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A review on weed detection using ground-based machine vision and image processing techniques

机译:基于地面机视觉和图像处理技术的杂草检测综述

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摘要

Weeds are among the major factors that could harm crop yield. With the advances in electronic and information technologies, machine vision combined with image processing techniques has become a promising tool for precise real-time weed and crop detection in the field, providing valuable sensing information for site-specific weed management. This review summarized the advances of weed detection using ground-based machine vision and image processing techniques. Concretely, the four procedures, i.e., pre-processing, segmentation, feature extraction and classification, for weed detection were presented in detail. To separate vegetation from background, different color indices and classification approaches like color index-based, threshold-based and learning-based ones, were developed. The difficulty of weed detection lies in discriminating between crops and weeds that often have similar properties. Generally, four categories of features, i.e., biological morphology, spectral features, visual textures and spatial contexts, were used for the task, which were discussed in this review. Application of conventional machine learning-based and recently developed deep learning-based approaches for weed detection were also presented. Finally, challenges and solutions provided by researchers for weed detection in the field, including occlusion and overlap of leaves, varying lighting conditions and different growth stages, were discussed.
机译:杂草是可能危害作物产量的主要因素之一。随着电子和信息技术的进步,机器视觉与图像处理技术相结合,已成为该领域中精确实时杂草和作物检测的有希望的工具,为现场特定于现场杂草管理提供了有价值的传感信息。本综述总结了使用地面机器视觉和图像处理技术的杂草检测的进步。具体地,详细介绍了四个程序,即预处理,分段,特征提取和分类,用于杂草检测。为了将植被从背景中分离,开发了不同颜色指数和基于阈值和基于学习的基于学习的阈值的不同颜色指数和分类方法。杂草检测的难度在于群体和杂草之间的差异,通常具有相似的性质。通常,四类特征,即生物形态,光谱特征,视觉纹理和空间上下文,用于该任务,在本次审查中讨论。还介绍了常规机器学习和最近开发的基于深度学习的杂草检测方法的应用。最后,探讨了该领域杂草检测的研究人员提供的挑战和解决方案,包括叶子,不同的照明条件和不同的生长阶段的闭塞和重叠。

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