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A new method for semi-automatic classification of remotely sensed images developed based on the cognitive approaches for producing spatial data required in geomatics applications

机译:一种基于认知方法的遥感图像半自动分类新方法,用于生成地理学应用所需的空间数据

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摘要

In many remote sensing image analysis processes, the human operator intervention is an indispensable component. One particular image analysis task where the human operator has a crucial role is in the selection of training data for supervised image classification methods in which essential training data selection is manually carried out by a human operator. This process is facilitated by the operator's former experiences, perceptual skills, and knowledge about the area of the study. Understanding the expert's cognitive processes, including reasoning, decision-making, and uses of knowledge to extract training data, can help improve task automation. This study regards training data extraction as a cognitive-behavioral task and attempts to extract semi-automatic training sites from an existing map based on the explanations of the expert performing the task. To support this cognitive approach, a combination of knowledge-based system, integration of remote sensing image analyses, GIS analyses, shape descriptor analyses, and artificial intelligence is used. Finally, to evaluate the reliability and accuracy of the extracted training data sites, they employed three supervised image classification algorithms, artificial neural network (ANN), support vector machine (SVM), and random forest (RF), and results were compared. Overall classification accuracy was obtained were high for three methods: ANN (90.43 %), SVM (86 %), and RF (84.09 %). Also, the kappa coefficients for each of methods are as follows: ANN (0.88), SVM (0.83), and RF (0.80). The results of this classification indicated that the extracted sample data from cognitive approach are reliable and help to semi-automation of supervised image classification process.
机译:在许多遥感图像分析过程中,人工干预是必不可少的组成部分。操作员具有关键作用的一种特殊的图像分析任务是在用于监督图像分类方法的训练数据的选择中,其中由操作员手动进行基本训练数据的选择。操作员以前的经验,感知技能和对研究领域的了解有助于此过程。了解专家的认知过程,包括推理,决策和使用知识来提取培训数据,可以帮助改善任务自动化。本研究将训练数据提取视为一项认知行为任务,并根据执行任务的专家的解释,尝试从现有地图中提取半自动训练站点。为了支持这种认知方法,结合使用了基于知识的系统,遥感图像分析,GIS分析,形状描述符分析和人工智能的集成。最后,为了评估提取的训练数据站点的可靠性和准确性,他们采用了三种监督图像分类算法:人工神经网络(ANN),支持向量机(SVM)和随机森林(RF),并对结果进行了比较。三种方法均获得了较高的总体分类精度:ANN(90.43%),SVM(86%)和RF(84.09%)。同样,每种方法的卡伯系数如下:ANN(0.88),SVM(0.83)和RF(0.80)。这种分类的结果表明,从认知方法中提取的样本数据是可靠的,并且有助于监督图像分类过程的半自动化。

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