利用 YOLOv8 模型实时探测山洪暴发

IF 2.7 4区 地球科学 Q2 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Earth Science Informatics Pub Date : 2024-07-29 DOI:10.1007/s12145-024-01428-x
Nguyen Hong Quang, Hanna Lee, Namhoon Kim, Gihong Kim
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引用次数: 0

摘要

全球范围内,人类的生命和财产都受到山洪(FF)的威胁,而由于气候变化影响带来的前所未有的条件,预计未来的损失还会增加。由于似乎很难避免和预防山洪暴发,实时检测山洪暴发可能是减少损失和改善管理的适当解决方案。目前,计算机视觉应用(如深度学习和人工智能)的发展十分迅速。虽然人工智能模型已被开发应用于许多领域,但基于大量的训练数据和所需的高计算基础设施,它们在地球科学领域的实施受到了限制。因此,这项工作旨在训练最新的 YOLOv8 模型,并将其应用于韩国地区以及可能的其他国家的山洪爆发实时检测。为了克服训练数据不足的问题,我们创建了小型现场山洪模型,并对其进行了拍照和录像。1500多张FF照片被用于模型训练和验证,在所有训练深度(25、50、75和100个epochs)中,模型平均精度超过60%。尽管在韩国 FF 测试数据集中出现了一些模型误报和漏报,但 YOLOv8 最佳模型在大多数 FF 事件中生成的边界框(BB)的置信度都很高。此外,在应用于输入镜头和网络摄像头流时,该模型能够以高置信度值(最佳值 0.86)顺利检测到 FF 区域的精确位置,从而凸显了模型的鲁棒性。我们强烈建议建立一个实时 FF 警告系统,以减少其负面影响。虽然 YOLO 与其他深度学习模型一样有效、快速,但它需要大量输入数据才能确保更高的准确度和置信度。未来的工作可能会在这方面进行探索,特别是在光照不足的情况下获取数据,以提高模型在夜间的检测能力。
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Real-time flash flood detection employing the YOLOv8 model

Human lives and property are threatened by Flash floods (FF) worldwide and as a result of the unprecedented conditions of the climate change effects the losses are predicted to increase in the future. As it seems difficult to avoid and prevent them, real-time flash flood detections could be an appropriate solution for damage reduction and better management. Currently, the development of computer vision applications such as deep learning and AI has been advanced. Although AI models have been developed for applications in many fields, their implementations for geosciences are limited based on large amounts of training data and the highly required computational infrastructure. Hence, this work aims to train the latest YOLOv8 model and apply it to real-time flash flood detection for regions of Korea and possibly for other nations. To overcome the shortage of training data, we created small on-site flash flood models and took pictures and footage of them. More than 1500 photos of FF were used for model trains and validations gaining a model mean average precision of above 60% of all training depths (25, 50, 75, and 100 epochs). Despite some model false positives and missed false positive detections using the Korean FF test dataset, the YOLOv8 best model generated bounding boxes (BB) with high confidence values in most FF events. Furthermore, the robustness of the model is highlighted by its ability to smoothly detect the precise positions of the FF areas with high confidence values (best 0.86) when applied for input footage and webcam streams. It is highly encouraged to establish a real-time FF warning system to reduce their negative effects. Although YOLO is effective and fast, like other deep learning models, it requires large input data to ensure higher accuracy and confidence. Future works might explore this aspect, particularly the data acquired in light inefficiency to improve the model detections at night time.

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来源期刊
Earth Science Informatics
Earth Science Informatics COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS-GEOSCIENCES, MULTIDISCIPLINARY
CiteScore
4.60
自引率
3.60%
发文量
157
审稿时长
4.3 months
期刊介绍: The Earth Science Informatics [ESIN] journal aims at rapid publication of high-quality, current, cutting-edge, and provocative scientific work in the area of Earth Science Informatics as it relates to Earth systems science and space science. This includes articles on the application of formal and computational methods, computational Earth science, spatial and temporal analyses, and all aspects of computer applications to the acquisition, storage, processing, interchange, and visualization of data and information about the materials, properties, processes, features, and phenomena that occur at all scales and locations in the Earth system’s five components (atmosphere, hydrosphere, geosphere, biosphere, cryosphere) and in space (see "About this journal" for more detail). The quarterly journal publishes research, methodology, and software articles, as well as editorials, comments, and book and software reviews. Review articles of relevant findings, topics, and methodologies are also considered.
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