Hand Gesture Recognition in Automotive Human–Machine Interaction Using Depth Cameras

In this review, we describe current Machine Learning approaches to hand gesture recognition with depth data from time-of-flight sensors. In particular, we summarise the achievements on a line of research at the Computational Neuroscience laboratory at the Ruhr West University of Applied Sciences. Re...

Full description

Bibliographic Details
Main Authors: Nico Zengeler, Thomas Kopinski, Uwe Handmann
Format: Article
Language:English
Published: MDPI AG 2018-12-01
Series:Sensors
Subjects:
Online Access:http://www.mdpi.com/1424-8220/19/1/59
id doaj-e851dddc737c497cbfbac8138b62aeef
record_format Article
spelling doaj-e851dddc737c497cbfbac8138b62aeef2020-11-25T00:17:16ZengMDPI AGSensors1424-82202018-12-011915910.3390/s19010059s19010059Hand Gesture Recognition in Automotive Human–Machine Interaction Using Depth CamerasNico Zengeler0Thomas Kopinski1Uwe Handmann2Hochschule Ruhr West, University of Applied Sciences, 46236 Bottrop, GermanySouth Westphalia University of Applied Sciences, 59872 Meschede, GermanyHochschule Ruhr West, University of Applied Sciences, 46236 Bottrop, GermanyIn this review, we describe current Machine Learning approaches to hand gesture recognition with depth data from time-of-flight sensors. In particular, we summarise the achievements on a line of research at the Computational Neuroscience laboratory at the Ruhr West University of Applied Sciences. Relating our results to the work of others in this field, we confirm that Convolutional Neural Networks and Long Short-Term Memory yield most reliable results. We investigated several sensor data fusion techniques in a deep learning framework and performed user studies to evaluate our system in practice. During our course of research, we gathered and published our data in a novel benchmark dataset (REHAP), containing over a million unique three-dimensional hand posture samples.http://www.mdpi.com/1424-8220/19/1/59neural networkshand gesture recognitiontime-of-flight sensorsautomotive human–machine interaction
collection DOAJ
language English
format Article
sources DOAJ
author Nico Zengeler
Thomas Kopinski
Uwe Handmann
spellingShingle Nico Zengeler
Thomas Kopinski
Uwe Handmann
Hand Gesture Recognition in Automotive Human–Machine Interaction Using Depth Cameras
Sensors
neural networks
hand gesture recognition
time-of-flight sensors
automotive human–machine interaction
author_facet Nico Zengeler
Thomas Kopinski
Uwe Handmann
author_sort Nico Zengeler
title Hand Gesture Recognition in Automotive Human–Machine Interaction Using Depth Cameras
title_short Hand Gesture Recognition in Automotive Human–Machine Interaction Using Depth Cameras
title_full Hand Gesture Recognition in Automotive Human–Machine Interaction Using Depth Cameras
title_fullStr Hand Gesture Recognition in Automotive Human–Machine Interaction Using Depth Cameras
title_full_unstemmed Hand Gesture Recognition in Automotive Human–Machine Interaction Using Depth Cameras
title_sort hand gesture recognition in automotive human–machine interaction using depth cameras
publisher MDPI AG
series Sensors
issn 1424-8220
publishDate 2018-12-01
description In this review, we describe current Machine Learning approaches to hand gesture recognition with depth data from time-of-flight sensors. In particular, we summarise the achievements on a line of research at the Computational Neuroscience laboratory at the Ruhr West University of Applied Sciences. Relating our results to the work of others in this field, we confirm that Convolutional Neural Networks and Long Short-Term Memory yield most reliable results. We investigated several sensor data fusion techniques in a deep learning framework and performed user studies to evaluate our system in practice. During our course of research, we gathered and published our data in a novel benchmark dataset (REHAP), containing over a million unique three-dimensional hand posture samples.
topic neural networks
hand gesture recognition
time-of-flight sensors
automotive human–machine interaction
url http://www.mdpi.com/1424-8220/19/1/59
work_keys_str_mv AT nicozengeler handgesturerecognitioninautomotivehumanmachineinteractionusingdepthcameras
AT thomaskopinski handgesturerecognitioninautomotivehumanmachineinteractionusingdepthcameras
AT uwehandmann handgesturerecognitioninautomotivehumanmachineinteractionusingdepthcameras
_version_ 1725380083230703616