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Maize seedling detection under different growth stages and complex field environments based on an improved Faster R-CNN

机译:玉米幼苗检测在不同的生长阶段和复杂的现场环境下,基于改进的R-CNN

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This paper presents an improved Faster R-CNN model for a field robot platform (FRP) aimed at automatically extracting image features and quickly and accurately detecting maize seedlings during different growth stages under complex field operation environments, with the goal of preparing for intelligent inter-tillage in maize fields. A FRP with five industrial USB cameras for data collection was used to capture a large number of sample images. The shooting angle range of the industrial USB cameras is 0-90 degrees. The photographs were used to create an image database containing twenty thousand images of soil, maize and weeds. Ten selected pretrained networks were used to replace the network of the CNN feature computing component of the classic Faster R-CNN. A Faster R-CNN with VGG19 processed by the pretrained networks method is proposed. The Faster R-CNN algorithm used in this work represents a deep learning architecture that distinguishes maize seedlings and weeds under three field conditions: Full-cycle, Multi-weather and Multi-angle. This work achieved greater than 97.71% precision in the detection of maize seedlings with respect to soil and weeds. The precision rate of six-leaf to seven-leaf maize seedlings was 2.74% lower than that of the total test set. The precision rate under sunny conditions was 1.97% lower than that of the total test set. The precision rate of an angle shot of 0 degrees was 0.95% lower than that of the total test set. The proposed model has significant potential for autonomous weed and maize classification under actual operating conditions. (C) 2019 IAgrE. Published by Elsevier Ltd. All rights reserved.
机译:本文提高了用于现场机器人平台(FRP)的更快的R-CNN模型,其旨在自动提取图像特征,并在复杂的现场操作环境下在不同的生长阶段快速准确地检测玉米幼苗,其目标是为智能互动制备耕玉领域的耕作。用于数据收集的五个工业USB摄像机的FRP用于捕获大量样本图像。工业USB摄像机的拍摄角度范围为0-90度。照片用于创建包含土壤,玉米和杂草的两万图像的图像数据库。用于替换CNN特征计算组件的CNN特征计算组件的十个选定的预定网络。提出了通过预磨平的网络方法处理的vgg19的速度R-CNN。本工作中使用的速度较快的R-CNN算法代表了一个深入的学习架构,可在三个现场条件下区分玉米幼苗和杂草:全周期,多天气和多角度。该工作在玉米和杂草检测玉米幼苗的精度方面取得了大于97.71%。六叶至七叶玉米幼苗的精密速率低2.74%,低于总试验装置。阳光明媚的条件下的精确率比总测试集的条件低1.97%。 0度的角度拍摄的精度率低于总测试集的0.95%。拟议的模型在实际操作条件下具有自主杂草和玉米分类具有重要潜力。 (c)2019年IAGRE。 elsevier有限公司出版。保留所有权利。

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