Stochastic Geometry Models for Texture Synthesis of Machined Metallic Surfaces: Sandblasting and Milling
- URL: http://arxiv.org/abs/2403.13439v1
- Date: Wed, 20 Mar 2024 09:27:49 GMT
- Title: Stochastic Geometry Models for Texture Synthesis of Machined Metallic Surfaces: Sandblasting and Milling
- Authors: Natascha Jeziorski, Claudia Redenbach,
- Abstract summary: Training defect detection algorithms for visual surface inspection systems requires a large and representative set of training data.
A digital twin of the object is needed, whose micro-scale surface topography is modeled by texture synthesis models.
- Score: 0.7673339435080445
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Training defect detection algorithms for visual surface inspection systems requires a large and representative set of training data. Often there is not enough real data available which additionally cannot cover the variety of possible defects. Synthetic data generated by a synthetic visual surface inspection environment can overcome this problem. Therefore, a digital twin of the object is needed, whose micro-scale surface topography is modeled by texture synthesis models. We develop stochastic texture models for sandblasted and milled surfaces based on topography measurements of such surfaces. As the surface patterns differ significantly, we use separate modeling approaches for the two cases. Sandblasted surfaces are modeled by a combination of data-based texture synthesis methods that rely entirely on the measurements. In contrast, the model for milled surfaces is procedural and includes all process-related parameters known from the machine settings.
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