BLAINDER—A Blender AI Add-On for Generation of Semantically Labeled Depth-Sensing Data

Common Machine-Learning (ML) approaches for scene classification require a large amount of training data. However, for classification of depth sensor data, in contrast to image data, relatively few databases are publicly available and manual generation of semantically labeled 3D point clouds is an e...

Full description

Bibliographic Details
Main Authors: Stefan Reitmann, Lorenzo Neumann, Bernhard Jung
Format: Article
Language:English
Published: MDPI AG 2021-03-01
Series:Sensors
Subjects:
Online Access:https://www.mdpi.com/1424-8220/21/6/2144
id doaj-7273a84969c54648ab01bb903558aaf4
record_format Article
spelling doaj-7273a84969c54648ab01bb903558aaf42021-03-19T00:07:00ZengMDPI AGSensors1424-82202021-03-01212144214410.3390/s21062144BLAINDER—A Blender AI Add-On for Generation of Semantically Labeled Depth-Sensing DataStefan Reitmann0Lorenzo Neumann1Bernhard Jung2Virtual Reality and Multimedia Group, Institute of Computer Science, Freiberg University of Mining and Technology, 09599 Freiberg, GermanyOperating Systems and Communication Technologies Group, Institute of Computer Science, Freiberg University of Mining and Technology, 09599 Freiberg, GermanyVirtual Reality and Multimedia Group, Institute of Computer Science, Freiberg University of Mining and Technology, 09599 Freiberg, GermanyCommon Machine-Learning (ML) approaches for scene classification require a large amount of training data. However, for classification of depth sensor data, in contrast to image data, relatively few databases are publicly available and manual generation of semantically labeled 3D point clouds is an even more time-consuming task. To simplify the training data generation process for a wide range of domains, we have developed the <i>BLAINDER</i> add-on package for the open-source 3D modeling software Blender, which enables a largely automated generation of semantically annotated point-cloud data in virtual 3D environments. In this paper, we focus on classical depth-sensing techniques Light Detection and Ranging (LiDAR) and Sound Navigation and Ranging (Sonar). Within the <i>BLAINDER</i> add-on, different depth sensors can be loaded from presets, customized sensors can be implemented and different environmental conditions (e.g., influence of rain, dust) can be simulated. The semantically labeled data can be exported to various 2D and 3D formats and are thus optimized for different ML applications and visualizations. In addition, semantically labeled images can be exported using the rendering functionalities of Blender.https://www.mdpi.com/1424-8220/21/6/2144machine learningdepth-sensinglidarsonarvirtual sensorslabeling
collection DOAJ
language English
format Article
sources DOAJ
author Stefan Reitmann
Lorenzo Neumann
Bernhard Jung
spellingShingle Stefan Reitmann
Lorenzo Neumann
Bernhard Jung
BLAINDER—A Blender AI Add-On for Generation of Semantically Labeled Depth-Sensing Data
Sensors
machine learning
depth-sensing
lidar
sonar
virtual sensors
labeling
author_facet Stefan Reitmann
Lorenzo Neumann
Bernhard Jung
author_sort Stefan Reitmann
title BLAINDER—A Blender AI Add-On for Generation of Semantically Labeled Depth-Sensing Data
title_short BLAINDER—A Blender AI Add-On for Generation of Semantically Labeled Depth-Sensing Data
title_full BLAINDER—A Blender AI Add-On for Generation of Semantically Labeled Depth-Sensing Data
title_fullStr BLAINDER—A Blender AI Add-On for Generation of Semantically Labeled Depth-Sensing Data
title_full_unstemmed BLAINDER—A Blender AI Add-On for Generation of Semantically Labeled Depth-Sensing Data
title_sort blainder—a blender ai add-on for generation of semantically labeled depth-sensing data
publisher MDPI AG
series Sensors
issn 1424-8220
publishDate 2021-03-01
description Common Machine-Learning (ML) approaches for scene classification require a large amount of training data. However, for classification of depth sensor data, in contrast to image data, relatively few databases are publicly available and manual generation of semantically labeled 3D point clouds is an even more time-consuming task. To simplify the training data generation process for a wide range of domains, we have developed the <i>BLAINDER</i> add-on package for the open-source 3D modeling software Blender, which enables a largely automated generation of semantically annotated point-cloud data in virtual 3D environments. In this paper, we focus on classical depth-sensing techniques Light Detection and Ranging (LiDAR) and Sound Navigation and Ranging (Sonar). Within the <i>BLAINDER</i> add-on, different depth sensors can be loaded from presets, customized sensors can be implemented and different environmental conditions (e.g., influence of rain, dust) can be simulated. The semantically labeled data can be exported to various 2D and 3D formats and are thus optimized for different ML applications and visualizations. In addition, semantically labeled images can be exported using the rendering functionalities of Blender.
topic machine learning
depth-sensing
lidar
sonar
virtual sensors
labeling
url https://www.mdpi.com/1424-8220/21/6/2144
work_keys_str_mv AT stefanreitmann blainderablenderaiaddonforgenerationofsemanticallylabeleddepthsensingdata
AT lorenzoneumann blainderablenderaiaddonforgenerationofsemanticallylabeleddepthsensingdata
AT bernhardjung blainderablenderaiaddonforgenerationofsemanticallylabeleddepthsensingdata
_version_ 1724214713365037056