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首页> 外文期刊>Journal of Robotic Systems >Transfer learning between crop types for semantic segmentation of crops versus weeds in precision agriculture
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Transfer learning between crop types for semantic segmentation of crops versus weeds in precision agriculture

机译:在作物类型之间进行转移学习,以对精准农业中的作物和杂草进行语义分割

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摘要

AbstractAgricultural robots rely on semantic segmentation for distinguishing between crops and weeds to perform selective treatments and increase yield and crop health while reducing the amount of chemicals used. Deep‐learning approaches have recently achieved both excellent classification performance and real‐time execution. However, these techniques also rely on a large amount of training data, requiring a substantial labeling effort, both of which are scarce in precision agriculture. Additional design efforts are required to achieve commercially viable performance levels under varying environmental conditions and crop growth stages. In this paper, we explore the role of knowledge transfer between deep‐learning‐based classifiers for different crop types, with the goal of reducing the retraining time and labeling efforts required for a new crop. We examine the classification performance on three datasets with different crop types and containing a variety of weeds and compare the performance and retraining efforts required when using data labeled at pixel level with partially labeled data obtained through a less time‐consuming procedure of annotating the segmentation output. We show that transfer learning between different crop types is possible and reduces training times for up to 80%. Furthermore, we show that even when the data used for retraining are imperfectly annotated, the classification performance is within 2% of that of networks trained with laboriously annotated pixel‐precision data.
机译:摘要农业机器人依靠语义分割来区分农作物和杂草,以进行选择性处理并增加产量和作物健康,同时减少化学药品的使用量。深度学习方法最近获得了出色的分类性能和实时执行能力。但是,这些技术还依赖于大量的培训数据,需要大量的贴标签工作,而这在精密农业中是很少的。为了在变化的环境条件和作物生长阶段达到商业上可行的性能水平,还需要进行额外的设计工作。在本文中,我们探讨了不同作物类型的基于深度学习的分类器之间知识转移的作用,目的是减少新作物所需的再培训时间和标签工作。我们检查了具有不同农作物类型并包含多种杂草的三个数据集的分类性能,并比较了使用像素级标记的数据与通过较少的注释分割输出的过程获得的部分标记的数据时所需的性能和再培训工作。我们证明了在不同作物类型之间进行转移学习是可能的,并且可以将培训时间减少多达80%。此外,我们表明,即使对用于再训练的数据进行了不正确的注释,分类性能也要比使用费力地进行注释的像素精度数据训练的网络的分类性能低2%。

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