Weed detection using machine learning: A systematic literature review

Bashir Salisu Abubakar
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引用次数: 3

Abstract

Recently, many researchers and practitioners used Machine Learning (ML) algorithms in digital agriculture to help farmers in decision making. This study aims to identify, assess and synthesize research papers that applied ML algorithms in weed detection using the Systematic Literature Review (SLR) Protocol. Based on our defined search string, we retrieved a total of 439 research papers from three electronic databases, of which 20 papers were selected based on the selection criteria and thus, were synthesized and analyzed in detail. The most applied ML algorithm is Neural Networks in these models. Thirteen evaluation parameters were identified, of which accuracy is the most used parameter. 75% of the selected papers used cross-validation as the evaluation approaches, while the rest used holdout. The challenges most encountered were insufficient data and manual labeling of the pixel during image segmentation. Based on the ML algorithms identified, we concluded that supervised learning techniques are the most used techniques in weed detection.
使用机器学习的杂草检测:系统的文献综述
近年来,许多研究人员和实践者在数字农业中使用机器学习(ML)算法来帮助农民决策。本研究旨在通过系统文献综述(SLR)协议识别、评估和综合将ML算法应用于杂草检测的研究论文。根据我们定义的检索字符串,我们从三个电子数据库中检索到共439篇研究论文,并根据选择标准筛选出20篇论文进行详细的综合分析。在这些模型中应用最多的ML算法是神经网络。确定了13个评价参数,其中精度是使用最多的参数。所选论文中75%采用交叉验证作为评价方法,其余采用保留方法。在图像分割过程中遇到的最大挑战是数据不足和人工标记像素。基于识别的机器学习算法,我们得出结论,监督学习技术是杂草检测中最常用的技术。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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