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Projector distortion correction in 3D shape measurement using a structured-light system by deep neural networks

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Abstract

In a structured-light system, lens distortion of the camera and projector is the main source of 3D measurement error. In this Letter, a new approach, to the best of our knowledge, of using deep neural networks to address this problem is proposed. The neural network consists of one input layer, five densely connected hidden layers, and one output layer. A ceramic plate with flatness less than 0.005 mm is used to acquire the training, validation, and test data sets for the network. It is shown that the measurement accuracy can be enhanced to 0.0165 mm in the RMS value by this technique, which is an improvement of 93.52%. It is also verified that the constructed neural network is with satisfactory repeatability.

© 2019 Optical Society of America

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Supplementary Material (1)

NameDescription
Visualization 1       The experimental results for the remaining thirty-two locations are shown in Visualization 1, where the maximum PV value of the error after correction is 0.1644 mm, indicating satisfactory improvement is achieved by the neural network.

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