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首页> 外文期刊>Photovoltaics, IEEE Journal of >Automatic Boundary Extraction of Large-Scale Photovoltaic Plants Using a Fully Convolutional Network on Aerial Imagery
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Automatic Boundary Extraction of Large-Scale Photovoltaic Plants Using a Fully Convolutional Network on Aerial Imagery

机译:在空中图像上使用全卷积网络自动边界提取大型光伏植物

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摘要

This article presents a novel method for boundary extraction of photovoltaic (PV) plants using a fully convolutional network (FCN). Extracting the boundaries of PV plants is essential in the process of aerial inspection and autonomous monitoring by aerial robots. This method provides a clear delineation of the utility-scale PV plants' boundaries for PV developers, operation and maintenance service providers for use in aerial photogrammetry, flight mapping, and path planning during the autonomous monitoring of PV plants. For this purpose, as a prerequisite, the "Amir" dataset consisting of aerial imagery of PV plants from different countries, has been collected. A Mask-RCNN architecture is employed as a deep network with VGG16 as a backbone to detect the boundaries precisely. As comparison, the results of another framework based on classical image processing are compared with the FCN performance in PV plants boundary detection. The results of the FCN demonstrate that the trained model is able to detect the boundaries of PV plants with an accuracy of 96.99% and site-specific tuning of boundary parameters is no longer required.
机译:本文介绍了使用完全卷积网络(FCN)的光伏(PV)植物边界提取的新方法。提取光伏工厂的边界在空中机器人的空中检验和自主监测过程中至关重要。该方法对光伏开发商,运营和维护服务提供商的公用事业级光伏工厂的边界提供了清晰的描绘,用于在空中摄影测量,飞行测绘和PV工厂的自主监测期间的航空摄影测量和路径规划。为此目的,作为先决条件,已经收集了由不同国家的光伏工厂的航空图像组成的“AMIR”数据集。掩模-RCNN架构用作具有VGG16的深网络,作为骨干,以精确地检测边界。如比较,将基于经典图像处理的另一架构的结果与PV工厂边界检测中的FCN性能进行了比较。 FCN的结果表明,培训的模型能够检测PV工厂的边界,精度为96.99%,不再需要特定的边界参数调谐。

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