面向精准农业的多光谱害虫检测算法

Syed Umar Rasheed, Wasif Muhammad, Irfan Qaiser, M. J. Irshad
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引用次数: 3

摘要

无脊椎动物在园艺和农业环境中大量存在,它们可能是有害的。采用物理、生物和预防方法的综合病虫害管理系统的早期病虫害检测具有提高作物产量的巨大潜力。利用多光谱图像的计算机视觉技术,对光照变化、局部遮挡、低对比度等动态环境条件下的害虫进行检测和分类。已经提出了各种最先进的深度学习方法,但这些方法存在一些主要的局限性。例如,需要标记图像来监督深度网络的训练,这是一项令人厌烦的工作。其次,一个具有不同环境条件的庞大的原位数据库无法用于深度学习,或者难以为烦躁的生物侵略者建立数据库。在本文中,我们提出了一种基于机器视觉的多光谱害虫检测算法,该算法不需要任何监督网络训练。采用多光谱图像作为害虫检测算法的输入,每张图像提供了不同纹理和形态特征的综合信息,以及每种昆虫的大小、形状、方向、颜色和翅膀图案等可见信息。特征识别采用SURF算法,特征提取采用最小二乘中值回归(LMEDS)算法。通过仿射变换,将RGB和NIR图像的特征融合到紫外(UV)坐标上。类型I, II和总平均误差的平均识别误差超过了最先进方法的平均误差。I型、II型和总平均误差分别为1.62、40.27和3.26,紫外权重为6.672%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Multispectral Pest-Detection Algorithm for Precision Agriculture
Invertebrates are abundant in horticulture and farming environments, and can be detrimental. Early pest detection for an integrated pest-management system with an integration of physical, biological, and prophylactic methods has huge potential for the better yield of crops. Computer vision techniques with multispectral images are used to detect and classify pests in dynamic environmental conditions, such as sunlight variations, partial occlusions, low contrast, etc. Various state-of-art, deep learning approaches have been proposed, but there are some major limitations to these methods. For example, labelled images are required to supervise the training of deep networks, which is tiresome work. Secondly, a huge in-situ database with variant environmental conditions is not available for deep learning, or is difficult to build for fretful bioaggressors. In this paper, we propose a machine-vision-based multispectral pest-detection algorithm, which does not require any kind of supervised network training. Multispectral images are used as input for the proposed pest-detection algorithm, and each image provides comprehensive information about different textural and morphological features, and visible information, i.e., size, shape, orientation, color, and wing patterns for each insect. Feature identification is performed by a SURF algorithm, and feature extraction is accomplished by least median of square regression (LMEDS). Feature fusion of RGB and NIR images onto the coordinates of Ultraviolet (UV) is performed after affine transformation. The mean identification errors of type I, II, and total mean error surpass the mean errors of the state-of-art methods. The type I, II, and total mean errors, with 6.672% UV weights, were emanated to 1.62, 40.27, and 3.26, respectively.
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