Fringe pattern analysis using deep learning 论文

2019Advanced Photonics引用 426顶会
Optical measurement and interference techniquesImage and Object Detection TechniquesStructural Health Monitoring Techniques

详细信息

发表期刊/会议
Advanced Photonics
发表日期
2019-02-28
发表年份
2019

关键词

Optical measurement and interference techniquesImage and Object Detection TechniquesStructural Health Monitoring Techniques

摘要

In many optical metrology techniques, fringe pattern analysis is the central algorithm for recovering the underlying phase distribution from the recorded fringe patterns. Despite extensive research efforts for decades, how to extract the desired phase information, with the highest possible accuracy, from the minimum number of fringe patterns remains one of the most challenging open problems. Inspired by recent successes of deep learning techniques for computer vision and other applications, we demonstrate for the first time, to our knowledge, that the deep neural networks can be trained to perform fringe analysis, which substantially enhances the accuracy of phase demodulation from a single fringe pattern. The effectiveness of the proposed method is experimentally verified using carrier fringe patterns under the scenario of fringe projection profilometry. Experimental results demonstrate its superior performance, in terms of high accuracy and edge-preserving, over two representative single-frame techniques: Fourier transform profilometry and windowed Fourier transform profilometry.

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