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首页> 外文期刊>The Science of the Total Environment >Anthropogenic Marine Debris assessment with Unmanned Aerial Vehicle imagery and deep learning: A case study along the beaches of the Republic of Maldives
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Anthropogenic Marine Debris assessment with Unmanned Aerial Vehicle imagery and deep learning: A case study along the beaches of the Republic of Maldives

机译:利用无人机图像和深度学习进行人为海洋垃圾评估:以马尔代夫共和国海滩为例的研究

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摘要

Anthropogenic Marine Debris (AMD) is one of the major environmental issues of our planet to date, and plastic accounts for 80% of total AMD. Beaches represent one of the main marine compartment where AMD accumulates, but few and scattered regional assessments are available from literature reporting quantitative estimation of AMD distributed on the shorelines. However, accessing information on the AMD accumulation rate on beaches, and the associated spatiotemporal oscillations, would be crucial to refining global estimation on the dispersal mechanisms.In our work, we address this issue by proposing an ad-hoc methodology for monitoring and automatically quantifying AMD, based on the combined use of a commercial Unmanned Aerial Vehicle (UAV) (equipped with an RGB high-resolution camera) and a deep-learning based software (i.e.: PlasticFinder). Remote areas were monitored by UAV and were inspected by operators on the ground to check and to categorise all AMD dispersed on the beach. The high-resolution images obtained from UAV allowed to visually detect a percentage of the objects on the shores higher than 87.8%, thus providing suitable images to populate training and testing datasets, as well as gold standards to evaluate the software performance. PlasticFinder reached a Sensitivity of 67%, with a Positive Predictive Value of 94%, in the automatic detection of AMD, but a limitation was found, due to reduced sunlight conditions, thus restricting to the use of the software in its present version. We, therefore, confirmed the efficiency of commercial UAVs as tools for AMD monitoring and demonstrated - for the first time - the potential of deep learning for the automatic detection and quantification of AMD. (C) 2019 Elsevier B.V. All rights reserved.
机译:迄今为止,人为造成的海洋垃圾(AMD)是地球上主要的环境问题之一,塑料占AMD总数的80%。海滩是AMD聚集的主要海洋区域之一,但文献报道对海岸线上分布的AMD进行了定量估计,因此很少有零星的区域评估。然而,获得有关海滩上AMD累积速率以及相关的时空振荡的信息对于完善全球对扩散机制的估计至关重要。在我们的工作中,我们通过提出一种监控和自动量化的临时方法来解决此问题。 AMD,基于商业无人机(UAV)(配备RGB高分辨率相机)和基于深度学习的软件(即PlasticFinder)的结合使用。无人机对偏远地区进行了监视,并由地面操作人员进行了检查,以检查和分类散布在海滩上的所有AMD。从无人机获得的高分辨率图像可以目视检测到海岸上高于87.8%的物体的百分比,从而为填充训练和测试数据集提供了合适的图像,并提供了评估软件性能的黄金标准。在自动检测AMD中,PlasticFinder的灵敏度达到67%,阳性预测值为94%,但是由于阳光条件的减少,发现了局限性,因此限制了在当前版本中使用该软件。因此,我们确认了商用无人机作为AMD监控工具的效率,并首次展示了深度学习在AMD自动检测和量化方面的潜力。 (C)2019 Elsevier B.V.保留所有权利。

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