Publication | Closed Access
Morphology and autowave metric on CNN applied to bubble-debris classification
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Citations
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References
2000
Year
Debris ParticlesCnn Universal ChipMachine VisionImage AnalysisData ScienceMachine LearningPattern RecognitionFeature DetectionEngineeringConvolutional Neural NetworkCellular Neural NetworkImage ClassificationComputer ScienceDeep LearningBubble-debris ClassificationComputer VisionImage Sequence Analysis
In this study, we present the initial results of cellular neural network (CNN)-based autowave metric to high-speed pattern recognition of gray-scale images. the application is to a problem involving separation of metallic wear debris particles from air bubbles. This problem arises in an optical-based system for determination of mechanical wear. This paper focuses on distinguishing debris particles suspended in the oil flow from air bubbles and aims to employ CNN technology to create an online fault monitoring system. For the class of engines of interest bubbles occur much more often than debris particles and the goal is to develop a classification system with an extremely low false alarm rate for misclassified bubbles. The designed analogic CNN algorithm detects and classifies single bubbles es and bubble groups using binary morphology and autowave metric. The debris particles are separated based on autowave distances computed between bubble models and the unknown objects. Initial experiments indicate that the proposed algorithm is robust and noise tolerant and when implemented on a CNN universal chip it provides a solution in real time.
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