Publication | Closed Access
Displacement field denoising for high-temperature digital image correlation using principal component analysis
19
Citations
16
References
2016
Year
Image AnalysisEnvironmental MonitoringEngineeringDigital Image CorrelationRemote SensingNoiseDisplacement FieldVideo DenoisingComputational ImagingInverse ProblemsNoise EffectSingular VectorsPrincipal Component AnalysisImage DenoisingImage RestorationSpatial FilteringSignal ProcessingEarth Science
Principal component analysis (PCA) was extended to minimize the noise effect in digital image correlation (DIC) measurement under a high-temperature atmosphere environment. First, the principle of PCA was introduced, and the singular vectors and singular values for each component of the displacement fields from DIC were obtained. Then, the simulated high-temperature speckle images were developed to investigate the influences of noise on the DIC method under a high-temperature environment. Finally, the displacement fields of several special conditions were extracted from the simulated speckle images and experimental images; the effects of noise on the PCA were also analyzed.
| Year | Citations | |
|---|---|---|
Page 1
Page 1