Detection of Artificial Seed-like Objects from UAV Imagery
In the last two decades, unmanned aerial vehicle (UAV) technology has been widely utilized as an aerial survey method. Recently, a unique system of self-deployable and biodegradable microrobots akin to winged achene seeds was introduced to monitor environmental parameters in the air above the soil interface, which requires geo-localization. This research focuses on detecting these artificial seed-like objects from UAV RGB images in real-time scenarios, employing the object detection algorithm YOLO (You Only Look Once). Three environmental parameters, namely, daylight condition, background type, and flying altitude, were investigated to encompass varying data acquisition situations and their influence on detection accuracy. Artificial seeds were detected using four variants of the YOLO version 5 (YOLOv5) algorithm, which were compared in terms of accuracy and speed. The most accurate model variant was used in combination with slice-aided hyper inference (SAHI) on full resolution images to evaluate the model’s performance. It was found that the YOLOv5n variant had the highest accuracy and fastest inference speed. After model training, the best conditions for detecting artificial seed-like objects were found at a flight altitude of 4 m, on an overcast day, and against a concrete background, obtaining accuracies of 0.91, 0.90, and 0.99, respectively. YOLOv5n outperformed the other models by achieving a mAP0.5 score of 84.6% on the validation set and 83.2% on the test set. This study can be used as a baseline for detecting seed-like objects under the tested conditions in future studies.
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Format: | Article/Letter to editor biblioteca |
Language: | English |
Subjects: | background type, deep learning, flying height, light conditions, object detection, unmanned aerial vehicles, |
Online Access: | https://research.wur.nl/en/publications/detection-of-artificial-seed-like-objects-from-uav-imagery |
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dig-wur-nl-wurpubs-6137792025-01-14 Bomantara, Yanuar A. Mustafa, Hasib Bartholomeus, Harm Kooistra, Lammert Article/Letter to editor Remote Sensing 15 (2023) 6 ISSN: 2072-4292 Detection of Artificial Seed-like Objects from UAV Imagery 2023 In the last two decades, unmanned aerial vehicle (UAV) technology has been widely utilized as an aerial survey method. Recently, a unique system of self-deployable and biodegradable microrobots akin to winged achene seeds was introduced to monitor environmental parameters in the air above the soil interface, which requires geo-localization. This research focuses on detecting these artificial seed-like objects from UAV RGB images in real-time scenarios, employing the object detection algorithm YOLO (You Only Look Once). Three environmental parameters, namely, daylight condition, background type, and flying altitude, were investigated to encompass varying data acquisition situations and their influence on detection accuracy. Artificial seeds were detected using four variants of the YOLO version 5 (YOLOv5) algorithm, which were compared in terms of accuracy and speed. The most accurate model variant was used in combination with slice-aided hyper inference (SAHI) on full resolution images to evaluate the model’s performance. It was found that the YOLOv5n variant had the highest accuracy and fastest inference speed. After model training, the best conditions for detecting artificial seed-like objects were found at a flight altitude of 4 m, on an overcast day, and against a concrete background, obtaining accuracies of 0.91, 0.90, and 0.99, respectively. YOLOv5n outperformed the other models by achieving a mAP0.5 score of 84.6% on the validation set and 83.2% on the test set. This study can be used as a baseline for detecting seed-like objects under the tested conditions in future studies. en application/pdf https://research.wur.nl/en/publications/detection-of-artificial-seed-like-objects-from-uav-imagery 10.3390/rs15061637 https://edepot.wur.nl/629599 background type deep learning flying height light conditions object detection unmanned aerial vehicles https://creativecommons.org/licenses/by/4.0/ https://creativecommons.org/licenses/by/4.0/ Wageningen University & Research |
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background type deep learning flying height light conditions object detection unmanned aerial vehicles background type deep learning flying height light conditions object detection unmanned aerial vehicles |
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background type deep learning flying height light conditions object detection unmanned aerial vehicles background type deep learning flying height light conditions object detection unmanned aerial vehicles Bomantara, Yanuar A. Mustafa, Hasib Bartholomeus, Harm Kooistra, Lammert Detection of Artificial Seed-like Objects from UAV Imagery |
description |
In the last two decades, unmanned aerial vehicle (UAV) technology has been widely utilized as an aerial survey method. Recently, a unique system of self-deployable and biodegradable microrobots akin to winged achene seeds was introduced to monitor environmental parameters in the air above the soil interface, which requires geo-localization. This research focuses on detecting these artificial seed-like objects from UAV RGB images in real-time scenarios, employing the object detection algorithm YOLO (You Only Look Once). Three environmental parameters, namely, daylight condition, background type, and flying altitude, were investigated to encompass varying data acquisition situations and their influence on detection accuracy. Artificial seeds were detected using four variants of the YOLO version 5 (YOLOv5) algorithm, which were compared in terms of accuracy and speed. The most accurate model variant was used in combination with slice-aided hyper inference (SAHI) on full resolution images to evaluate the model’s performance. It was found that the YOLOv5n variant had the highest accuracy and fastest inference speed. After model training, the best conditions for detecting artificial seed-like objects were found at a flight altitude of 4 m, on an overcast day, and against a concrete background, obtaining accuracies of 0.91, 0.90, and 0.99, respectively. YOLOv5n outperformed the other models by achieving a mAP0.5 score of 84.6% on the validation set and 83.2% on the test set. This study can be used as a baseline for detecting seed-like objects under the tested conditions in future studies. |
format |
Article/Letter to editor |
topic_facet |
background type deep learning flying height light conditions object detection unmanned aerial vehicles |
author |
Bomantara, Yanuar A. Mustafa, Hasib Bartholomeus, Harm Kooistra, Lammert |
author_facet |
Bomantara, Yanuar A. Mustafa, Hasib Bartholomeus, Harm Kooistra, Lammert |
author_sort |
Bomantara, Yanuar A. |
title |
Detection of Artificial Seed-like Objects from UAV Imagery |
title_short |
Detection of Artificial Seed-like Objects from UAV Imagery |
title_full |
Detection of Artificial Seed-like Objects from UAV Imagery |
title_fullStr |
Detection of Artificial Seed-like Objects from UAV Imagery |
title_full_unstemmed |
Detection of Artificial Seed-like Objects from UAV Imagery |
title_sort |
detection of artificial seed-like objects from uav imagery |
url |
https://research.wur.nl/en/publications/detection-of-artificial-seed-like-objects-from-uav-imagery |
work_keys_str_mv |
AT bomantarayanuara detectionofartificialseedlikeobjectsfromuavimagery AT mustafahasib detectionofartificialseedlikeobjectsfromuavimagery AT bartholomeusharm detectionofartificialseedlikeobjectsfromuavimagery AT kooistralammert detectionofartificialseedlikeobjectsfromuavimagery |
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