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Application of convolutional neural networks for low vegetation filtering from data acquired by UAVs

机译:卷积神经网络在无人机获取数据中的低植被滤波中的应用

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摘要

The main advantage of using unmanned aerial vehicles (UAVs) is the relatively low cost of collecting data, especially when using photogrammetry on images of relatively small areas. Additionally, they have high operational flexibility and the results have a high spatial and temporal resolution. To further facilitate the use of UAVs in photogrammetry, we developed an algorithm to filter out points that indicate areas covered in low vegetation (grass, crops) from the generated point cloud. This paper presents a three-layer filtering algorithm based on convolutional neural networks (CNNs) created for this specific purpose. The modular structure of the algorithm makes it easy to expand on and improve. The proposed solution allows errors in the height of digital elevation model (DEM) points caused by the influence of vegetation to be reduced by as much as 60-70% in relation to height errors from the raw data of high grass. At the same time, the solution presented here is practical for low grass because it does not weaken the model. The algorithm significantly reduces the errors in the DEM, as well as the products derived from the DEM.
机译:使用无人机(UAV)的主要优点是收集数据的成本相对较低,尤其是在对较小区域的图像使用摄影测量法时。此外,它们具有很高的操作灵活性,结果具有很高的时空分辨率。为了进一步促进无人机在摄影测量中的使用,我们开发了一种算法,可从生成的点云中滤除指示低植被(草,农作物)所覆盖区域的点。本文提出了一种基于卷积神经网络(CNN)的三层过滤算法,该算法为此目的而创建。该算法的模块化结构使其易于扩展和改进。所提出的解决方案允许相对于高草原始数据中的高度误差,将由于植被影响而导致的数字高程模型(DEM)点的高度误差减少多达60-70%。同时,这里提出的解决方案对于低草环境是实用的,因为它不会削弱模型。该算法显着减少了DEM以及从DEM派生的产品中的错误。

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