Cargando…

A Deep Recurrent Learning-Based Region-Focused Feature Detection for Enhanced Target Detection in Multi-Object Media

Target detection in high-contrast, multi-object images and movies is challenging. This difficulty results from different areas and objects/people having varying pixel distributions, contrast, and intensity properties. This work introduces a new region-focused feature detection (RFD) method to tackle...

Descripción completa

Detalles Bibliográficos
Autores principales: Wang, Jinming, Alshahir, Ahmed, Abbas, Ghulam, Kaaniche, Khaled, Albekairi, Mohammed, Alshahr, Shahr, Aljarallah, Waleed, Sahbani, Anis, Nowakowski, Grzegorz, Sieja, Marek
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10490795/
https://www.ncbi.nlm.nih.gov/pubmed/37688012
http://dx.doi.org/10.3390/s23177556
_version_ 1785103923643678720
author Wang, Jinming
Alshahir, Ahmed
Abbas, Ghulam
Kaaniche, Khaled
Albekairi, Mohammed
Alshahr, Shahr
Aljarallah, Waleed
Sahbani, Anis
Nowakowski, Grzegorz
Sieja, Marek
author_facet Wang, Jinming
Alshahir, Ahmed
Abbas, Ghulam
Kaaniche, Khaled
Albekairi, Mohammed
Alshahr, Shahr
Aljarallah, Waleed
Sahbani, Anis
Nowakowski, Grzegorz
Sieja, Marek
author_sort Wang, Jinming
collection PubMed
description Target detection in high-contrast, multi-object images and movies is challenging. This difficulty results from different areas and objects/people having varying pixel distributions, contrast, and intensity properties. This work introduces a new region-focused feature detection (RFD) method to tackle this problem and improve target detection accuracy. The RFD method divides the input image into several smaller ones so that as much of the image as possible is processed. Each of these zones has its own contrast and intensity attributes computed. Deep recurrent learning is then used to iteratively extract these features using a similarity measure from training inputs corresponding to various regions. The target can be located by combining features from many locations that overlap. The recognized target is compared to the inputs used during training, with the help of contrast and intensity attributes, to increase accuracy. The feature distribution across regions is also used for repeated training of the learning paradigm. This method efficiently lowers false rates during region selection and pattern matching with numerous extraction instances. Therefore, the suggested method provides greater accuracy by singling out distinct regions and filtering out misleading rate-generating features. The accuracy, similarity index, false rate, extraction ratio, processing time, and others are used to assess the effectiveness of the proposed approach. The proposed RFD improves the similarity index by 10.69%, extraction ratio by 9.04%, and precision by 13.27%. The false rate and processing time are reduced by 7.78% and 9.19%, respectively.
format Online
Article
Text
id pubmed-10490795
institution National Center for Biotechnology Information
language English
publishDate 2023
publisher MDPI
record_format MEDLINE/PubMed
spelling pubmed-104907952023-09-09 A Deep Recurrent Learning-Based Region-Focused Feature Detection for Enhanced Target Detection in Multi-Object Media Wang, Jinming Alshahir, Ahmed Abbas, Ghulam Kaaniche, Khaled Albekairi, Mohammed Alshahr, Shahr Aljarallah, Waleed Sahbani, Anis Nowakowski, Grzegorz Sieja, Marek Sensors (Basel) Article Target detection in high-contrast, multi-object images and movies is challenging. This difficulty results from different areas and objects/people having varying pixel distributions, contrast, and intensity properties. This work introduces a new region-focused feature detection (RFD) method to tackle this problem and improve target detection accuracy. The RFD method divides the input image into several smaller ones so that as much of the image as possible is processed. Each of these zones has its own contrast and intensity attributes computed. Deep recurrent learning is then used to iteratively extract these features using a similarity measure from training inputs corresponding to various regions. The target can be located by combining features from many locations that overlap. The recognized target is compared to the inputs used during training, with the help of contrast and intensity attributes, to increase accuracy. The feature distribution across regions is also used for repeated training of the