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Feature Learning Based Approach for Weed Classification Using High Resolution Aerial Images from a Digital Camera Mounted on a UAV

机译:基于特征学习的杂草分类方法,该方法使用了安装在无人机上的数码相机的高分辨率航拍图像

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The development of low-cost unmanned aerial vehicles (UAVs) and light weight imaging sensors has resulted in significant interest in their use for remote sensing applications. While significant attention has been paid to the collection, calibration, registration and mosaicking of data collected from small UAVs, the interpretation of these data into semantically meaningful information can still be a laborious task. A standard data collection and classification work-flow requires significant manual effort for segment size tuning, feature selection and rule-based classifier design. In this paper, we propose an alternative learning-based approach using feature learning to minimise the manual effort required. We apply this system to the classification of invasive weed species. Small UAVs are suited to this application, as they can collect data at high spatial resolutions, which is essential for the classification of small or localised weed outbreaks. In this paper, we apply feature learning to generate a bank of image filters that allows for the extraction of features that discriminate between the weeds of interest and background objects. These features are pooled to summarise the image statistics and form the input to a texton-based linear classifier that classifies an image patch as weed or background. We evaluated our approach to weed classification on three weeds of significance in Australia: water hyacinth, tropical soda apple and serrated tussock. Our results showed that collecting images at 5–10 m resulted in the highest classifier accuracy, indicated by F1 scores of up to 94%.
机译:低成本无人飞行器(UAV)和轻型成像传感器的发展引起了人们对其在遥感应用中的使用的极大兴趣。尽管已经对从小型UAV收集的数据的收集,校准,配准和镶嵌给予了极大的关注,但是将这些数据解释为语义上有意义的信息仍然是一项艰巨的任务。标准的数据收集和分类工作流程需要大量的人工来进行段大小调整,功能选择和基于规则的分类器设计。在本文中,我们提出了一种使用特征学习的基于学习的替代方法,以最大程度地减少所需的体力劳动。我们将此系统应用于入侵性杂草物种的分类。小型无人机适合这种应用,因为它们可以以高空间分辨率收集数据,这对于分类小型或局部杂草暴发至关重要。在本文中,我们应用特征学习来生成图像过滤器库,从而可以提取可区分目标杂草和背景物体的特征。汇总这些功能以汇总图像统计信息,并形成基于Texton的线性分类器的输入,该分类器将图像块分类为杂草或背景。我们在澳大利亚的三种重要杂草中评估了杂草分类方法:水葫芦,热带苏打苹果和锯齿状。我们的结果表明,在5–10 m处收集图像会导致最高的分类器准确性,F1分数最高可表明94%。

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