Spectrally-Encoded Single-Pixel Machine Vision Using Diffractive
Networks
- URL: http://arxiv.org/abs/2005.11387v2
- Date: Fri, 26 Mar 2021 04:48:42 GMT
- Title: Spectrally-Encoded Single-Pixel Machine Vision Using Diffractive
Networks
- Authors: Jingxi Li, Deniz Mengu, Nezih T. Yardimci, Yi Luo, Xurong Li, Muhammed
Veli, Yair Rivenson, Mona Jarrahi, Aydogan Ozcan
- Abstract summary: 3D engineering of matter has opened up new avenues for designing systems that can perform various computational tasks through light-matter interaction.
Here, we demonstrate the design of optical networks in the form of multiple diffractive layers that are trained using deep learning to transform and encode the spatial information of objects into the power spectrum of the diffracted light.
We experimentally validated this machine vision framework at terahertz spectrum to optically classify the images of handwritten digits by detecting the spectral power of the diffracted light at ten distinct wavelengths.
- Score: 6.610893384480686
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: 3D engineering of matter has opened up new avenues for designing systems that
can perform various computational tasks through light-matter interaction. Here,
we demonstrate the design of optical networks in the form of multiple
diffractive layers that are trained using deep learning to transform and encode
the spatial information of objects into the power spectrum of the diffracted
light, which are used to perform optical classification of objects with a
single-pixel spectroscopic detector. Using a time-domain spectroscopy setup
with a plasmonic nanoantenna-based detector, we experimentally validated this
machine vision framework at terahertz spectrum to optically classify the images
of handwritten digits by detecting the spectral power of the diffracted light
at ten distinct wavelengths, each representing one class/digit. We also report
the coupling of this spectral encoding achieved through a diffractive optical
network with a shallow electronic neural network, separately trained to
reconstruct the images of handwritten digits based on solely the spectral
information encoded in these ten distinct wavelengths within the diffracted
light. These reconstructed images demonstrate task-specific image decompression
and can also be cycled back as new inputs to the same diffractive network to
improve its optical object classification. This unique machine vision framework
merges the power of deep learning with the spatial and spectral processing
capabilities of diffractive networks, and can also be extended to other
spectral-domain measurement systems to enable new 3D imaging and sensing
modalities integrated with spectrally encoded classification tasks performed
through diffractive optical networks.
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