The rapid advances in Deep Learning (DL) techniques have enabled rapid detection, localisation, and recognition of objects from images or videos. DL techniques are now being used in many applications related to agriculture and farming. Automatic detection and classification of weeds can play an important role in weed management and so contribute to higher yields. Weed detection in crops from imagery is inherently a challenging problem because both weeds and crops have similar colours ('green-on-green'), and their shapes and texture can be very similar at the growth phase. Also, a crop in one setting can be considered a weed in another. In addition to their detection, the recognition of specific weed species is essential so that targeted controlling mechanisms (e.g. appropriate herbicides and correct doses) can be applied. In this paper, we review existing deep learning-based weed detection and classification techniques. We cover the detailed literature on four main procedures, i.e., data acquisition, dataset preparation, DL techniques employed for detection, location and classification of weeds in crops, and evaluation metrics approaches. We found that most studies applied supervised learning techniques, they achieved high classification accuracy by fine-tuning pre-trained models on any plant dataset, and past experiments have already achieved high accuracy when a large amount of labelled data is available.
翻译:深层学习技术的迅速发展使得能够迅速探测、定位和识别图像或视频中的物体。DL技术现在用于与农业和农业有关的许多应用中。对杂草的自动检测和分类可以在杂草管理中发挥重要作用,从而有助于提高产量。从图像中检测作物的杂草本身就是一个具有挑战性的问题,因为杂草和作物的颜色相似(绿对绿的),其形状和纹理在生长阶段非常相似。此外,一种环境中的作物可以被视为杂草。除了检测之外,对特定杂草种的承认至关重要,因此可以应用有针对性的控制机制(例如适当的除草剂和正确的剂量)。在本文中,我们审查了现有的基于深层次学习的杂草检测和分类技术。我们介绍了四种主要程序的详细文献,即数据采集、数据集编制、用于检测、定位和分类的作物杂草种的DL技术以及评估指标方法。我们发现,除了这些技术的检测之外,对特定杂草种的识别和分类方法至关重要,因此可以应用有针对性的控制机制(例如适当的除草剂和正确的剂量),以便应用有针对性地控制机制。我们审查了现有的大量实验模型,在经过精细化后,它们已经实现了。