learning paradigm. This method efficiently lowers false rates during region selection and pattern matching with numerous extraction instances. Therefore, the suggested method provides greater accuracy by singling out distinct regions and filtering out misleading rate-generating features. The accuracy, similarity index, false rate, extraction ratio, processing time, and others are used to assess the effectiveness of the proposed approach. The proposed RFD improves the similarity index by 10.69%, extraction ratio by 9.04%, and precision by 13.27%. The false rate and processing time are reduced by 7.78% and 9.19%, respectively. MDPI 2023-08-31 /pmc/articles/PMC10490795/ /pubmed/37688012 http://dx.doi.org/10.3390/s23177556 Text en © 2023 by the authors. https://creativecommons.org/licenses/by/4.0/Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Wang, Jinming
Alshahir, Ahmed
Abbas, Ghulam
Kaaniche, Khaled
Albekairi, Mohammed
Alshahr, Shahr
Aljarallah, Waleed
Sahbani, Anis
Nowakowski, Grzegorz
Sieja, Marek
A Deep Recurrent Learning-Based Region-Focused Feature Detection for Enhanced Target Detection in Multi-Object Media
title A Deep Recurrent Learning-Based Region-Focused Feature Detection for Enhanced Target Detection in Multi-Object Media
title_full A Deep Recurrent Learning-Based Region-Focused Feature Detection for Enhanced Target Detection in Multi-Object Media
title_fullStr A Deep Recurrent Learning-Based Region-Focused Feature Detection for Enhanced Target Detection in Multi-Object Media
title_full_unstemmed A Deep Recurrent Learning-Based Region-Focused Feature Detection for Enhanced Target Detection in Multi-Object Media
title_short A Deep Recurrent Learning-Based Region-Focused Feature Detection for Enhanced Target Detection in Multi-Object Media
title_sort deep recurrent learning-based region-focused feature detection for enhanced target detection in multi-object media
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10490795/
https://www.ncbi.nlm.nih.gov/pubmed/37688012
http://dx.doi.org/10.3390/s23177556
work_keys_str_mv AT wangjinming adeeprecurrentlearningbasedregionfocusedfeaturedetectionforenhancedtargetdetectioninmultiobjectmedia
AT alshahirahmed adeeprecurrentlearningbasedregionfocusedfeaturedetectionforenhancedtargetdetectioninmultiobjectmedia
AT abbasghulam adeeprecurrentlearningbasedregionfocusedfeaturedetectionforenhancedtargetdetectioninmultiobjectmedia
AT kaanichekhaled adeeprecurrentlearningbasedregionfocusedfeaturedetectionforenhancedtargetdetectioninmultiobjectmedia
AT albekairimohammed adeeprecurrentlearningbasedregionfocusedfeaturedetectionforenhancedtargetdetectioninmultiobjectmedia
AT alshahrshahr adeeprecurrentlearningbasedregionfocusedfeaturedetectionforenhancedtargetdetectioninmultiobjectmedia
AT aljarallahwaleed adeeprecurrentlearningbasedregionfocusedfeaturedetectionforenhancedtargetdetectioninmultiobjectmedia
AT sahbanianis adeeprecurrentlearningbasedregionfocusedfeaturedetectionforenhancedtargetdetectioninmultiobjectmedia
AT nowakowskigrzegorz adeeprecurrentlearningbasedregionfocusedfeaturedetectionforenhancedtargetdetectioninmultiobjectmedia
AT siejamarek adeeprecurrentlearningbasedregionfocusedfeaturedetectionforenhancedtargetdetectioninmultiobjectmedia
AT wangjinming deeprecurrentlearningbasedregionfocusedfeaturedetectionforenhancedtargetdetectioninmultiobjectmedia
AT alshahirahmed deeprecurrentlearningbasedregionfocusedfeaturedetectionforenhancedtargetdetectioninmultiobjectmedia
AT abbasghulam deeprecurrentlearningbasedregionfocusedfeaturedetectionforenhancedtargetdetectioninmultiobjectmedia
AT kaanichekhaled deeprecurrentlearningbasedregionfocusedfeaturedetectionforenhancedtargetdetectioninmultiobjectmedia
AT albekairimohammed deeprecurrentlearningbasedregionfocusedfeaturedetectionforenhancedtargetdetectioninmultiobjectmedia
AT alshahrshahr deeprecurrentlearningbasedregionfocusedfeaturedetectionforenhancedtargetdetectioninmultiobjectmedia
AT aljarallahwaleed deeprecurrentlearningbasedregionfocusedfeaturedetectionforenhancedtargetdetectioninmultiobjectmedia
AT sahbanianis deeprecurrentlearningbasedregionfocusedfeaturedetectionforenhancedtargetdetectioninmultiobjectmedia
AT nowakowskigrzegorz deeprecurrentlearningbasedregionfocusedfeaturedetectionforenhancedtargetdetectioninmultiobjectmedia
AT siejamarek deeprecurrentlearningbasedregionfocusedfeaturedetectionforenhancedtargetdetectioninmultiobjectmedia