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首页> 外文期刊>ISPRS International Journal of Geo-Information >Development of an Object-Based Interpretive System Based on Weighted Scoring Method in a Multi-Scale Manner
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Development of an Object-Based Interpretive System Based on Weighted Scoring Method in a Multi-Scale Manner

机译:基于多尺度加权评分的基于对象的解释系统开发

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For an accurate interpretation of high-resolution images, correct training samples are required, whose automatic production is an important step. However, the proper way to use them and the reduction of their defects should also be taken into consideration. To this end, in this study, the application of different combinations of training data in a layered structure provided different scores for each observation. For each observation (segment) in a layer, the scores corresponded to the obtained misclassification cost for all classes. Next, these scores were properly weighted by considering the stability of different layers, the adjacency analysis of each segment in a multi-scale manner and the main properties of the basic classes. Afterwards, by integrating the scores of all classes weighted in all layers, the final scores were produced. Finally, the labels were achieved in the form of collective wisdom, obtained from the weighted scores of all segments. In the present study, the aim was to develop a hybrid intelligent system that can exploit both expert knowledge and machine learning algorithms to improve the accuracy and efficiency of the object-based classification. To evaluate the efficiency of the proposed method, the results of this research were assessed and compared with those of other methods in the semi-urban domain. The experimental results indicated the reliability and efficiency of the proposed method.
机译:为了准确解析高分辨率图像,需要正确的训练样本,自动生成样本是重要的一步。但是,还应考虑使用它们的正确方法以及减少它们的缺陷。为此,在本研究中,分层结构中训练数据的不同组合的应用为每个观察结果提供了不同的分数。对于层中的每个观察(段),得分对应于所有类别的获得的误分类成本。接下来,通过考虑不同层的稳定性,以多尺度方式对每个段的邻接分析以及基本类别的主要属性,对这些得分进行适当加权。然后,通过对所有层加权的所有类别的分数进行积分,得出最终分数。最终,以集体智慧的形式获得标签,这些标签是从所有细分市场的加权得分中获得的。在本研究中,目标是开发一种混合智能系统,该系统可以利用专家知识和机器学习算法来提高基于对象的分类的准确性和效率。为了评估该方法的有效性,对本研究的结果进行了评估,并将其与半城市领域中的其他方法进行了比较。实验结果表明了该方法的可靠性和有效性。

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