rWISDM: Repaired WISDM, a Public Dataset for Human Activity Recognition
Mohammadreza Heydarian, Thomas E. Doyle

TL;DR
This paper identifies and repairs issues in the WISDM dataset to improve the reliability and performance of human activity recognition systems using deep learning, thereby enhancing trust in AI-based HAR applications.
Contribution
The paper introduces a repaired version of the WISDM dataset, addressing hidden issues that affect classifier performance and trust, and provides methods for dataset correction.
Findings
Dataset issues reduced classifier accuracy
Repaired dataset improved robustness of HAR models
Enhanced dataset trustworthiness for future research
Abstract
Human Activity Recognition (HAR) has become a spotlight in recent scientific research because of its applications in various domains such as healthcare, athletic competitions, smart cities, and smart home. While researchers focus on the methodology of processing data, users wonder if the Artificial Intelligence (AI) methods used for HAR can be trusted. Trust depends mainly on the reliability or robustness of the system. To investigate the robustness of HAR systems, we analyzed several suitable current public datasets and selected WISDM for our investigation of Deep Learning approaches. While the published specification of WISDM matched our fundamental requirements (e.g., large, balanced, multi-hardware), several hidden issues were found in the course of our analysis. These issues reduce the performance and the overall trust of the classifier. By identifying the problems and repairing…
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Taxonomy
TopicsContext-Aware Activity Recognition Systems · IoT and Edge/Fog Computing · Adversarial Robustness in Machine Learning
