Conservation in action: Cost-effective UAVs and real-time detection of the globally threatened swamp deer (Rucervus duvaucelii)

Uncrewed aerial vehicles (UAVs) have proven to be successful tools for ecological monitoring, providing excellent visual resolution and the ability to cover large areas with spatial accuracy. Artificial Intelligence has further improved the capabilities of UAVs vision through object detection. While...

Full description

Saved in:
Bibliographic Details
Main Authors: Ravindra Nath Tripathi, Karan Agarwal, Vikas Tripathi, Ruchi Badola, Syed Ainul Hussain
Format: Article
Language:English
Published: Elsevier 2025-03-01
Series:Ecological Informatics
Subjects:
Online Access:http://www.sciencedirect.com/science/article/pii/S1574954124004552
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1832595378161057792
author Ravindra Nath Tripathi
Karan Agarwal
Vikas Tripathi
Ruchi Badola
Syed Ainul Hussain
author_facet Ravindra Nath Tripathi
Karan Agarwal
Vikas Tripathi
Ruchi Badola
Syed Ainul Hussain
author_sort Ravindra Nath Tripathi
collection DOAJ
description Uncrewed aerial vehicles (UAVs) have proven to be successful tools for ecological monitoring, providing excellent visual resolution and the ability to cover large areas with spatial accuracy. Artificial Intelligence has further improved the capabilities of UAVs vision through object detection. While deep learning has shown significant success in pattern recognition, it still faces challenges in real-world scenarios. In this study, we focused on enhancing the potential of UAVs for wildlife detection and monitoring, specifically focusing on the globally threatened swamp deer (Rucervus duvaucelii). To improve the accuracy of animal recognition with UAVs, we used single-stage detectors YOLO (You Only Look Once) V3, V5, V7, V8, Object detection V3 and DETR (DEtection TRansformer). We trained our model using 48,957 augmented images derived from a dataset of 8210 original true dataset. The result shows the superior performance of Object Detection 3.0 and YOLO V8, achieving a precision score of more than 92 % and a F1 score of more than 85 %, compared to DETR, YOLO V7, V5, and V3. Overall, our study provides an efficient, cost-effective, and accurate detection framework for ecological monitoring that can be non-invasively and least distractively used in various demographic studies of cervids in different regions and habitat types. We have also developed a UAV-based real-time object detection framework that seamlessly integrates with front-end technologies, enabling live detection results regardless of connectivity. This framework operates on a local server, synchronizing with consumer-grade UAVs at a rate of 32 frames per second (fps) with 320 pixel resolution using a frame sampling technique, notably without requiring a dedicated Graphical Processing Unit (GPU). This deliberate choice of not using GPU underscores the commitment to cost-effectiveness and aligns with the research's purpose, prioritizing accessibility and affordability for broader scientific exploration. A least distractive ecological sampling technique was optimized and a maximum of 77 deer were detected and counted in real time within Haiderpur wetland in the Hastinapur Wildlife Sanctuary. This methodology can be replicated and fine-tuned to study other threatened species of conservation priority. This study exemplifies how combining UAVs with deep learning can facilitate species monitoring and population count estimation and be adopted by forest managers to support conservation decisions.
format Article
id doaj-art-1c6991f70fc7465d9ab59bbc5d230ea6
institution Kabale University
issn 1574-9541
language English
publishDate 2025-03-01
publisher Elsevier
record_format Article
series Ecological Informatics
spelling doaj-art-1c6991f70fc7465d9ab59bbc5d230ea62025-01-19T06:24:33ZengElsevierEcological Informatics1574-95412025-03-0185102913Conservation in action: Cost-effective UAVs and real-time detection of the globally threatened swamp deer (Rucervus duvaucelii)Ravindra Nath Tripathi0Karan Agarwal1Vikas Tripathi2Ruchi Badola3Syed Ainul Hussain4Ganga Aqualife Conservation Monitoring Centre, Wildlife Institute of India, Chandrabani, Dehradun, Uttarakhand, 248001, India; Department of Computer Science and Engineering, Graphic Era University, Clement Town, Dehradun, 248002, Uttarakhand, IndiaDepartment of Computer Science and Engineering, Graphic Era University, Clement Town, Dehradun, 248002, Uttarakhand, IndiaDepartment of Computer Science and Engineering, Graphic Era University, Clement Town, Dehradun, 248002, Uttarakhand, IndiaGanga Aqualife Conservation Monitoring Centre, Wildlife Institute of India, Chandrabani, Dehradun, Uttarakhand, 248001, IndiaGanga Aqualife Conservation Monitoring Centre, Wildlife Institute of India, Chandrabani, Dehradun, Uttarakhand, 