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Official implementation for paper "VECTOR: Very Deep Convolutional Autoencoders for Non-Resonant Background Removal in Broadband Coherent Anti-Stokes Raman Scattering"

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VECTOR-CARS

Official implementation of VECTOR: Very Deep Convolutional Autoencoders for Non-Resonant Background Removal in Broadband Coherent Anti-Stokes Raman Scattering

By Zhengwei Wang*, Kevin O’ Dwyer*, Ryan Muddiman, Tomas Ward, Charles. H. Camp Jr. and Bryan Hennelly

* Equal contribution

Fig. 1: (a) Diagram of the setup of the B-CARS RMS, (b) CARS energy level diagram (ω_p: Pump frequency, ω_s: Stokes frequency, ω_pr: Probe frequency,ω_as: anti-Stokesfrequency).

Fig. 2: The example of VECTOR-8 architecture used in this study. Convolutional layers in the encoder and transposed convolutional layers in the decoder are symmetric i.e., the input dimension to the convolutional layer and the output dimension to the paired transposed convolutional layer are the same.

Getting Started

You can use the test jupyter notebook to test the pretrained network

Requirements

Required Python environment added here. Better to upload a Docker file.

Pretrained models

Pretrianed model link added here

Citation

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Official implementation for paper "VECTOR: Very Deep Convolutional Autoencoders for Non-Resonant Background Removal in Broadband Coherent Anti-Stokes Raman Scattering"

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