Litcius/Paper detail

A TinyML Model for Gesture-Based Air Handwriting Arabic Numbers Recognition

Ismail Lamaakal, Khalid El Makkaoui, Ibrahim Ouahbi, Yassine Maleh

2024Procedia Computer Science27 citationsDOIOpen Access PDF

Abstract

In an era where the demand for efficient and practical machine learning (ML) solutions on resource-constrained devices is evergrowing, the realm of tiny machine learning (TinyML) emerges as a promising frontier. Motivated by the need for lightweight, low-power models that can be deployed on edge devices, this research paper presents an innovative TinyML model tailored to recognize Arabic hand gestures executed in mid-air. With a primary emphasis on the precise classification of Arabic numbers through these expressive hand movements, the paper unveils a comprehensive dataflow architecture. This intricate architecture processes accelerometer and gyroscope data to derive exact 2D gesture coordinates, a fundamental component of the recognition process. The cornerstone of the proposed model is the integration of Convolutional Neural Networks (CNNs), elucidating their exceptional role in achieving an impressive 93.8% accuracy rate in the classification of diverse Arabic Numbers gestures. This remarkable level of precision underscores the model's efficacy and resilience, rendering it an ideal candidate for real-time deployment in various gesture recognition scenarios.

Topics & Concepts

Computer scienceArabicHandwritingGestureGesture recognitionSpeech recognitionArtificial intelligenceNatural language processingHandwriting recognitionLinguisticsFeature extractionPhilosophyHand Gesture Recognition SystemsHandwritten Text Recognition TechniquesHearing Impairment and Communication