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Dynamic Evidential Reasoning for Change Detection in Remote Sensing Images

机译:遥感图像中改变检测的动态证据推理

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Theories of evidence have already been applied more or less successfully in the fusion of remote sensing images. These attempts were based on the classical evidential reasoning which works under the condition that all sources of evidence and their fusion results are related to the same invariable (static) frame of discernment. When working with multitemporal remote sensing images, some change occurrences are possible between two images obtained at a different period of time, and these changes need to be detected efficiently in particular applications. The classical evidential reasoning is adapted for working with an invariable frame of discernment over time, but it cannot efficiently detect nor represent the occurrence of change from heterogeneous remote sensing images when the frame is possibly changing over time. To overcome this limitation, dynamic evidential reasoning (DER) is proposed for the sequential fusion of multitemporal images. A new state-transition frame is defined in DER, and the change occurrences can be precisely represented by introducing a statetransition operator. Two kinds of dynamical combination rules working in the free model and in the constrained model are proposed in this new framework for dealing with the different cases. Moreover, the prior probability of state transitions is taken into account, and the link between DER and Dezert-Smarandache theory is presented. The belief functions used in DER are defined similarly to those defined in the Dempster-Shafer theory. As shown in the last part of this paper, DER is able to estimate efficiently the correct change detections as a postprocessing technique. Two applications are given to illustrate the interest of DER: The first example is based on a set of two SPOT images acquired before and after a flood, and the second example uses three QuickBird images acquired during an earthquake event.
机译:证据的理论已经在遥感图像的融合中或多或少地应用于遥感图像的融合。这些尝试基于经典的证据推理,其在所有证据来源及其融合结果与相同的不变(静态)识别框架相关的条件下工作。当使用多级遥感图像时,在不同时间段获得的两个图像之间可以进行一些变化发生,并且需要有效地检测到特定应用中的这些变化。经典的证据推理适用于随着时间的推移使用不变的识别帧,但是当帧可能会随着时间的推移时,它无法有效地检测到来自异构遥感图像的变化的发生。为了克服这种限制,提出了动态证据推理(DER)用于多型图像的顺序融合。在DER中定义了一种新的状态转换帧,并且可以通过引入分类操作员来精确地表示更改出现。在这个新框架中提出了在自由型号和约束模型中工作的两种动态组合规则,用于处理不同案例。此外,呈现了状态转换的现有概率,并呈现了DER和DEZERT-SMARANDACHE理论之间的链路。在DER中使用的信念函数与Dempster-Shafer理论中定义的那些定义。如本文的最后一部分所示,DER能够有效地估计正确的改变检测作为后处理技术。给出了两个应用程序来说明DAR的兴趣:第一示例基于洪水之前和之后获取的一组两个点图像,第二示例使用在地震事件期间获取的三个QuickBird图像。

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