A novel feature extraction and mapping using convolutional autoencoder for enhancement of Underwater image/video

Marine resources known to human are very limited and as 71% world is surrounded by ocean, we are yet to discover the many of the species and the enriched resources. Often the Underwater scenery collected are poorly illuminated, degraded, and distorted due to light propagation model underwater, water...

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Main Authors: Sonawane Jitendra, Patil Mukesh, Birajdar Gajanan
Format: Article
Language:English
Published: EDP Sciences 2022-01-01
Series:ITM Web of Conferences
Online Access:https://www.itm-conferences.org/articles/itmconf/pdf/2022/04/itmconf_icacc2022_03066.pdf
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author Sonawane Jitendra
Patil Mukesh
Birajdar Gajanan
author_facet Sonawane Jitendra
Patil Mukesh
Birajdar Gajanan
author_sort Sonawane Jitendra
collection DOAJ
description Marine resources known to human are very limited and as 71% world is surrounded by ocean, we are yet to discover the many of the species and the enriched resources. Often the Underwater scenery collected are poorly illuminated, degraded, and distorted due to light propagation model underwater, water molecules and impurities as well. Counting on to these factors images/videos collected in underwater environment are in need of enhancement. We propose a method of utilizing convolution autoencoder, which can be able to collect the features of underwater images and enhanced image and then the feature mapping of this can be used in testing of the other underwater images/videos. The method utilizes the technique, which combines benefits of unsupervised convolution autoencoder to extract non-trivial features and utilized them for the enhancement of the underwater images. In order to evaluate the performance, we have used both subjective as well as objective evaluation method. Evaluation parameters used represent the results of the proposed method are significant for enhancement of underwater imagery. With the proposed network, we expect to advance underwater image enhancement research and its applications in many areas like in study of marine organism, their behaviour according to the environment, ocean exploration and Autonomous underwater vehicle.
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spelling doaj.art-4a357506ae1a4cdb8d68d69630ff65f72022-12-22T00:40:56ZengEDP SciencesITM Web of Conferences2271-20972022-01-01440306610.1051/itmconf/20224403066itmconf_icacc2022_03066A novel feature extraction and mapping using convolutional autoencoder for enhancement of Underwater image/videoSonawane Jitendra0Patil Mukesh1Birajdar Gajanan2Ramrao Adik Institute of Technology, Department of Electronics and Telecommunication EngineeringRamrao Adik Institute of Technology, Department of Electronics and Telecommunication EngineeringRamrao Adik Institute of Technology, Department of Electronics EngineeringMarine resources known to human are very limited and as 71% world is surrounded by ocean, we are yet to discover the many of the species and the enriched resources. Often the Underwater scenery collected are poorly illuminated, degraded, and distorted due to light propagation model underwater, water molecules and impurities as well. Counting on to these factors images/videos collected in underwater environment are in need of enhancement. We propose a method of utilizing convolution autoencoder, which can be able to collect the features of underwater images and enhanced image and then the feature mapping of this can be used in testing of the other underwater images/videos. The method utilizes the technique, which combines benefits of unsupervised convolution autoencoder to extract non-trivial features and utilized them for the enhancement of the underwater images. In order to evaluate the performance, we have used both subjective as well as objective evaluation method. Evaluation parameters used represent the results of the proposed method are significant for enhancement of underwater imagery. With the proposed network, we expect to advance underwater image enhancement research and its applications in many areas like in study of marine organism, their behaviour according to the environment, ocean exploration and Autonomous underwater vehicle.https://www.itm-conferences.org/articles/itmconf/pdf/2022/04/itmconf_icacc2022_03066.pdf
spellingShingle Sonawane Jitendra
Patil Mukesh
Birajdar Gajanan
A novel feature extraction and mapping using convolutional autoencoder for enhancement of Underwater image/video
ITM Web of Conferences
title A novel feature extraction and mapping using convolutional autoencoder for enhancement of Underwater image/video
title_full A novel feature extraction and mapping using convolutional autoencoder for enhancement of Underwater image/video
title_fullStr A novel feature extraction and mapping using convolutional autoencoder for enhancement of Underwater image/video
title_full_unstemmed A novel feature extraction and mapping using convolutional autoencoder for enhancement of Underwater image/video
title_short A novel feature extraction and mapping using convolutional autoencoder for enhancement of Underwater image/video
title_sort novel feature extraction and mapping using convolutional autoencoder for enhancement of underwater image video
url https://www.itm-conferences.org/articles/itmconf/pdf/2022/04/itmconf_icacc2022_03066.pdf
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