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Wavelet analysis and classification of urban environment using high-resolution multispectral image data.

机译:利用高分辨率多光谱图像数据对城市环境进行小波分析和分类。

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摘要

Attempts to analyze urban features and classify land use and land cover directly from high-resolution satellite data with traditional computer classification techniques have proven to be inefficient. The fundamental problem usually found in identifying urban land cover types from high-resolution satellite imagery is that urban areas are composed of diverse materials (metal, glass, concrete, asphalt, plastic, trees, soil, etc.). These materials, each of which may have completely different spectral characteristics, are combined in complex ways by human beings. Hence, each urban land cover type may contain several different objects with different reflectance values. Noisy appearance with lots of edges, and the complex nature of these images, inhibit accurate interpretation of urban features. Traditional classifiers employ spectral information based on single pixel value and ignore a great amount of spatial information. Texture features play an important role in image segmentation and object recognition, as well as interpretation of images in a variety of applications ranging from medical imaging to remote sensing.; This study analyzed urban texture features in multi-spectral image data. Recent development in the mathematical theory of wavelet transform has received overwhelming attention by the image analysts. An evaluation of the ability of wavelet transform and other texture analysis algorithms in urban feature extraction and classification was performed in this study. Advanced Thermal Land Application Sensor (ATLAS) image data at 2.5 m spatial resolution acquired with 15 channel (0.45 μm–12.2 μm) were used for this research. The data were collected by a NASA Stennis LearJet 23 flying at 6600 feet over Baton Rouge, Louisiana, on May 7, 1999. The algorithms examined were the wavelet transforms, spatial co-occurrence matrix, fractal analysis, and spatial autocorrelation. The performance of the above approaches with the use of different window sizes, different channels, and different feature measures were investigated. Six types of urban land cover features were evaluated. Wavelet transform was found to be far more efficient than other advanced spatial methods. The results of this research indicate that the accuracy of texture analysis in classifying urban features in fine resolution image data could be significantly improved with the use of wavelet transform approach.
机译:事实证明,尝试使用传统的计算机分类技术直接从高分辨率卫星数据中分析城市特征并对土地使用和土地覆盖进行分类是无效的。从高分辨率卫星图像识别城市土地覆盖类型时通常发现的基本问题是,城市地区由多种材料组成(金属,玻璃,混凝土,沥青,塑料,树木,土壤等)。这些材料中的每种材料可能具有完全不同的光谱特征,它们被人类以复杂的方式组合在一起。因此,每种城市土地覆盖类型可能包含具有不同反射率值的多个不同对象。带有许多边缘的嘈杂外观以及这些图像的复杂性质阻碍了对城市特征的准确解释。传统的分类器使用基于单个像素值的光谱信息,而忽略了大量的空间信息。纹理特征在图像分割和对象识别以及从医学成像到遥感的各种应用中的图像解释中起着重要作用。这项研究分析了多光谱图像数据中的城市纹理特征。小波变换数学理论的最新发展受到图像分析家的极大关注。本研究对小波变换和其他纹理分析算法在城市特征提取和分类中的能力进行了评估。使用15通道(0.45 μm–12.2μm)采集的2.5 m空间分辨率的先进热土地应用传感器(ATLAS)图像数据进行了此项研究。数据由1999年5月7日在6600英尺高的路易斯安那州巴吞鲁日上空飞行的NASA Stennis LearJet 23收集。所检查的算法是小波变换,空间共现矩阵,分形分析和空间自相关。研究了使用不同窗口大小,不同通道和不同特征量度的上述方法的性能。评价了六种类型的城市土地覆盖特征。发现小波变换比其他高级空间方法要有效得多。研究结果表明,使用小波变换方法可以显着提高纹理分析在对高分辨率图像数据中的城市特征进行分类中的准确性。

著录项

  • 作者

    Myint, Soe Win.;

  • 作者单位

    Louisiana State University and Agricultural & Mechanical College.;

  • 授予单位 Louisiana State University and Agricultural & Mechanical College.;
  • 学科 Physical Geography.; Geotechnology.; Remote Sensing.
  • 学位 Ph.D.
  • 年度 2001
  • 页码 329 p.
  • 总页数 329
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 自然地理学;地质学;遥感技术;
  • 关键词

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