Skip Nav Destination
ASME Press Select Proceedings
International Conference on Software Technology and Engineering (ICSTE 2012)
Editor
ISBN:
9780791860151
No. of Pages:
680
Publisher:
ASME Press
Publication date:
2012
eBook Chapter
26 Glass Defect Detection Based on Image Processing
Page Count:
6
-
Published:2012
Citation
Zhao, X, Yang, J, & Zhang, G. "Glass Defect Detection Based on Image Processing." International Conference on Software Technology and Engineering (ICSTE 2012). Ed. Zhou, J. ASME Press, 2012.
Download citation file:
Due to the limitations of manual inspection of glass defects, using image processing technology to automatically detect the glass defects is proposed in this paper. First the sampled glass images are preprocessed using median filter and mathematical morphology in the glass detection system to get the enhanced images, and then extract the shape, position and size of the detect feature parameters. The effectiveness of algorithm is testified by simulation results.
This content is only available via PDF.
You do not currently have access to this chapter.
Email alerts
Related Chapters
Mobile Robots for Earth Exploration: Applications, Technologies and Image Processing Techniques for Navigation
Mobile Robots for Dynamic Environments
Thin Steel Plates Counting Method Based on Digital Image Processing
International Conference on Electronics, Information and Communication Engineering (EICE 2012)
Automated Measurement of Coke Size by Computer Image Processing
International Conference on Control Engineering and Mechanical Design (CEMD 2017)
Multi-Channel Constant Current LED Driver with PWM Boost Converter
International Conference on Mechanical Engineering and Technology (ICMET-London 2011)
Related Articles
Mechanical Properties of Crimped Mineral Wools: Identification From Digital Image Correlation
J. Eng. Mater. Technol (April,2008)
Head-Disk Spacing Measurement Using Michelson Laser Interferometry as Observed Through Glass Disk
J. Tribol (April,2004)
Data-Driven Gantry Health Monitoring and Process Status Identification Based on Texture Extraction
J. Comput. Inf. Sci. Eng (February,2021)