GRAICVLGROApr 17, 2025

3D-PNAS: 3D Industrial Surface Anomaly Synthesis with Perlin Noise

arXiv:2504.12856v12 citationsh-index: 1
Originality Incremental advance
AI Analysis

This addresses a critical challenge in industrial quality inspection by providing a novel approach for 3D anomaly synthesis, though it is incremental as it adapts 2D techniques to 3D data.

The paper tackles the scarcity of real defect samples for 3D industrial anomaly detection by proposing 3D-PNAS, a method that generates realistic 3D surface anomalies using Perlin noise and surface parameterization, enabling fine-grained control over diverse defect patterns.

Large pretrained vision foundation models have shown significant potential in various vision tasks. However, for industrial anomaly detection, the scarcity of real defect samples poses a critical challenge in leveraging these models. While 2D anomaly generation has significantly advanced with established generative models, the adoption of 3D sensors in industrial manufacturing has made leveraging 3D data for surface quality inspection an emerging trend. In contrast to 2D techniques, 3D anomaly generation remains largely unexplored, limiting the potential of 3D data in industrial quality inspection. To address this gap, we propose a novel yet simple 3D anomaly generation method, 3D-PNAS, based on Perlin noise and surface parameterization. Our method generates realistic 3D surface anomalies by projecting the point cloud onto a 2D plane, sampling multi-scale noise values from a Perlin noise field, and perturbing the point cloud along its normal direction. Through comprehensive visualization experiments, we demonstrate how key parameters - including noise scale, perturbation strength, and octaves, provide fine-grained control over the generated anomalies, enabling the creation of diverse defect patterns from pronounced deformations to subtle surface variations. Additionally, our cross-category experiments show that the method produces consistent yet geometrically plausible anomalies across different object types, adapting to their specific surface characteristics. We also provide a comprehensive codebase and visualization toolkit to facilitate future research.

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