Center Deviation Measurement of Color Contact Lenses Based on a Deep Learning Model and Hough Circle Transform
- Resource Type
- article
- Authors
- Gi-nam Kim; Sung-hoon Kim; In Joo; Gui-bae Kim; Kwan-hee Yoo
- Source
- Sensors, Vol 23, Iss 14, p 6533 (2023)
- Subject
- computer vision
image segmentation
DeepLabV3+
Hough circle transform
deep learning
data augmentation
Chemical technology
TP1-1185
- Language
- English
- ISSN
- 1424-8220
Ensuring the quality of color contact lenses is vital, particularly in detecting defects during their production since they are directly worn on the eyes. One significant defect is the “center deviation (CD) defect”, where the colored area (CA) deviates from the center point. Measuring the extent of deviation of the CA from the center point is necessary to detect these CD defects. In this study, we propose a method that utilizes image processing and analysis techniques for detecting such defects. Our approach involves employing semantic segmentation to simplify the image and reduce noise interference and utilizing the Hough circle transform algorithm to measure the deviation of the center point of the CA in color contact lenses. Experimental results demonstrated that our proposed method achieved a 71.2% reduction in error compared with existing research methods.