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Hybrid pixel-object pattern recognition in remote sensing.

机译:遥感中的混合像素目标模式识别。

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摘要

This research proposes a hybrid pixel-object framework: in which information from both pixels and objects, resulting from image segmentation, is utilized for pattern recognition in remote sensing. This framework was described and exemplified in two pattern recognition problems in remote sensing—land cover classification and road extraction—which compose two parts of this dissertation. In the first part, a competitive pixel-object approach based on Bayesian neural network for land cover classification was developed. In this approach, primary features from pixels and derived features from objects compete with each other through the posterior probability of one feature vector belonging to a particular category generated in the prediction stage of Bayesian neural network. This approach attempts to solve the problem of spectral confusion caused by reflectance similarity of some land cover types, and reduce the unreliability of object feature information produced by over or under image segmentation through a competitive mechanism. The proposed approach obtains higher classification accuracy than pixel based and hybrid pixel-object classification without competition. In pixel based classification, the Bayesian neural network proves to be superior to traditional Gaussian maximum likelihood classifier and back-propagation neural networks. In the second part of this dissertation, a unique approach for road extraction utilizing pixel spectral information for classification and image segmentation-derived object features was developed. In this approach, road extraction was performed in two steps. In the first step, support vector machine (SVM) was employed to classify the image into two groups of categories: a road group and a non-road group. For this classification, support vector machine achieved higher accuracy than Gaussian maximum likelihood. In the second step, the road group image was segmented into geometrically homogeneous objects using a region growing technique based on a similarity criterion, with higher weighting on shape factors over spectral criteria. A simple thresholding on the shape index and density features derived from these objects was performed to extract road features, which were further processed by thinning and vectorization to obtain road centerlines. The experiment shows the proposed approach works well with images comprised by both rural and urban area features.
机译:这项研究提出了一种混合的像素-对象框架:在该框架中,将来自图像分割的像素和对象的信息用于遥感模式识别。该框架在遥感模式识别中的两个问题(土地覆盖分类和道路提取)中得到描述和举例说明,该问题构成了本文的两个部分。在第一部分中,开发了一种基于贝叶斯神经网络的竞争性像素-目标方法进行土地覆盖分类。在这种方法中,来自像素的主要特征和来自对象的派生特征通过属于在贝叶斯神经网络的预测阶段中生成的特定类别的一个特征矢量的后验概率相互竞争。该方法试图解决由某些土地覆盖类型的反射率相似性引起的光谱混乱的问题,并通过竞争机制来减少由于图像分割过度或不足而产生的对象特征信息的不可靠性。与没有竞争的基于像素和混合像素-对象分类相比,所提出的方法具有更高的分类精度。在基于像素的分类中,贝叶斯神经网络被证明优于传统的高斯最大似然分类器和反向传播神经网络。在本文的第二部分中,开发了一种独特的道路提取方法,该方法利用像素光谱信息进行分类和图像分割衍生的目标特征。在这种方法中,道路提取分两个步骤进行。第一步,使用支持向量机(SVM)将图像分为两类:道路组和非道路组。对于这种分类,支持向量机获得的精度高于高斯最大似然法。第二步,使用基于相似性准则的区域增长技术将道路组图像分割成几何上均一的对象,其中形状因子的权重高于频谱准则。对源自这些对象的形状指数和密度特征进行简单的阈值提取,以提取道路特征,然后通过细化和矢量化进一步处理以获得道路中心线。实验表明,该方法适用于由城乡特征组成的图像。

著录项

  • 作者

    Song, Mingjun.;

  • 作者单位

    The University of Connecticut.;

  • 授予单位 The University of Connecticut.;
  • 学科 Engineering System Science.; Engineering Environmental.; Remote Sensing.
  • 学位 Ph.D.
  • 年度 2002
  • 页码 105 p.
  • 总页数 105
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 系统科学;环境污染及其防治;遥感技术;
  • 关键词

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