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Towards Sim-to-Real Industrial Parts Classification with Synthetic Dataset

Zhu, Xiaomeng (author)
KTH,Robotik, perception och lärande, RPL,Scania CV AB, Sweden ; KTH Royal Institute of Technology, Sweden
Bilal, Talha (author)
Scania CV AB, Sweden,Scania CV AB, Scania Cv Ab
Mårtensson, Pär (author)
Scania CV AB, Sweden,Scania CV AB, Scania Cv Ab
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Hanson, Lars (author)
Högskolan i Skövde,Institutionen för ingenjörsvetenskap,Forskningsmiljön Virtuell produkt- och produktionsutveckling,User Centred Product Design,University of Skövde, University of Skövde
Björkman, Mårten, 1970- (author)
KTH,Robotik, perception och lärande, RPL,KTH Royal Institute of Technology, Sweden
Maki, Atsuto (author)
KTH,Robotik, perception och lärande, RPL,KTH Royal Institute of Technology, Sweden
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 (creator_code:org_t)
IEEE, 2023
2023
English.
In: Proceedings, 2023 IEEE/CVF Conference on Computer Vision and Pattern Recognition Workshops. - : IEEE. - 9798350302493 - 9798350302509 ; , s. 4454-4463, s. 4454-4463
  • Conference paper (peer-reviewed)
Abstract Subject headings
Close  
  • This paper is about effectively utilizing synthetic data for training deep neural networks for industrial parts classification, in particular, by taking into account the domain gap against real-world images. To this end, we introduce a synthetic dataset that may serve as a preliminary testbed for the Sim-to-Real challenge; it contains 17 objects of six industrial use cases, including isolated and assembled parts. A few subsets of objects exhibit large similarities in shape and albedo for reflecting challenging cases of industrial parts. All the sample images come with and without random backgrounds and post-processing for evaluating the importance of domain randomization. We call it Synthetic Industrial Parts dataset (SIP-17). We study the usefulness of SIP-17 through benchmarking the performance of five state-of-the-art deep network models, supervised and self-supervised, trained only on the synthetic data while testing them on real data. By analyzing the results, we deduce some insights on the feasibility and challenges of using synthetic data for industrial parts classification and for further developing larger-scale synthetic datasets. Our dataset † and code ‡ are publicly available. 

Subject headings

NATURVETENSKAP  -- Data- och informationsvetenskap -- Datorseende och robotik (hsv//swe)
NATURAL SCIENCES  -- Computer and Information Sciences -- Computer Vision and Robotics (hsv//eng)

Keyword

Benchmarking
Computer vision
Deep neural networks
Internet protocols
Five state
Industrial parts
Industrial use case
Performance
Post-processing
Randomisation
Real-world image
State of the art
Synthetic data
Synthetic datasets
Classification (of information)
User Centred Product Design
Användarcentrerad produktdesign

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ref (subject category)
kon (subject category)

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