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Data Supporting Publication "Deep learning for simultaneous phase and amplitude identification in coherent beam combination"

Data Supporting Publication "Deep learning for simultaneous phase and amplitude identification in coherent beam combination"
Data Supporting Publication "Deep learning for simultaneous phase and amplitude identification in coherent beam combination"
The data is collated in 2 main folders. One for Figurative Data and one for Numerical Data. The schematic representation of the data folder structure is depicted as follows: 1. Figurative Data The figure files used in the publication can be found in the directory named 'root/DATASET/Figurative Data/'. The figures referenced in the publication as Figure 1. to Figure 7. correspond to the following filenames: 'Figure 1.jpg', 'Figure 2.jpg', 'Figure 3.jpg', 'Figure 4.png', 'Figure 5.jpg', 'Figure 6.jpg', and 'Figure 7.jpg'. The graphics denoted as SM Figure 1 to SM Figure 9 cited within the supplementary materials of the scholarly publication, are accessible under the file name 'SM Figure 1.jpg', 'SM Figure 2.jpg', 'SM Figure 3.jpg', 'SM Figure 4.png', 'SM Figure 5.png', 'SM Figure 6.png', 'SM Figure 7.png', 'SM Figure 8.png' and 'SM Figure 9.jpg' respectively. 2. ONNX ampl lower limit 0.75/ This subdirectory contains data corresponding to a specific amplitude lower limit (0.75), which was used for plotting the datapoint 0.75 in Figure 4 of the main manuscript. The structure is organized into three subfolders: pattern/, phase/, and power/. pattern/ : Contains .png image files representing 250 Camera A observations captured during experiments. Each file is named using the Unix timestamp of when the measurement was taken (e.g., 1729082510.4598675.png). phase/ : Contains .npy files storing numerical arrays representing label phase information with a shape of (6,). These arrays represent the phase values assigned to each fibre and sent to the Spatial Light Modulator (SLM). Example: Loading 1729082510.4598675.npy with numpy.load() will return an array containing phase values: array([-0.08451875, -1.26307154, 0.3934566 , -1.54942517, -2.01298107, -0.37225581]) power/ : Contains .npy files storing numerical arrays representing power measurements. Shape (7,) Similar to the phase/ folder, each .npy file corresponds to a specific timestamp and can be loaded using numpy. Example: Loading 1729082510.4598675.npy with numpy.load() will return an array containing phase values array([0.85523281, 0.88101354, 0.94862087, 0.84383259, 0.86969338, 0.82239261, 0.91183514]) README.txt : A text file providing instructions on how to set up the environment and run the script (onnx.py). Includes details about dependencies, environment setup, and execution steps. environment.yml : A Conda environment file specifying all required Conda packages for reproducibility. Use this file to create the Conda environment
University of Southampton
Chernikov, Fedor
a5a56a14-d8cf-4a11-8946-dbb145dbda91
Xie, Yunhui
c30c579e-365e-4b11-b50c-89f12a7ca807
Grant-Jacob, James A.
c5d144d8-3c43-4195-8e80-edd96bfda91b
Liu, Yuchen
1efd4b12-3f11-4eb1-abea-0f5b40a1a9f1
Zervas, Michalis
1840a474-dd50-4a55-ab74-6f086aa3f701
Mills, Ben
05f1886e-96ef-420f-b856-4115f4ab36d0
Chernikov, Fedor
a5a56a14-d8cf-4a11-8946-dbb145dbda91
Xie, Yunhui
c30c579e-365e-4b11-b50c-89f12a7ca807
Grant-Jacob, James A.
c5d144d8-3c43-4195-8e80-edd96bfda91b
Liu, Yuchen
1efd4b12-3f11-4eb1-abea-0f5b40a1a9f1
Zervas, Michalis
1840a474-dd50-4a55-ab74-6f086aa3f701
Mills, Ben
05f1886e-96ef-420f-b856-4115f4ab36d0

