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Optimized Small Waterbird Detection Method Using Surveillance Videos Based on YOLOv7

SIMPLE SUMMARY: Waterbird monitoring is crucial for conservation and management strategies in wetland ecosystems. There is limited research on using deep learning techniques for small waterbird detection from real-time surveillance videos. This study describes an improved detection method by adding...

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Autores principales: Lei, Jialin, Gao, Shuhui, Rasool, Muhammad Awais, Fan, Rong, Jia, Yifei, Lei, Guangchun
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10295383/
https://www.ncbi.nlm.nih.gov/pubmed/37370439
http://dx.doi.org/10.3390/ani13121929
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author Lei, Jialin
Gao, Shuhui
Rasool, Muhammad Awais
Fan, Rong
Jia, Yifei
Lei, Guangchun
author_facet Lei, Jialin
Gao, Shuhui
Rasool, Muhammad Awais
Fan, Rong
Jia, Yifei
Lei, Guangchun
author_sort Lei, Jialin
collection PubMed
description SIMPLE SUMMARY: Waterbird monitoring is crucial for conservation and management strategies in wetland ecosystems. There is limited research on using deep learning techniques for small waterbird detection from real-time surveillance videos. This study describes an improved detection method by adding an extra prediction head, SimAM attention module, and sequential frame to YOLOv7, termed as YOLOv7-waterbird for the real-time video surveillance devices to identify attention regions and monitor waterbirds. ABSTRACT: Waterbird monitoring is the foundation of conservation and management strategies in almost all types of wetland ecosystems. China’s improved wetland protection infrastructure, which includes remote devices for the collection of larger quantities of acoustic and visual data on wildlife species, increased the need for data filtration and analysis techniques. Object detection based on deep learning has emerged as a basic solution for big data analysis that has been tested in several application fields. However, these deep learning techniques have not yet been tested for small waterbird detection from real-time surveillance videos, which can address the challenge of waterbird monitoring in real time. We propose an improved detection method by adding an extra prediction head, SimAM attention module, and sequential frame to YOLOv7, termed as YOLOv7-waterbird, for real-time video surveillance devices to identify attention regions and perform waterbird monitoring tasks. With the Waterbird Dataset, the mean average precision (mAP) value of YOLOv7-waterbird was 67.3%, which was approximately 5% higher than that of the baseline model. Furthermore, the improved method achieved a recall of 87.9% (precision = 85%) and 79.1% for small waterbirds (defined as pixels less than 40 × 40), suggesting a better performance for small object detection than the original method. This algorithm could be used by the administration of protected areas or other groups to monitor waterbirds with higher accuracy using existing surveillance cameras and can aid in wildlife conservation to some extent.
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spelling pubmed-102953832023-06-28 Optimized Small Waterbird Detection Method Using Surveillance Videos Based on YOLOv7 Lei, Jialin Gao, Shuhui Rasool, Muhammad Awais Fan, Rong Jia, Yifei Lei, Guangchun Animals (Basel) Article SIMPLE SUMMARY: Waterbird monitoring is crucial for conservation and management strategies in wetland ecosystems. There is limited research on using deep learning techniques for small waterbird detection from real-time surveillance videos. This study describes an improved detection method by adding an extra prediction head, SimAM attention module, and sequential frame to YOLOv7, termed as YOLOv7-waterbird for the real-time video surveillance devices to identify attention regions and monitor waterbirds. ABSTRACT: Waterbird monitoring is the foundation of conservation and management strategies in almost all types of wetland ecosystems. China’s improved wetland protection infrastructure, which includes remote devices for the collection of larger quantities of acoustic and visual data on wildlife species, increased the need for data filtration and analysis techniques. Object detection based on deep learning has emerged as a basic solution for big data analysis that has been tested in several application fields. However, these deep learning techniques have not yet been tested for small waterbird detection from real-time surveillance videos, which can address the challenge of waterbird monitoring in real time. We propose an improved detection method by adding an extra prediction head, SimAM attention module, and sequential frame to YOLOv7, termed as YOLOv7-waterbird, for real-time video surveillance devices to identify attention regions and perform waterbird monitoring tasks. With the Waterbird Dataset, the mean average precision (mAP) value of YOLOv7-waterbird was 67.3%, which was approximately 5% higher than that of the baseline model. Furthermore, the improved method achieved a recall of 87.9% (precision = 85%) and 79.1% for small waterbirds (defined as pixels less than 40 × 40), suggesting a better performance for small object detection than the original method. This algorithm could be used by the administration of protected areas or other groups to monitor waterbirds with higher accuracy using existing surveillance cameras and can aid in wildlife conservation to some extent. MDPI 2023-06-09 /pmc/articles/PMC10295383/ /pubmed/37370439 http://dx.doi.org/10.3390/ani13121929 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
Lei, Jialin
Gao, Shuhui
Rasool, Muhammad Awais
Fan, Rong
Jia, Yifei
Lei, Guangchun
Optimized Small Waterbird Detection Method Using Surveillance Videos Based on YOLOv7
title Optimized Small Waterbird Detection Method Using Surveillance Videos Based on YOLOv7
title_full Optimized Small Waterbird Detection Method Using Surveillance Videos Based on YOLOv7
title_fullStr Optimized Small Waterbird Detection Method Using Surveillance Videos Based on YOLOv7
title_full_unstemmed Optimized Small Waterbird Detection Method Using Surveillance Videos Based on YOLOv7
title_short Optimized Small Waterbird Detection Method Using Surveillance Videos Based on YOLOv7
title_sort optimized small waterbird detection method using surveillance videos based on yolov7
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10295383/
https://www.ncbi.nlm.nih.gov/pubmed/37370439
http://dx.doi.org/10.3390/ani13121929
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