Weed Detection utilizing Quadratic Polynomial and ROI Techniques

A. J. Ishak, S. S. Mokri, M. Mustafa, A. Hussain
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引用次数: 10

Abstract

Machine vision for selective weeding or selective herbicide spraying relies substantially on the ability of the system to analyze weed images and process the extracted knowledge for decision making prior to implementing the identified control action. To control weed, different weed type would require different herbicide formulation. Consequently the weed must be identified and classified accordingly. In this work, weed images were classified as either broad or narrow weed type. A fundamental problem in weed image recognition using planar curve analysis is to detect curve. It is difficult to successfully extract curve from the image of weed edges since the appropriate scale to use for extraction is not known a priori. As such, this paper considers a curve detection method based on the quadratic polynomial technique which include the use of the region-of- interests (ROI) technique. The ROI technique creates image subsets by selecting regions of the displayed image. The ROIs are typically used to extract statistics for image operations such as classification. As such, the objective of this paper is to present a novel application of curve detection feature extraction technique in weed classification.
利用二次多项式和ROI技术的杂草检测
选择性除草或选择性除草剂喷洒的机器视觉在很大程度上依赖于系统分析杂草图像和处理提取知识的能力,以便在实施已识别的控制行动之前做出决策。为了控制杂草,不同的杂草类型需要不同的除草剂配方。因此,必须对杂草进行识别和分类。在这项工作中,杂草图像分为宽杂草和窄杂草。利用平面曲线分析进行杂草图像识别的一个基本问题是检测曲线。由于提取的尺度不确定,因此很难从杂草边缘图像中成功提取曲线。因此,本文考虑了一种基于二次多项式技术的曲线检测方法,其中包括使用感兴趣区域(ROI)技术。ROI技术通过选择显示图像的区域来创建图像子集。roi通常用于提取图像操作(如分类)的统计信息。因此,本文的目的是提出一种新的曲线检测特征提取技术在杂草分类中的应用。
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