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首页> 外文期刊>Intelligent Transportation Systems, IEEE Transactions on >Road Recognition From Remote Sensing Imagery Using Incremental Learning
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Road Recognition From Remote Sensing Imagery Using Incremental Learning

机译:基于增量学习的遥感影像道路识别

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摘要

Roads, as important artificial objects, are the main body of modern traffic system, providing many conveniences for human civilization. With the development of Intelligent Transportation Systems (ITS), the road structure is changing frequently. Road recognition is to identify the road type from remote sensing imagery, and road types depend largely on the characteristics of roads. Thus, how to extract road features and further making road classification efficient have become a popular and challenging research topic. In this paper, we propose a road recognition method for remote sensing imagery using incremental learning. In principle, our method includes the following steps: 1) the non-road remote sensing imagery is first filtered by using support vector machine; 2) the road network is obtained from the road remote sensing imagery by computing multiple saliency features; 3) the road features are extracted from road network and background environment; and 4) the roads are recognized as three road types according to the classification results of incremental learning algorithm. The experimental results show that our method has higher road recognition rate as well as less recognition time than the other popular algorithms.
机译:道路作为重要的人工物体,是现代交通系统的主体,为人类文明提供了许多便利。随着智能交通系统(ITS)的发展,道路结构不断变化。道路识别是从遥感影像中识别道路类型,而道路类型很大程度上取决于道路的特征。因此,如何提取道路特征并进一步提高道路分类效率已成为一个热门且具有挑战性的研究课题。本文提出了一种基于增量学习的遥感图像道路识别方法。原则上,我们的方法包括以下步骤:1)首先使用支持向量机对非道路遥感图像进行滤波; 2)通过计算多个显着性特征从道路遥感影像中获得道路网络; 3)从道路网络和背景环境中提取道路特征; 4)根据增量学习算法的分类结果,将道路识别为三种道路类型。实验结果表明,与其他流行算法相比,该方法具有更高的道路识别率和更少的识别时间。

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