Publication | Closed Access
Morphological Feature Extraction Based on Multiview Images for Wear Debris Analysis in On-line Fluid Monitoring
26
Citations
33
References
2016
Year
EngineeringFeature DetectionWearable TechnologyFeature ExtractionWear ParticlesCondition MonitoringImage AnalysisMathematical MorphologyPattern RecognitionMorphological Feature ExtractionEdge DetectionImaging SystemMachine VisionWear StateStructural Health MonitoringAutomated InspectionComputer VisionMotion DetectionMultiview ImagesOn-line Fluid MonitoringMotion Analysis
Wear state is an important indicator of machinery operation condition that reveals whether faults have developed and maintenance should be scheduled. Among the available techniques, vision-based on-line monitoring of wear particles in the lubricant circuit is preferred, where three-dimensional particle characterizations can be obtained for wear mode analysis. This article presents the application of an imaging system that captures wear particles in lubricant flow and the development of image processing procedures for multiview feature extraction. In particular, a framework including background subtraction, object segmentation, and debris tracking was adopted. Particle features were then used in a comprehensive morphological description of wear debris. Experiments showed that the system is able to produce a feasible and reliable indication of wear debris characteristics for machine condition monitoring.
| Year | Citations | |
|---|---|---|
Page 1
Page 1