4 July 2024 Detecting particle quantity from raw reconstructed images using digital holography and deep learning
Wei-Na Li, Hongjie Ou, Junpeng Liao, Xiangsheng Xie
Author Affiliations +
Abstract

We propose a modified residual neural network (ResNet) to quickly and accurately detect the particle quantity from raw reconstructed images of a high-density particle solution in digital holography. The raw reconstructed image is fed into the modified ResNet to obtain the particle quantity. Then, the quantity and particle concentration in the captured volume are calculated. The metrological challenge is modeled as a regression problem in deep learning. The average relative error of the holograms in the test dataset is less than 10% even when predicting the particle quantities untrained by the model. Hence, an accurate particle quantity is obtained even when the raw reconstructed images are not denoised, thereby reducing the processing time.

© 2024 Society of Photo-Optical Instrumentation Engineers (SPIE)
Wei-Na Li, Hongjie Ou, Junpeng Liao, and Xiangsheng Xie "Detecting particle quantity from raw reconstructed images using digital holography and deep learning," Optical Engineering 63(7), 073102 (4 July 2024). https://doi.org/10.1117/1.OE.63.7.073102
Received: 30 January 2024; Accepted: 11 June 2024; Published: 4 July 2024
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KEYWORDS
Particles

3D image reconstruction

Holograms

Education and training

Bubbles

Deep learning

Image processing

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