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基于无人机影像的杂草图全自动卷积神经网络

A fully convolutional network for weed mapping of unmanned aerial vehicle (UAV) imagery.

机构信息

College of Engineering, South China Agricultural University, Guangzhou, China.

National Center for International Collaboration Research on Precision Agricultural Aviation Pesticide Spraying Technology, Guangzhou, China.

出版信息

PLoS One. 2018 Apr 26;13(4):e0196302. doi: 10.1371/journal.pone.0196302. eCollection 2018.

Abstract

Appropriate Site Specific Weed Management (SSWM) is crucial to ensure the crop yields. Within SSWM of large-scale area, remote sensing is a key technology to provide accurate weed distribution information. Compared with satellite and piloted aircraft remote sensing, unmanned aerial vehicle (UAV) is capable of capturing high spatial resolution imagery, which will provide more detailed information for weed mapping. The objective of this paper is to generate an accurate weed cover map based on UAV imagery. The UAV RGB imagery was collected in 2017 October over the rice field located in South China. The Fully Convolutional Network (FCN) method was proposed for weed mapping of the collected imagery. Transfer learning was used to improve generalization capability, and skip architecture was applied to increase the prediction accuracy. After that, the performance of FCN architecture was compared with Patch_based CNN algorithm and Pixel_based CNN method. Experimental results showed that our FCN method outperformed others, both in terms of accuracy and efficiency. The overall accuracy of the FCN approach was up to 0.935 and the accuracy for weed recognition was 0.883, which means that this algorithm is capable of generating accurate weed cover maps for the evaluated UAV imagery.

摘要

适当的特定地点杂草管理(SSWM)对于确保作物产量至关重要。在大规模区域的 SSWM 中,遥感是提供杂草分布信息的关键技术。与卫星和有人驾驶飞机遥感相比,无人机(UAV)能够捕获高空间分辨率图像,这将为杂草制图提供更详细的信息。本文的目的是基于无人机图像生成准确的杂草覆盖图。2017 年 10 月,在华南的稻田中采集了 UAV RGB 图像。提出了全卷积网络(FCN)方法用于对采集的图像进行杂草制图。迁移学习用于提高泛化能力,跳过架构用于提高预测精度。然后,将 FCN 架构的性能与基于斑块的 CNN 算法和基于像素的 CNN 方法进行了比较。实验结果表明,我们的 FCN 方法在准确性和效率方面均优于其他方法。FCN 方法的总体准确性高达 0.935,杂草识别的准确性为 0.883,这意味着该算法能够为评估的无人机图像生成准确的杂草覆盖图。

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