학술논문

Air-Writing Segmentation using a single IMU-based system
Document Type
Conference
Source
2023 19th International Conference on Intelligent Environments (IE) Intelligent Environments (IE), 2023 19th International Conference on. :1-6 Jun, 2023
Subject
Computing and Processing
Visualization
Artificial neural networks
Writing
Benchmark testing
Real-time systems
Haptic interfaces
Task analysis
air-gestures
air-writing activity
wearables
segmentation
deep-learning
Language
ISSN
2472-7571
Abstract
This paper presents a novel and generic method to employ deep neural networks for segmenting in-air performed gestures to detect writing activity. We consider various factors such as temporal, geometric, and frequency constraints to define the parameters and fine-tune the deep-learning methods. The proposed method is benchmarked on air-gesture data from 50 participants, which included air-writing gestures followed and preceded by non-writing gestures. The reported results establish the potential of deep-learning methods to segment air-writing activity. The proposed novel approach provides a foundation to develop sophisticated systems for recognizing air gestures to enhance interaction in virtual and augmented reality environments.