Thomas De Kerf, Seppe Sels, Svetlana Samsonova, Steve Vanlanduit
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引用次数: 0
摘要
港口地区漏油事件频发,对环境构成严重威胁,因此需要高效的检测机制。为此,利用自动无人机可以大大提高溢油检测的速度和准确性。这种进步不仅能加快清理行动,减少对环境的危害,还能加强对污染者的问责,有可能阻止未来事件的发生。目前,采用 RGB 图像进行海上溢油检测的数据集非常稀少。本文介绍了一个独特的、带有注释的数据集,旨在利用神经网络在桌面和边缘计算平台上进行分析,从而弥补这一空白。该数据集通过无人机捕获,包含 1268 张图像,分为油、水和其他类别,使用 Unet 模型架构训练的卷积神经网络在油类检测方面的 F1 得分为 0.71。这凸显了该数据集在实际应用中的实用性,为港口环境的环境保护提供了重要资源。
A dataset of drone-captured, segmented images for oil spill detection in port environments.
The high incidence of oil spills in port areas poses a serious threat to the environment, prompting the need for efficient detection mechanisms. Utilizing automated drones for this purpose can significantly improve the speed and accuracy of oil spill detection. Such advancements not only expedite cleanup operations, reducing environmental harm but also enhance polluter accountability, potentially deterring future incidents. Currently, there's a scarcity of datasets employing RGB images for oil spill detection in maritime settings. This paper presents a unique, annotated dataset aimed at addressing this gap, leveraging a neural network for analysis on both desktop and edge computing platforms. The dataset, captured via drone, comprises 1268 images categorized into oil, water, and other, with a convolutional neural network trained using an Unet model architecture achieving an F1 score of 0.71 for oil detection. This underscores the dataset's practicality for real-world applications, offering crucial resources for environmental conservation in port environments.
期刊介绍:
Scientific Data is an open-access journal focused on data, publishing descriptions of research datasets and articles on data sharing across natural sciences, medicine, engineering, and social sciences. Its goal is to enhance the sharing and reuse of scientific data, encourage broader data sharing, and acknowledge those who share their data.
The journal primarily publishes Data Descriptors, which offer detailed descriptions of research datasets, including data collection methods and technical analyses validating data quality. These descriptors aim to facilitate data reuse rather than testing hypotheses or presenting new interpretations, methods, or in-depth analyses.