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Joint Stem Detection and Crop-Weed Classification for Plant-Specific Treatment in Precision Farming

机译:精密养殖中植物特异性治疗的联合茎干检测与作物杂草分类

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Applying agrochemicals is the default procedure for conventional weed control in crop production, but has negative impacts on the environment. Robots have the potential to treat every plant in the field individually and thus can reduce the required use of such chemicals. To achieve that, robots need the ability to identify crops and weeds in the field and must additionally select effective treatments. While certain types of weed can be treated mechanically, other types need to be treated by (selective) spraying. In this paper, we present an approach that provides the necessary information for effective plant-specific treatment. It outputs the stem location for weeds, which allows for mechanical treatments, and the covered area of the weed for selective spraying. Our approach uses an end-to-end trainable fully convolutional network that simultaneously estimates stem positions as well as the covered area of crops and weeds. It jointly learns the class-wise stem detection and the pixel-wise semantic segmentation. Experimental evaluations on different real-world datasets show that our approach is able to reliably solve this problem. Compared to state-of-the-art approaches, our approach not only substantially improves the stem detection accuracy, i.e., distinguishing crop and weed stems, but also provides an improvement in the semantic segmentation performance.
机译:应用农业化学品是作物生产中常规杂草控制的违约程序,但对环境产生负面影响。机器人有可能单独治疗现场的每个植物,从而可以减少这种化学品所需的使用。为实现这一目标,机器人需要能够识别该领域的作物和杂草,并且必须另外选择有效的治疗方法。虽然某些类型的杂草可以机械地处理,但需要通过(选择性)喷涂治疗其他类型。在本文中,我们提出了一种提供有效植物特异性治疗的必要信息的方法。它输出杂草的茎位置,允许机械处理,以及用于选择性喷涂的杂草的覆盖区域。我们的方法使用端到端的可训练完全卷积网络,同时估计干部位置以及作物和杂草的覆盖区域。它共同学习了类明智的阀杆检测和像素方面的语义分割。不同现实数据集的实验评估表明,我们的方法能够可靠地解决这个问题。与最先进的方法相比,我们的方法不仅大大提高了茎检测精度,即区分作物和杂草茎,还提供了语义分割性能的改进。

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