted increasing attention from both academia and industry in recent years. Although HAR performance has improved considerably in specific scenarios, its generalization capability remains a key barrier to widespread real-world adoption. For example, domain shifts caused by variations in users, sensor positions, or environments can significantly decrease the performance in practice. As a result, in this survey, we explore the rapidly evolving field of IMU-based generalizable HAR, reviewing 229 research papers alongside 25 publicly available datasets to provide a broad and insightful overview. We first present the background and overall framework of IMU-based HAR tasks, as well as the generalization-oriented training settings. Then, we categorize representative methodologies from two perspectives:…
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Taxonomy
TopicsContext-Aware Activity Recognition Systems · Human Pose and Action Recognition
