Blank A, Baier L, Zwingel M, Franke J (2022)
Publication Language: English
Publication Type: Conference contribution, Conference Contribution
Publication year: 2022
Publisher: publish-Ing.
City/Town: Offenburg
Book Volume: 2022
Pages Range: 829-838
Conference Proceedings Title: Proceedings of the Conference on Production Systems and Logistics
        Event location: Vancouver, Canada
        
            
    
DOI: 10.15488/12184
Beyond conventional automated tasks, autonomous robot capabilities aside to human cognitive skills are 
gaining importance. This comprises goods commissioning and material supply in intralogistics as well as 
material feeding and assembly operations in production. Deep learning-based computer vision is considered 
as enabler for autonomy. Currently, the effort to generate specific datasets is challenging. Adaptation of new 
components often also results in downtimes. The objective of this paper is to propose an augmented virtuality 
(AV) based RGBD data annotation and refinement method. The approach reduces required effort in initial 
dataset generation to enable prior system commissioning and enables dataset quality improvement up to 
operational readiness during ramp-up. In addition, remote fault intervention through a teleoperation interface
is provided to increase operational system availability. Several components within a real-world experimental 
bin-picking setup serve for evaluation. The results are quantified by comparison to established annotation 
methods and through known evaluation metrics for pose estimation in bin-picking scenarios. The results 
enable to derive accurate and more time-efficient data annotation for different algorithms. The AV approach 
shows a noticeable reduction in required effort and timespan for annotation as well as dataset refinement.
APA:
Blank, A., Baier, L., Zwingel, M., & Franke, J. (2022). Augmented Virtuality Data Annotation And Human-In-The-Loop Refinement For RGBD Data In Industrial Bin-Picking Scenarios. In Proceedings of the Conference on Production Systems and Logistics (pp. 829-838). Vancouver, Canada, CA: Offenburg: publish-Ing..
MLA:
Blank, Andreas, et al. "Augmented Virtuality Data Annotation And Human-In-The-Loop Refinement For RGBD Data In Industrial Bin-Picking Scenarios." Proceedings of the Conference on Production Systems and Logistics (CPSL 2022), Vancouver, Canada Offenburg: publish-Ing., 2022. 829-838.
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