Treatment of Motion Blur in High-Speed PIV using Deep Learning
ORAL
Abstract
A technique based on deep learning that can reduce errors caused by motion blur for high-speed PIV is proposed. Synthetic images had the Monte-Carlo method (MCM) applied to them, in order to assess the error caused by blurry images of tracers. Longer particle streaks resulted in increased displacement errors (reaching 0.2 – 0.5 pixels) and outlier frequency (sometimes exceeding 8%). A new deblur filter was developed utilizing a generative adversarial network (GAN) with 1 million synthetic images. The filter, or generator, was verified using MCM data that was not learned. The outlier frequency was reduced to approximately 5%, and displacement error decreased below 0.25 pixels. This generator was applied to real blurry PIV images of a synthetic jet and significantly reduced the number of outlier vectors.
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Publication: Manuscript titled "Motion Blur Treatment utilizing Deep Learning for Time-Resolved Particle Image Velocimetry" has been submitted to Experiments in Fluids
Presenters
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Wontae Hwang
Seoul Natl Univ
Authors
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Jeong Suk Oh
MIT, Massachusetts Institute of Technology
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Hoonsang Lee
Seoul Natl Univ
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Wontae Hwang
Seoul Natl Univ