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Tree extraction from multi-scale UAV images using Mask R-CNN with FPN

机译:使用FPN使用掩模R-CNN的多尺度UAV图像的树提取

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ABSTRACT Tree detection and counting have been performed using conventional methods or high costly remote sensing data. In the past few years, deep learning techniques have gained significant progress in the remote sensing area. Namely, convolutional neural networks (CNNs) have been recognized as one of the most successful and widely used deep learning approaches and they have been used for object detection. In this paper, we employed a Mask R-CNN model and feature pyramid network (FPN) for tree extraction from high-resolution RGB unmanned aerial vehicle (UAV) data. The main aim of this paper is to explore the employed method in images with different scales and tree contents. For this purpose, UAV images from two different areas were acquired and three big-scale test images were created for experimental analysis and accuracy assessment. According to the accuracy analyses, despite the scale and the content changes, the proposed model maintains its detection accuracy to a large extent. To our knowledge, this is the first time a Mask R-CNN model with FPN has been used with UAV data for tree extraction.
机译:抽象树检测和计数已经使用传统方法或高昂贵的遥感数据进行。在过去几年中,深度学习技术在遥感区域中取得了重大进展。即,卷积神经网络(CNNS)被认为是最成功和广泛使用的深度学习方法之一,并且它们已被用于对象检测。在本文中,我们采用了一个掩模R-CNN模型,具有来自高分辨率RGB无人机(UAV)数据的树提取的金字塔网络(FPN)。本文的主要目的是探讨具有不同尺度和树内容的图像中的采用方法。为此目的,获取了来自两个不同区域的UAV图像,并为实验分析和准确性评估创建了三种大规模测试图像。根据准确性分析,尽管尺度和内容变化,所提出的模型在很大程度上保持了检测精度。为了我们的知识,这是第一次使用FPN进行掩模R-CNN模型已与UAV数据用于树提取。

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