The Menon Lab

Advancing Optics, Nanofabrication & Computation.

Optics-free imaging of complex, non-sparse and color QR-codes with deep neural networks.


Journal article


Soren Nelson, Evan Scullion, R. Menon
OSA Continuum, 2020

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APA   Click to copy
Nelson, S., Scullion, E., & Menon, R. (2020). Optics-free imaging of complex, non-sparse and color QR-codes with deep neural networks. OSA Continuum.


Chicago/Turabian   Click to copy
Nelson, Soren, Evan Scullion, and R. Menon. “Optics-Free Imaging of Complex, Non-Sparse and Color QR-Codes with Deep Neural Networks.” OSA Continuum (2020).


MLA   Click to copy
Nelson, Soren, et al. “Optics-Free Imaging of Complex, Non-Sparse and Color QR-Codes with Deep Neural Networks.” OSA Continuum, 2020.


BibTeX   Click to copy

@article{soren2020a,
  title = {Optics-free imaging of complex, non-sparse and color QR-codes with deep neural networks.},
  year = {2020},
  journal = {OSA Continuum},
  author = {Nelson, Soren and Scullion, Evan and Menon, R.}
}

Abstract

We demonstrate optics-free imaging of complex color and monochrome QR-codes using a bare image sensor and trained artificial neural networks (ANNs). The ANN is trained to interpret the raw sensor data for human visualization. The image sensor is placed at a specified gap (1mm, 5mm and 10mm) from the QR code. We studied the robustness of our approach by experimentally testing the output of the ANNs with system perturbations of this gap, and the translational and rotational alignments of the QR code to the image sensor. Our demonstration opens us the possibility of using completely optics-free, non-anthropocentric cameras for application-specific imaging of complex, non-sparse objects.