结合k均值聚类和局部加权最大判别投影的杂草物种识别

Shanwen Zhang, Jing Guo, Zhen Wang
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引用次数: 13

摘要

摘要杂草种类识别是智能农业杂草控制的前提。由于田间杂草种类繁多、不规则且背景复杂,因此田间杂草的防治是一个具有挑战性的课题。提出了一种基于Grabcut和局部判别投影(LWMDP)算法的农田杂草种类识别方法。首先,利用Grabcut去除大部分背景,利用k均值聚类(K-means clustering, KMC)从整个图像中分割杂草。然后,利用LWMDP提取低维判别特征。最后,采用支持向量机(SVM)分类器对杂草种类进行识别。该方法的特点是:(1)Grabcut和KMC利用图像中的纹理(颜色)信息和边界(对比度)信息去除了大部分背景,得到干净的杂草图像,减轻了后续特征提取的负担;(2) LWMDP旨在通过训练样本寻求一种变换,在低维特征子空间中,尽可能地映射不同类别的数据点,而类内数据点则尽可能地接近投影,并且在广义特征值问题中忽略矩阵逆计算,从而自然地避免了小样本问题。在杂草种类图像数据集上的实验结果表明,该方法对杂草种类识别是有效的,可以初步满足基于机器视觉的作物多行喷施的要求。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Combing K-means Clustering and Local Weighted Maximum Discriminant Projections for Weed Species Recognition
Abstract: Weed species identification is the premise to control weeds in smart agriculture. It is a challenging topic to control weeds in field, because the weeds in field are quite various and irregular with complex background. An identification method of weed species in crop field is proposed based on Grabcut and local discriminant projections (LWMDP) algorithm. First, Grabcut is used to remove the most background and K-means clustering (KMC) is utilized to segment weeds from the whole image. Then, LWMDP is employed to extract the low-dimensional discriminant features. Finally, the support vector machine (SVM) classifier is adopted to identify weed species. The characteristics of the method are that (1) Grabcut and KMC utilize the texture (color) information and boundary (contrast) information in the image to remove the most of background and obtain the clean weed image, which can reduce the burden of the subsequent feature extraction; (2) LWMDP aims to seek a transformation by the training samples, such that in the low-dimensional feature subspace, the different-class data points are mapped as far as possible while the within-class data points are projected as close as possible, and the matrix inverse computation is ignored in the generalized eigenvalue problem, thus the small sample size (SSS) problem is avoided naturally. The experimental results on the dataset of the weed species images show that the proposed method is effective for weed identification species, and can preliminarily meet the requirements of multi-row spraying of crop based on machine vision.
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