MoRSE: Deep Learning-based Arm Gesture Recognition for Search and Rescue Operations

10/15/2022
by   Panagiotis Kasnesis, et al.
0

Efficient and quick remote communication in search and rescue operations can be life-saving for the first responders. However, while operating on the field means of communication based on text, image and audio are not suitable for several disaster scenarios. In this paper, we present a smartwatch-based application, which utilizes a Deep Learning (DL) model, to recognize a set of predefined arm gestures, maps them into Morse code via vibrations enabling remote communication amongst first responders. The model performance was evaluated by training it using 4,200 gestures performed by 7 subjects (cross-validation) wearing a smartwatch on their dominant arm. Our DL model relies on convolutional pooling and surpasses the performance of existing DL approaches and common machine learning classifiers, obtaining gesture recognition accuracy above 95 providing future directions.

READ FULL TEXT

page 4

page 5

research
01/02/2019

Adaptive EMG-based hand gesture recognition using hyperdimensional computing

Accurate recognition of hand gestures is crucial to the functionality of...
research
01/10/2020

Recognition and Localisation of Pointing Gestures using a RGB-D Camera

Non-verbal communication is part of our regular conversation, and multip...
research
06/10/2019

Learning Individual Styles of Conversational Gesture

Human speech is often accompanied by hand and arm gestures. Given audio ...
research
06/19/2023

sEMG-based Hand Gesture Recognition with Deep Learning

Hand gesture recognition based on surface electromyographic (sEMG) signa...
research
09/19/2023

On-device Real-time Custom Hand Gesture Recognition

Most existing hand gesture recognition (HGR) systems are limited to a pr...
research
09/24/2019

Learning deep representations for video-based intake gesture detection

Automatic detection of individual intake gestures during eating occasion...

Please sign up or login with your details

Forgot password? Click here to reset