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Land-Use/Land-Cover Change Detection Using Change-Vector Analysis in Posterior Probability Space

机译:后验概率空间中基于变化矢量分析的土地利用/土地覆被变化检测

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Land use/land cover change is an important field in global environmental change research. Remote sensing is a valuable data source from which land use/land cover change information can be extracted efficiently. A number of techniques for accomplishing change detection using satellite imagery have been formulated, applied, and evaluated, which can be generally grouped into two types. (1) Those based on spectral classification of the input data such as post-classification comparison and direct two-date classification; and (2) those based on radiometric change between different acquisition dates. The shortage of type 1 is cumulative error in image classification of an individual date. However, radiometric change approaches has a strict requirement for reliable image radiometry.In light of the above mentioned drawbacks of those two types of change detection methods, this paper presents a new method named change vector analysis in posterior probability space (CVAPS). Change-vector analysis (CVA) is one of the most successful radiometric change-based approaches. CVAPS approach incorporates post-classification comparison method and CVA approach, which is expected to inherit the advantages of two traditional methods and avoid their defects at the same time. CVAPS includes the following four steps. (1) Images in different periods are classified by certain classifier which can provide posterior probability output. Then, the posterior probability can be treated as a vector, the dimension of which is equal to the number of classes. (2) A procedure similar with CVA is employed. Compared with traditional CVA, new method analyzes the change vector in posterior probability space instead of spectral feature space. (3) A semiautomatic method, named Double-Window Flexible Pace Search (DFPS), is employed to determine the threshold of change magnitude. (4) Change category is discriminated by cosines of the change vectors.CVAPS approach was applied and validated by a case study of land use change detection in urban area of Shenzhen, China using multi-temporal TM data. Kappa coefficients of "changeo-change" detection and "from-to" types of change detection were employed for accuracy assessment. The experimental results show that CVAPS outperform than post-classification comparison method and can avoid cumulative error effectively. Besides, radiometric correction is not needed in this method compared with traditional CVA. Therefore, it is indicated that CVAPS is potentially useful in land-use/land-cover change detection.
机译:土地利用/土地覆被变化是全球环境变化研究的重要领域。遥感是有价值的数据源,可以从中有效提取土地利用/土地覆被变化信息。已经制定,应用和评估了许多使用卫星图像完成变化检测的技术,这些技术通常可以分为两种类型。 (1)基于输入数据的光谱分类的那些,例如分类后比较和直接两日期分类; (2)基于不同采集日期之间辐射测量变化的那些。类型1的不足是单个日期的图像分类中的累积错误。但是,辐射度变化方法对可靠的图像辐射度有严格的要求。 鉴于这两种类型的变化检测方法的上述缺点,本文提出了一种新的方法,称为后验概率空间中的变化矢量分析(CVAPS)。更改矢量分析(CVA)是最成功的基于辐射更改的方法之一。 CVAPS方法结合了分类后比较方法和CVA方法,有望继承两种传统方法的优点并同时避免它们的缺陷。 CVAPS包括以下四个步骤。 (1)不同时期的图像由某些分类器分类,可以提供后验概率输出。然后,后验概率可以视为向量,其维数等于类的数量。 (2)采用类似于CVA的程序。与传统的CVA相比,新方法分析了后验概率空间而不是频谱特征空间中的变化向量。 (3)采用半自动方法,称为双窗口柔性步速搜索(DFPS),以确定变化幅度的阈值。 (4)通过变更向量的余弦来区分变更类别。 通过使用多时相TM数据对中国深圳市区土地利用变化进行检测的案例研究,应用了CVAPS方法并对其进行了验证。使用“变化/不变”检测和“从-到”类型的变化检测的Kappa系数进行准确性评估。实验结果表明,CVAPS优于分类后比较方法,可以有效避免累积误差。此外,与传统的CVA相比,该方法不需要进行辐射校正。因此,表明CVAPS在土地利用/土地覆盖变化检测中可能有用。

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