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Recognition of Real-Time Hand Gestures using Mediapipe Holistic Model and LSTM with MLP Architecture

Maricel L. Amit, Arnel C. Fajardo, Ruji P. Medina

202218 citationsDOI

Abstract

This study used computer vision to capture real-time hand gestures using the MediaPipe Holistic Model and LSTM with MLP architecture to bridge the communication gap between the hearing majority and the deaf minority. The structure of LSTM architecture was consist of 84 neurons with a 30, 1662 input vector that will be transmitted to the MLP model. It has five layers with corresponding nodes of 84, 56, 28,14, and 7 and a dropout with rate values of 0.4 in the first, second, and third layers, while 0.5 in fourth layer. The proposed method was trained and validated with 1000 epoch which achieved a 100 percent accuracy rate in the recognition of real-time hand gesture. Additionally, the researchers envisioned to incorporate hand gesture detection into a number of real-world applications for human-computer interaction in the coming years.

Topics & Concepts

GestureComputer scienceGesture recognitionArchitectureSpeech recognitionArtificial intelligenceBridge (graph theory)Dropout (neural networks)Support vector machinePattern recognition (psychology)Machine learningArtInternal medicineMedicineVisual artsHand Gesture Recognition SystemsHearing Impairment and CommunicationTactile and Sensory Interactions
Recognition of Real-Time Hand Gestures using Mediapipe Holistic Model and LSTM with MLP Architecture | Litcius