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ENHANCEMENT OF THE DOUBLE FLEXIBLE PACE SEARCH THRESHOLD DETERMINATION FOR CHANGE VECTOR ANALYSIS

机译:可变矢量分析的双重柔性面搜索阈值确定的增强

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Remote sensing is one of the most reliable ways to monitor land use and land cover change of large areas. On the other hand, satellite images from different agencies are becoming accessible due to the new user dissemination policies. For that reason, interpretation of remotely sensed data in a spatiotemporal context is becoming a valuable research topic. In the present day, a map of change has a great significant for scientific purposes or planning and management applications. However, it is difficult to extract useful visual information from the large collection of available satellite images. For that reason, automatic or semi-automatic exploration is needed. One of the key stages in the change detection methods is threshold selection. This threshold determination problem has been addressed by several recent techniques based on Change Vector Analysis (CVA). Thus, this work provides a simple semi-automatic procedure that defines the changeo change condition and a comparative study will be involved together with the previous existing method called Double Flexible Pace Search (DFPS). This study uses Landsat Thematic Mapper scenes acquired on different dates in an Algerian region. First, some training data sets containing all possible classes of change are required and their respective supervised posterior probability maps for each scene are obtained. The selected supervised classifier is based on the Maximum Likelihood method. Then four training sets (two sets from each date) are chosen from their corresponding probability maps based on their spatial location in the original images. The optimal average will be obtained as an average of the thresholds obtained at every set. This work verifies that the proposed approach is effective on the selected area, providing improved change map results.
机译:遥感是监测大面积土地利用和土地覆盖变化的最可靠方法之一。另一方面,由于新的用户传播政策,来自不同机构的卫星图像变得可访问。因此,在时空环境下解释遥感数据正成为有价值的研究课题。如今,对于科学目的或规划和管理应用而言,变化的地图具有重大意义。但是,很难从大量可用的卫星图像中提取有用的视觉信息。因此,需要自动或半自动探索。变化检测方法中的关键阶段之一是阈值选择。此阈值确定问题已通过基于更改矢量分析(CVA)的几种最新技术解决。因此,这项工作提供了一个简单的半自动程序,该程序定义了更改/不更改条件,并且将与一项名为Double Flexible Pace Search(DFPS)的现有方法进行比较研究。本研究使用在阿尔及利亚地区不同日期获取的Landsat Thematic Mapper场景。首先,需要一些包含所有可能变化类别的训练数据集,并获得每个场景各自的监督后验概率图。所选的监督分类器基于最大似然法。然后根据它们在原始图像中的空间位置,从其对应的概率图中选择四个训练集(每个日期起两个集合)。将获得最佳平均值,作为在每个集合处获得的阈值的平均值。这项工作验证了所提出的方法在选定区域上是有效的,从而提供了改进的变更图结果。

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