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Distance-based separability criterion of ROI in classification of farmland hyper-spectral images

机译:农田高光谱图像分类中基于距离的ROI可分性准则

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摘要

The hyper-spectral image contains spectral and spatial information, which increases the ability and precision of objects classification. Despite the classification value of hyper-spectral imaging technology within various applications, users often find it difficult to effectively apply in practice because of the effect of light, temperature and wind in outdoor environment. This research presented a new classification model for outdoor farmland objects based on near-infrared (NIR) hyper-spectral images. It involves two steps including region of interest (ROI) acquisition and establishment of classifiers. A distance-based method for quantitative analysis was proposed to optimize the reference pixels in ROI acquisition firstly. Then maximum likelihood (ML) and support vector machine (SVM) were used for farmland objects classification. The performance of the proposed method showed that the total classification accuracy based on the reference pixels was over 97.5%, of which the SVM-M model could reach 99.5%. The research provided an effective method for outdoor farmland image classification. Keywords: distance-based separability criterion, near-infrared hyper-spectral image, ROI, farmland image classification DOI: 10.25165/j.ijabe.20171005.2264 Citation: Tang J L, Miao R H, Zhang Z Y, Xin J, Wang D. Distance-based separability criterion of ROI in classification of farmland hyper-spectral images. Int J Agric & Biol Eng, 2017; 10(5): 177–185.
机译:高光谱图像包含光谱和空间信息,从而提高了对象分类的能力和精度。尽管高光谱成像技术在各种应用中具有分类价值,但由于光,温度和风在室外环境中的影响,用户经常发现很难在实践中有效应用。这项研究提出了一种新的基于近红外(NIR)高光谱图像的室外农田物体分类模型。它涉及两个步骤,包括感兴趣区域(ROI)的获取和分类器的建立。提出了一种基于距离的定量分析方法,以优化ROI获取中的参考像素。然后将最大似然(ML)和支持向量机(SVM)用于农田对象分类。所提方法的性能表明,基于参考像素的总分类精度超过97.5%,其中SVM-M模型可以达到99.5%。该研究为室外农田图像分类提供了一种有效的方法。关键词:基于距离的可分离性标准近红外高光谱图像ROI农田图像分类DOI:10.25165 / j.ijabe.20171005.2264引文:唐建良,苗红润,张中元,辛静,王D.基于距离农田高光谱图像分类中ROI的可分性标准国际农业与生物工程杂志,2017; 10(5):177–185。

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