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Bridging the Reality Gap: A Framework for Synthetic Data Generation in Smart Manufacturing

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Abstract

Automated material inspection in smart manufacturing relies on extensive, diverse, and annotated datasets for robust deep neural networks (DNNs). However, acquiring real industrial data, especially with varied defects like occlusion and misalignment, is challenging and costly. This study presents Bridging the Reality Gap (BRG), a novel synthetic data generation framework. The BRG pipeline uses a high-fidelity 3D CAD model to simulate camera perspectives and physically based rendering with HDRI to generate diverse load station samples under various conditions. It systematically creates normal and abnormal samples, including geometric and photorealistic obstructions for misalignment and occlusion. Key contributions include developing the BRG framework to bridge the reality gap in robotic training and demonstrating that BRG generated synthetic data significantly enhances DNN performance. The framework also optimises annotation efforts through a symmetric data generation approach. After preprocessing and hyperparameter tuning, transfer learning is applied to a YOLOv5 model using these synthetic samples. Results show BRG’s significant performance for load station inspection; the combined synthetic dataset (D3) achieved 100% Precision, 93.83% Recall, and 96.82% F1 on real industrial samples.
Original languageEnglish
Pages83
Number of pages90
Publication statusPublished online - 4 Sept 2025
EventBridging the Reality Gap: A Framework for Synthetic Data
Generation in Smart Manufacturing: Proceedings of the 27th Irish Machine Vision and Image Processing Conference
- Ulster University, Derry-Londonderry, Northern Ireland, Londonderry, United Kingdom
Duration: 1 Sept 20253 Sept 2025
Conference number: 27

Conference

ConferenceBridging the Reality Gap: A Framework for Synthetic Data
Generation in Smart Manufacturing
Abbreviated titleIMVIP 2025
Country/TerritoryUnited Kingdom
CityLondonderry
Period1/09/253/09/25

Data Access Statement

The datasets generated during the current study (including synthetic images and real industrial inspection images) are not publicly available due to industrial confidentiality but are available from the corresponding author on reasonable request.

Funding

This research is supported by UKRI Strength in Places Funded Project (81801): Smart Nano-Manufacturing Corridor.

UN SDGs

This output contributes to the following UN Sustainable Development Goals (SDGs)

  1. SDG 9 - Industry, Innovation, and Infrastructure
    SDG 9 Industry, Innovation, and Infrastructure

Keywords

  • Computer vision
  • Deep learning
  • Data Rendering
  • Load Station Inspection

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