248001, India; Corresponding author.Uncrewed aerial vehicles (UAVs) have proven to be successful tools for ecological monitoring, providing excellent visual resolution and the ability to cover large areas with spatial accuracy. Artificial Intelligence has further improved the capabilities of UAVs vision through object detection. While deep learning has shown significant success in pattern recognition, it still faces challenges in real-world scenarios. In this study, we focused on enhancing the potential of UAVs for wildlife detection and monitoring, specifically focusing on the globally threatened swamp deer (Rucervus duvaucelii). To improve the accuracy of animal recognition with UAVs, we used single-stage detectors YOLO (You Only Look Once) V3, V5, V7, V8, Object detection V3 and DETR (DEtection TRansformer). We trained our model using 48,957 augmented images derived from a dataset of 8210 original true dataset. The result shows the superior performance of Object Detection 3.0 and YOLO V8, achieving a precision score of more than 92 % and a F1 score of more than 85 %, compared to DETR, YOLO V7, V5, and V3. Overall, our study provides an efficient, cost-effective, and accurate detection framework for ecological monitoring that can be non-invasively and least distractively used in various demographic studies of cervids in different regions and habitat types. We have also developed a UAV-based real-time object detection framework that seamlessly integrates with front-end technologies, enabling live detection results regardless of connectivity. This framework operates on a local server, synchronizing with consumer-grade UAVs at a rate of 32 frames per second (fps) with 320 pixel resolution using a frame sampling technique, notably without requiring a dedicated Graphical Processing Unit (GPU). This deliberate choice of not using GPU underscores the commitment to cost-effectiveness and aligns with the research's purpose, prioritizing accessibility and affordability for broader scientific exploration. A least distractive ecological sampling technique was optimized and a maximum of 77 deer were detected and counted in real time within Haiderpur wetland in the Hastinapur Wildlife Sanctuary. This methodology can be replicated and fine-tuned to study other threatened species of conservation priority. This study exemplifies how combining UAVs with deep learning can facilitate species monitoring and population count estimation and be adopted by forest managers to support conservation decisions.http://www.sciencedirect.com/science/article/pii/S1574954124004552Deep learning (DL)Ganga RiverHastinapur Wildlife Sanctuary (HWS)Pattern recognitionSingle stage detector (SSD) modelWildlife management, animal census
spellingShingle Ravindra Nath Tripathi
Karan Agarwal
Vikas Tripathi
Ruchi Badola
Syed Ainul Hussain
Conservation in action: Cost-effective UAVs and real-time detection of the globally threatened swamp deer (Rucervus duvaucelii)
Ecological Informatics
Deep learning (DL)
Ganga River
Hastinapur Wildlife Sanctuary (HWS)
Pattern recognition
Single stage detector (SSD) model
Wildlife management, animal census
title Conservation in action: Cost-effective UAVs and real-time detection of the globally threatened swamp deer (Rucervus duvaucelii)
title_full Conservation in action: Cost-effective UAVs and real-time detection of the globally threatened swamp deer (Rucervus duvaucelii)
title_fullStr Conservation in action: Cost-effective UAVs and real-time detection of the globally threatened swamp deer (Rucervus duvaucelii)
title_full_unstemmed Conservation in action: Cost-effective UAVs and real-time detection of the globally threatened swamp deer (Rucervus duvaucelii)
title_short Conservation in action: Cost-effective UAVs and real-time detection of the globally threatened swamp deer (Rucervus duvaucelii)
title_sort conservation in action cost effective uavs and real time detection of the globally threatened swamp deer rucervus duvaucelii
topic Deep learning (DL)
Ganga River
Hastinapur Wildlife Sanctuary (HWS)
Pattern recognition
Single stage detector (SSD) model
Wildlife management, animal census
url http://www.sciencedirect.com/science/article/pii/S1574954124004552
work_keys_str_mv AT ravindranathtripathi conservationinactioncosteffectiveuavsandrealtimedetectionofthegloballythreatenedswampdeerrucervusduvaucelii
AT karanagarwal conservationinactioncosteffectiveuavsandrealtimedetectionofthegloballythreatenedswampdeerrucervusduvaucelii
AT vikastripathi conservationinactioncosteffectiveuavsandrealtimedetectionofthegloballythreatenedswampdeerrucervusduvaucelii
AT ruchibadola conservationinactioncosteffectiveuavsandrealtimedetectionofthegloballythreatenedswampdeerrucervusduvaucelii
AT syedainulhussain conservationinactioncosteffectiveuavsandrealtimedetectionofthegloballythreatenedswampdeerrucervusduvaucelii