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FCRN-Based Multi-Task Learning for Automatic Citrus Tree Detection From UAV Images

机译:基于FCRN的多任务学习,可从无人机图像中自动检测柑橘树

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Citrus producers need to monitor orchards frequently, and would benefit greatly from having automated tools to analyze aerial images acquired by drones over the plantations. However, analysing large aerial data sets to enable producers to take management decisions that would optimize productivity and sustainability over time and space remains challenging. Motivated by the success of deep learning in computer vision, this work proposes a novel approach based on Fully Convolutional Regression Networks and Multi-Task Learning to detect individual full-grown trees, tree seedlings, and tree gaps in citrus orchards for inventory tracking. We show that the proposal can identify eight-year-old orange trees with accuracy between 95–99% in high-density commercial plantations where adjacent crowns overlap. This quality of detection was achieved on RGB orthomosaics with a pixel size of about 9.5 cm and requires the nominal spacing between adjacent trees as a priori information. Our results also highlight that detecting tree seedlings and tree gaps remains a challenge. For these two categories, classification sensitivity (recall) was between 59–100% and 63–94%, respectively.
机译:柑橘生产者需要经常监视果园,而拥有自动化工具来分析种植园中无人驾驶飞机采集的空中图像将极大地受益。然而,分析大型航空数据集以使生产者能够做出管理决策,以优化生产力和时间和空间的可持续性仍然具有挑战性。受到计算机视觉深度学习成功的推动,这项工作提出了一种基于完全卷积回归网络和多任务学习的新颖方法,可以检测柑橘园中单个成熟的树木,树木的幼苗和树木的空缺,以进行库存跟踪。我们表明,该提案可以在相邻树冠重叠的高密度商业种植园中识别出八年历史的橙树,其准确度在95–99%之间。这种检测质量是在像素大小约为9.5厘米的RGB正交马赛克上实现的,并且需要相邻树木之间的标称间距作为先验信息。我们的结果还突出表明,检测树木幼苗和树木间隙仍然是一个挑战。对于这两个类别,分类敏感度(召回率)分别在59-100%和63-94%之间。

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