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Weed detection using image processing under different illumination for site-specific areas spraying

机译:使用不同照明下的图像处理进行杂草检测,用于喷涂场地特定区域

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摘要

Large area bold type spraying of chemical herbicide is not only a waste of herbicides and labor, but also leads to environmental pollution and food quality problems. Traditional methods have the problems of high light and sample quality etc requirements. Therefore, accurately identifying weeds and precisely spraying are important strategies for promoting agricultural sustainable development. To avoid the influence of different illumination on images, this paper adopts the color model and then proposes component to gray images; the vertical projection method and the linear scanning method are combined to quickly identify the center line of the crop rows; the classic Weeds Infestation Rate (WIR) is modified to decrease the computational complexity and the improved horizontal scanning method is taken to calculate within cells; finally, Modified Weeds Infestation Rate (MWIR) is used to realize real-time decision through the minimum error ratio of Bayesian decision under normal distribution. The experimental results show that the accuracy of this algorithm is 92.5%, which exceeds the BP algorithm and SVM algorithm. (C) 2016 Elsevier B.V. All rights reserved.
机译:大面积大胆型喷涂化学除草剂不仅浪费除草剂和劳动力,而且导致环境污染和食品质量问题。传统方法具有高光和样品质量等要求的问题。因此,准确地确定杂草和精确喷涂是促进农业可持续发展的重要策略。为避免不同照明对图像的影响,本文采用颜色模型,然后提出成分灰色图像;垂直投影方法和线性扫描方法组合以快速识别作物行的中心线;经典的杂草侵扰率(WIR)被修改以降低计算复杂性,并且采用改进的水平扫描方法来计算细胞内;最后,改进的杂草侵扰率(MWIR)用于通过正常分布下的贝叶斯决策的最小误差比来实现实时决定。实验结果表明,该算法的准确性为92.5%,超过BP算法和SVM算法。 (c)2016年Elsevier B.v.保留所有权利。

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