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Title

Investigating Recent Advances In Coded Diffraction Patterns using Deep Learning

  Anil Audumbar Pise 1 * ,   Saurabh Singh 2 ,   Hemachandran K. 3 ,   Shraddhesh Gadilkar 4 ,   Zakka Benisemeni Esther 5 ,   Ganesh Shivaji Pise 6 ,   Jude Imuede 7

1  Siatik Premier Google Cloud Platform Partner Johannesburg South Africa, University of the Witwatersrand Johannesburg-South Africa Computer Science, Head of Data Science & Machine Learning, Adjunct Professor
    (anil@siatik.com)

2  Department of AI and Big data, woosong University, Daejeon South Korea
    (singh.saurabh@wsu.ac.kr)

3  School of Business, Woxsen University, Hyderabad, India
    (hemachandran.k@woxsen.edu.in)

4  Associate Engineer, TSYS Global Payments, Pune, India
    (sgadilkar@tsys.com)

5  Federal Polytechnic Bauchi, Nigeria
    (benizakka@fptb.edu.ng)

6  Pune Institute of Computer Technology Pune
    (gspise@pict.edu)

7  University of Prince Edward Island
    (jimuede@upei.ca)


Doi   :   https://doi.org/10.54216/IJWAC.070106

Received: January 23, 2023 Revised: April 29, 2023 Accepted: May 28, 2023

Abstract :

With the use of deep learning algorithms, we provide in this work a novel approach, called "DeepDiffNet," to investigate the most recent advancements in the comprehension of coded diffraction patterns. Comprehensive tool DeepDiffNet decodes complicated coded diffraction patterns using deep neural networks. Encoding, decoding, and preprocessing are the three main algorithms used in the method.Preprocessing is an essential initial step in preparing coded diffraction patterns for analysis. It includes bringing intensity data into a standard range and employing a windowing tool to minimize noise and emphasize features.  The Encoding Algorithm leverages a convolutional neural network (CNN) to extract valuable data from the diffraction patterns that have been analyzed. Critically significant patterns and structures are recognized by the CNN via encoding them as feature vectors, which is how it learns to evaluate input. To reconstruct the original objects or specimens from the encoded information, the Decoding Algorithm uses a recurrent neural network (RNN). The RNN models the relationships between these features and the spatial arrangements of things to reconstruct them properly. We use many measures, such as Mean Absolute Error (MAE), the Structural Similarity Index (SSI), and the Peak Signal-to-Noise Ratio (PSNR), to evaluate DeepDiffNet's performance. These measures guarantee the reliability and efficacy of our approach to pattern reconstruction. When compared to conventional approaches, DeepDiffNet is light years ahead in terms of accuracy, precision, recall, and processing efficiency when analyzing coded diffraction patterns. The method's outstanding efficacy, flexibility, and resilience make it a priceless resource for a wide range of scientific, medical, and industrial endeavors.

Keywords :

DeepDiffNet; coded diffraction patterns; deep learning , Preprocessing Algorithm; Encoding Algorithm; Decoding Algorithm; Data Preparation; Feature Extraction; Pattern Reconstruction.

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Cite this Article as :
Style #
MLA Anil Audumbar Pise, Saurabh Singh , Hemachandran K. , Shraddhesh Gadilkar, Zakka Benisemeni Esther, Ganesh Shivaji Pise, Jude Imuede. "Investigating Recent Advances In Coded Diffraction Patterns using Deep Learning." International Journal of Wireless and Ad Hoc Communication, Vol. 7, No. 1, 2023 ,PP. 62-71 (Doi   :  https://doi.org/10.54216/IJWAC.070106)
APA Anil Audumbar Pise, Saurabh Singh , Hemachandran K. , Shraddhesh Gadilkar, Zakka Benisemeni Esther, Ganesh Shivaji Pise, Jude Imuede. (2023). Investigating Recent Advances In Coded Diffraction Patterns using Deep Learning. Journal of International Journal of Wireless and Ad Hoc Communication, 7 ( 1 ), 62-71 (Doi   :  https://doi.org/10.54216/IJWAC.070106)
Chicago Anil Audumbar Pise, Saurabh Singh , Hemachandran K. , Shraddhesh Gadilkar, Zakka Benisemeni Esther, Ganesh Shivaji Pise, Jude Imuede. "Investigating Recent Advances In Coded Diffraction Patterns using Deep Learning." Journal of International Journal of Wireless and Ad Hoc Communication, 7 no. 1 (2023): 62-71 (Doi   :  https://doi.org/10.54216/IJWAC.070106)
Harvard Anil Audumbar Pise, Saurabh Singh , Hemachandran K. , Shraddhesh Gadilkar, Zakka Benisemeni Esther, Ganesh Shivaji Pise, Jude Imuede. (2023). Investigating Recent Advances In Coded Diffraction Patterns using Deep Learning. Journal of International Journal of Wireless and Ad Hoc Communication, 7 ( 1 ), 62-71 (Doi   :  https://doi.org/10.54216/IJWAC.070106)
Vancouver Anil Audumbar Pise, Saurabh Singh , Hemachandran K. , Shraddhesh Gadilkar, Zakka Benisemeni Esther, Ganesh Shivaji Pise, Jude Imuede. Investigating Recent Advances In Coded Diffraction Patterns using Deep Learning. Journal of International Journal of Wireless and Ad Hoc Communication, (2023); 7 ( 1 ): 62-71 (Doi   :  https://doi.org/10.54216/IJWAC.070106)
IEEE Anil Audumbar Pise, Saurabh Singh, Hemachandran K., Shraddhesh Gadilkar, Zakka Benisemeni Esther, Ganesh Shivaji Pise, Jude Imuede, Investigating Recent Advances In Coded Diffraction Patterns using Deep Learning, Journal of International Journal of Wireless and Ad Hoc Communication, Vol. 7 , No. 1 , (2023) : 62-71 (Doi   :  https://doi.org/10.54216/IJWAC.070106)