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首页> 外文期刊>Remote Sensing >Designing a New Framework Using Type-2 FLS and Cooperative-Competitive Genetic Algorithms for Road Detection from IKONOS Satellite Imagery
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Designing a New Framework Using Type-2 FLS and Cooperative-Competitive Genetic Algorithms for Road Detection from IKONOS Satellite Imagery

机译:使用Type-2 FLS和合作竞争遗传算法设计新框架进行IKONOS卫星图像道路检测

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The growing availability of high-resolution satellite imagery provides an opportunity for identifying road objects. Most studies associated with road detection are scene-related and also based on the digital number of each pixel. Because images can provide more details (including color, size, shape, and texture), object-based processing is more advantageous. Therefore, in this paper, to handle the existing uncertainty of satellite image pixel values, using type-2 fuzzy set theory in combination with object-based image analysis is proposed. Because the main challenges of the type-2 fuzzy set are parameter tuning and extensive computations, a hybrid genetic algorithm (GA) consisting of Pittsburgh and cooperative-competitive learning schemes is proposed to address these problems. The most prominent feature of our research in this work is to establish a comprehensive object-based type-2 fuzzy logic system that enables us to detect roads in high-resolution satellite images with no training data. The validation assessment of road detection results using the proposed framework for independent images demonstrates the capability and efficiency of our method in identifying road objects. For more evaluation, a type-1 fuzzy logic system with the same structure as type-2 is tuned. Evaluations show that type-1 fuzzy logic system quality in training is very similar to that of the proposed type-2 fuzzy framework. However, in general, its lower accuracy, as inferred by validation assessments, makes the type-1 fuzzy logic system significantly different from the proposed type-2.
机译:高分辨率卫星图像的可用性不断增长,为识别道路物体提供了机会。与道路检测相关的大多数研究都与场景相关,并且也基于每个像素的数字。因为图像可以提供更多细节(包括颜色,大小,形状和纹理),所以基于对象的处理更为有利。因此,在本文中,为了解决卫星图像像素值存在的不确定性,提出了使用2型模糊集理论与基于对象的图像分析相结合的方法。由于类型2模糊集的主要挑战是参数调整和广泛的计算,提出了一种由匹兹堡和合作竞争学习方案组成的混合遗传算法(GA),以解决这些问题。我们这项工作研究的最突出特征是建立了一个全面的基于对象的2型模糊逻辑系统,该系统使我们能够在没有训练数据的情况下检测高分辨率卫星图像中的道路。使用所提出的独立图像框架对道路检测结果的有效性评估证明了我们的方法在识别道路物体方面的能力和效率。为了进行更多评估,调整了具有与Type-2相同结构的Type-1模糊逻辑系统。评估表明,训练中的1类模糊逻辑系统质量与拟议的2类模糊框架的质量非常相似。但是,总体而言,如验证评估所推断的那样,其较低的准确性使类型1的模糊逻辑系统与建议的类型2明显不同。

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