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PointSGRADE: Sparse learning with graph representation for anomaly detection by using unstructured 3D point cloud data

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  • Chengyu Tao
  • Juan Du

Abstract

Surface anomaly detection by using 3D point cloud data has recently received significant attention. To completely measure the common free-form surfaces without loss of details, advanced 3D scanning technologies, such as 3D laser scanners, can be applied and will produce an unstructured point cloud. However, this irregular data structure poses challenges to anomaly detection, in that the existing methods based on regular data, e.g., 2D image, cannot be directly applied. This article proposes a sparse learning framework with a graph representation of the unstructured point cloud for anomaly detection (PointSGRADE). Specifically, the free-form surface is assumed to be smooth. Then, the associated point cloud can be represented as a graph. Subsequently, considering the sparse anomalies, we propose a sparse learning framework and formulate the anomaly detection problem as a penalized optimization problem, which is further solved by a computationally efficient majorization-minimization framework. Case studies demonstrate the accuracy and robustness of the proposed method. This article proposes a novel methodology for sparse anomaly detection on smooth free-form surfaces represented by unstructured point cloud, which is critical for quality inspection in manufacturing and other application areas.

Suggested Citation

  • Chengyu Tao & Juan Du, 2025. "PointSGRADE: Sparse learning with graph representation for anomaly detection by using unstructured 3D point cloud data," IISE Transactions, Taylor & Francis Journals, vol. 57(2), pages 131-144, February.
  • Handle: RePEc:taf:uiiexx:v:57:y:2025:i:2:p:131-144
    DOI: 10.1080/24725854.2023.2285840
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