Publication | Open Access
Optical-numerical method based on a convolutional neural network for full-field subpixel displacement measurements
17
Citations
36
References
2021
Year
Convolutional Neural NetworkEngineeringSubpixel Displacement MeasurementMicroscopyOptical TestingSubpixel Displacement EstimationImage Sequence AnalysisImage ClassificationImage AnalysisCoherent Gradient SensingOptical PropertiesDigital Image CorrelationComputational ImagingLight Field ImagingMachine VisionPhysicsInverse ProblemsMedical Image ComputingDeep LearningOptical Image RecognitionComputer VisionApplied PhysicsBiomedical ImagingOptical Information ProcessingOptical-numerical MethodOptical System Analysis
The subpixel displacement estimation is an important step to calculation of the displacement between two digital images in optics and image processing. Digital image correlation (DIC) is an effective method for measuring displacement due to its high accuracy. Various DIC algorithms to compare images and to obtain displacement have been implemented. However, there are some drawbacks to DIC. It can be computationally expensive when processing a sequence of continuously deformed images. To simplify the subpixel displacement estimation and to explore a different measurement scheme, a convolutional neural network with a transfer learning based subpixel displacement measurement method (CNN-SDM) is proposed in this paper. The basic idea of the method is to compare images of an object decorated with speckle patterns before and after deformation by CNN, and thereby to achieve a coarse-to-fine subpixel displacement estimation. The proposed CNN is a classification model consisting of two convolutional neural networks in series. The results of simulated and real experiments are shown that the proposed CNN-SDM method is feasibly effective for subpixel displacement measurement due its high efficiency, robustness, simple structure and few parameters.
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