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ID 67640
フルテキストURL
著者
Pan, Shijun Graduate School of Environmental and Life Science, Okayama University
Yoshida, Keisuke Graduate School of Environmental and Life Science, Okayama University
Shimoe, Daichi Graduate School of Environmental and Life Science, Okayama University
Kojima, Takashi TOKEN C.E.E. Consultants Co., Ltd.
Nishiyama, Satoshi Graduate School of Environmental and Life Science, Okayama University
抄録
In recent years, waste pollution has become a severe threat to riparian environments worldwide. Along with the advancement of deep learning (DL) algorithms (i.e., object detection models), related techniques have become useful for practical applications. This work attempts to develop a data generation approach to generate datasets for small target recognition, especially for recognition in remote sensing images. A relevant point is that similarity between data used for model training and data used for testing is crucially important for object detection model performance. Therefore, obtaining training data with high similarity to the monitored objects is a key objective of this study. Currently, Artificial Intelligence Generated Content (AIGC), such as single target objects generated by Luma AI, is a promising data source for DL-based object detection models. However, most of the training data supporting the generated results are not from Japan. Consequently, the generated data are less similar to monitored objects in Japan, having, for example, different label colors, shapes, and designs. For this study, the authors developed a data generation approach by combining social media (Clean-Up Okayama) and single-image-based 3D model generation algorithms (e.g., InstantMesh) to provide a reliable reference for future generations of localized data. The trained YOLOv8 model in this research, obtained from the S2PS (Similar to Practical Situation) AIGC dataset, produced encouraging results (high F1 scores, approximately 0.9) in scenario-controlled UAV-based riparian PET bottle waste identification tasks. The results of this study show the potential of AIGC to supplement or replace real-world data collection and reduce the on-site work load.
キーワード
generative artificial intelligence
InstantMesh
riparian waste
SNS
3D model
発行日
2024-09-09
出版物タイトル
Drones
8巻
9号
出版者
MDPI
開始ページ
471
ISSN
2504-446X
資料タイプ
学術雑誌論文
言語
英語
OAI-PMH Set
岡山大学
著作権者
© 2024 by the authors.
論文のバージョン
publisher
DOI
Web of Science KeyUT
関連URL
isVersionOf https://doi.org/10.3390/drones8090471
ライセンス
https://creativecommons.org/licenses/by/4.0/
Citation
Pan, S.; Yoshida, K.; Shimoe, D.; Kojima, T.; Nishiyama, S. Generating 3D Models for UAV-Based Detection of Riparian PET Plastic Bottle Waste: Integrating Local Social Media and InstantMesh. Drones 2024, 8, 471. https://doi.org/10.3390/drones8090471
助成機関名
Japan Science and Technology Agency
Okayama University
River Foundation
助成番号
JPMJSP2126
2024-5211-067