WEI Yongchao, WANG Yinghai2 MO Duheng, LIU Jiawei, CAI Shuang. Research on Defect Detection and Characterization of Compressor Blades Based on Point Clouds[J]. Aeronautical Manufacturing Technology, 2025, 68(11): 82-88,111.
WEI Yongchao, WANG Yinghai2 MO Duheng, LIU Jiawei, CAI Shuang. Research on Defect Detection and Characterization of Compressor Blades Based on Point Clouds[J]. Aeronautical Manufacturing Technology, 2025, 68(11): 82-88,111. DOI: 10.16080/j.issn1671-833x.2025.11.082.
Aiming at the problem of accurately detecting and quantifying scratches and crater defects in compressor blades with existing methods
an algorithm based on structured light point cloud data is proposed. First
an IDW-NA point cloud feature enhancement algorithm
which integrates inverse distance weighted curvature and normal angle of large and small regions
is used to highlight the defects. In the defect localization process
the Otsu method (OTSU) is innovatively introduced to eliminate the limitations of manually setting thresholds
followed by the Z-score-based defect integrity expansion (ZDE) algorithm to achieve complete segmentation of the defects. Finally
the PCA algorithm is improved to perform quantitative analysis of the defects. Experimental results show that
compared to existing algorithms
the proposed method provides better performance in terms of defect segmentation integrity and continuity. The average absolute error of the final segmented defect size is no more than 0.105 mm
and the average percentage error is no more than 7.27%
confirming the accuracy and effectiveness of this approach.