Chernikov, Fedor (2025) Data Supporting Publication "Deep learning for simultaneous phase and amplitude identification in coherent beam combination". University of Southampton doi:10.5258/SOTON/D3389 [Dataset]

Record type: Dataset

Abstract

The data is collated in 2 main folders. One for Figurative Data and one for Numerical Data. The schematic representation of the data folder structure is depicted as follows: 1. Figurative Data The figure files used in the publication can be found in the directory named 'root/DATASET/Figurative Data/'. The figures referenced in the publication as Figure 1. to Figure 7. correspond to the following filenames: 'Figure 1.jpg', 'Figure 2.jpg', 'Figure 3.jpg', 'Figure 4.png', 'Figure 5.jpg', 'Figure 6.jpg', and 'Figure 7.jpg'. The graphics denoted as SM Figure 1 to SM Figure 9 cited within the supplementary materials of the scholarly publication, are accessible under the file name 'SM Figure 1.jpg', 'SM Figure 2.jpg', 'SM Figure 3.jpg', 'SM Figure 4.png', 'SM Figure 5.png', 'SM Figure 6.png', 'SM Figure 7.png', 'SM Figure 8.png' and 'SM Figure 9.jpg' respectively. 2. ONNX ampl lower limit 0.75/ This subdirectory contains data corresponding to a specific amplitude lower limit (0.75), which was used for plotting the datapoint 0.75 in Figure 4 of the main manuscript. The structure is organized into three subfolders: pattern/, phase/, and power/. pattern/ : Contains .png image files representing 250 Camera A observations captured during experiments. Each file is named using the Unix timestamp of when the measurement was taken (e.g., 1729082510.4598675.png). phase/ : Contains .npy files storing numerical arrays representing label phase information with a shape of (6,). These arrays represent the phase values assigned to each fibre and sent to the Spatial Light Modulator (SLM). Example: Loading 1729082510.4598675.npy with numpy.load() will return an array containing phase values: array([-0.08451875, -1.26307154, 0.3934566 , -1.54942517, -2.01298107, -0.37225581]) power/ : Contains .npy files storing numerical arrays representing power measurements. Shape (7,) Similar to the phase/ folder, each .npy file corresponds to a specific timestamp and can be loaded using numpy. Example: Loading 1729082510.4598675.npy with numpy.load() will return an array containing phase values array([0.85523281, 0.88101354, 0.94862087, 0.84383259, 0.86969338, 0.82239261, 0.91183514]) README.txt : A text file providing instructions on how to set up the environment and run the script (onnx.py). Includes details about dependencies, environment setup, and execution steps. environment.yml : A Conda environment file specifying all required Conda packages for reproducibility. Use this file to create the Conda environment

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More information

Published date: 2025

Identifiers

Local EPrints ID: 499631
URI: http://eprints.soton.ac.uk/id/eprint/499631
PURE UUID: 4fa52c79-e2e6-462d-a15b-84b54865cb4e
ORCID for Yunhui Xie: ORCID iD orcid.org/0000-0002-8841-7235
ORCID for James A. Grant-Jacob: ORCID iD orcid.org/0000-0002-4270-4247
ORCID for Yuchen Liu: ORCID iD orcid.org/0009-0008-3636-1779
ORCID for Michalis Zervas: ORCID iD orcid.org/0000-0002-0651-4059
ORCID for Ben Mills: ORCID iD orcid.org/0000-0002-1784-1012

Catalogue record

Date deposited: 28 Mar 2025 17:31
Last modified: 29 Mar 2025 03:31

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Contributors

Creator: Fedor Chernikov
Contributor: Yunhui Xie ORCID iD
Contributor: James A. Grant-Jacob ORCID iD
Contributor: Yuchen Liu ORCID iD
Contributor: Michalis Zervas ORCID iD
Contributor: Ben Mills ORCID iD

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