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Deep learning versus Object-based Image Analysis (OBIA) in weed mapping of UAV imagery

机译:在UAV Imagerery的杂草映射中,基于对象的图像分析(OBIA)的深度学习

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摘要

Rice is the most important food crop in the world, which is meaningful to ensure the quality and quantity of rice production. During the plantation process, weeds are the key factor to influence the rice yields. In recent years, the chemical control becomes the most widely used means to control the weed infestation because of its advantage in pesticide effects and efficiency. However, excessive use of herbicides has caused negative effects on the rice quality as well as the environment. An accurate weed cover map can provide support information for specific site weed management (SSWM) applications, which may well address the problem of traditional chemical controls. In this work, the unmanned aerial vehicle (UAV) imagery was captured on four different dates over two different rice fields. Object-based image analysis (OBIA) and deep learning approaches were applied to the weed mapping task of the UAV imagery. For the OBIA methods, the multiresolution segmentation and an improved k-means method were applied to segment the imagery into different objects; the colour and texture features were extracted and concatenated into a feature vector; back propagation (BP) neural network, support vector machine (SVM) and random forest were used for classification. After careful hyperparameter optimization and model selection, it was proven that the OBIA method achieved the accuracy of 66.6% mean intersection over union (MIU) on the testing set, and the inference speed is 2343.5 ms for an image sample. For the deep learning approach, the fully convolutional network (FCN) was applied for the pixel-wise classification task; transfer learning was used, and four pretrained convolutional neural networks (AlexNet, VGGNet, GoogLeNet, and ResNet) were transferred to our dataset via fine-tuning technique. Traditional skip architecture and fully connected conditional random fields (CRF) were used to improve the spatial details of FCN; after that, this work proposed to use a partially connected CRF as post processing, which may significantly accelerate the inference speed of fully connected CRF. Besides one single improvement method, hybrid improvement methods were applied and tested. Experimental results showed that the VGGNet-based FCN achieved the highest accuracy; for the improvement methods, the skip architecture and newly proposed partially connected CRF effectively improved the accuracy, and the hybrid improvement method (skip architecture and partially connected CRF) further improved the performance. The hybrid improvement method achieved 80.2% MIU on the testing set, and the inference speed for an image sample is 326.8 ms. The experimental results of this work demonstrated that the UAV remote-sensing utilizing deep learning method can provide reliable support information for SSWM applications in rice fields.
机译:大米是世界上最重要的食物作物,这有意义,以确保水稻生产的质量和数量。在种植过程中,杂草是影响水稻产量的关键因素。近年来,由于其在农药影响和效率的优势,化学对照成为控制杂草侵扰的最广泛使用的手段。然而,过量使用除草剂对水稻质量和环境产生了负面影响。准确的杂草覆盖地图可以为特定网站杂草管理(SSWM)应用提供支持信息,可能会解决传统化学控制的问题。在这项工作中,无人驾驶飞行器(UAV)图像被捕获在两个不同的稻田上四个不同的日期。基于对象的图像分析(OBIA)和深度学习方法应用于UAV图像的杂草映射任务。对于OBIA方法,将多分辨率分割和改进的K-means方法应用于将图像分段为不同的物体;提取颜色和纹理特征并将其连接到特征向量中;回到传播(BP)神经网络,支持向量机(SVM)和随机林用于分类。经过仔细的近双计优化和模型选择,证明了OBIA方法在测试集上实现了66.6%的均值(MIU)的准确度,推断速度为图像样本2343.5 ms。对于深度学习方法,应用全卷积网络(FCN)用于像素明智的分类任务;使用转移学习,通过微调技术将四个普里雷约普拉卷积神经网络(AlexNet,Vggnet,Googlenet和Reset)传输到我们的数据集。传统的跳过架构和完全连接的条件随机字段(CRF)用于改善FCN的空间细节;之后,这项工作提出使用部分连接的CRF作为后处理,这可以显着加速完全连接的CRF的推广速度。除了一个单一的改进方法外,施用和测试杂种改善方法。实验结果表明,基于VGGnet的FCN实现了最高精度;对于改进方法,跳过架构和新提出的部分连接的CRF有效提高了精度,以及混合改进方法(跳过架构和部分连接的CRF)进一步提高了性能。混合改善方法在测试组上实现了80.2%的MIU,图像样本的推断速度为326.8毫秒。这项工作的实验结果表明,利用深度学习方法的UAV遥感可以为稻田中的SSWM应用提供可靠的支持信息。

著录项

  • 来源
    《International journal of remote sensing》 |2020年第10期|3446-3479|共34页
  • 作者单位

    Guangdong Polytech Normal Univ Coll Comp Sci Guangzhou Peoples R China|Natl Ctr Int Collaborat Res Precis Agr Aviat Pest Guangzhou Peoples R China;

    Natl Ctr Int Collaborat Res Precis Agr Aviat Pest Guangzhou Peoples R China|South China Agr Univ Coll Elect Engn Guangzhou Peoples R China;

    Guangdong Polytech Normal Univ Coll Comp Sci Guangzhou Peoples R China;

    Natl Ctr Int Collaborat Res Precis Agr Aviat Pest Guangzhou Peoples R China|South China Agr Univ Coll Engn Guangzhou 510642 Peoples R China;

    Natl Ctr Int Collaborat Res Precis Agr Aviat Pest Guangzhou Peoples R China|South China Agr Univ Engn Fundamental Teaching & Training Ctr Guangzhou Peoples R China;

    Natl Ctr Int Collaborat Res Precis Agr Aviat Pest Guangzhou Peoples R China|South China Agr Univ Coll Engn Guangzhou 510642 Peoples R China;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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