Exploring the Impact of Synthetic Data on Human Gesture Recognition Tasks Using GANs
George Kontogiannis, Pantelis Tzamalis, Sotiris Nikoletseas

TL;DR
This paper investigates how GAN-generated synthetic gesture data can enhance human gesture recognition in healthcare, focusing on allergic rhinitis, and evaluates their fidelity, diversity, privacy, and impact on model generalization.
Contribution
It is the first study to synthesize motion gestures for allergic rhinitis from wearable IoT data using GANs and assess their effect on gesture recognition performance.
Findings
Synthetic data improves gesture recognition accuracy.
Models trained on synthetic data generalize well to real gestures.
GANs effectively generate diverse and high-fidelity gesture data.
Abstract
In the evolving domain of Human Activity Recognition (HAR) using Internet of Things (IoT) devices, there is an emerging interest in employing Deep Generative Models (DGMs) to address data scarcity, enhance data quality, and improve classification metrics scores. Among these types of models, Generative Adversarial Networks (GANs) have arisen as a powerful tool for generating synthetic data that mimic real-world scenarios with high fidelity. However, Human Gesture Recognition (HGR), a subset of HAR, particularly in healthcare applications, using time series data such as allergic gestures, remains highly unexplored. In this paper, we examine and evaluate the performance of two GANs in the generation of synthetic gesture motion data that compose a part of an open-source benchmark dataset. The data is related to the disease identification domain and healthcare, specifically to allergic…
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