基于图像分割的基于对象的上下文图像分类

Thomas Blaschke
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引用次数: 120

摘要

遥感传感器空间分辨率的不断提高对利用这些信息的应用提出了新的需求。从高分辨率RS图像中更有效地提取信息并将这些信息无缝集成到地理信息系统(GIS)数据库的需求正在推动地理信息理论和方法进入新的领域。随着地面瞬时视场(GIFOV)的尺寸或像素尺寸的减小,至少在视觉上可以很容易地描绘出许多精细的景观特征。我们面临的挑战是如何产生经过验证的人机方法,使人类的口译技能具体化并得到提高。一些最有希望的结果来自于图像分割算法的采用和所谓的基于对象的分类方法的发展。本文建立在对图像分割技术的不同方法的讨论之上,并通过几个应用演示了分割和基于对象的方法如何改进基于像素的图像分析/分类方法。与基于像素的方法相比,图像对象可以携带比光谱信息更多的属性。在本文中,我讨论了基于对象的图像处理的概念,并提出了一种将基于对象的处理概念集成到图像分类过程中的方法。基于对象的处理不仅考虑上下文信息,而且考虑图像区域之间的形状和空间关系信息。
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Object-based contextual image classification built on image segmentation
The continuously improving spatial resolution of remote sensing sensors sets new demand for applications utilizing this information. The need for the more efficient extraction of information from high resolution RS imagery and the seamless integration of this information into Geographic Information System (GIS) databases is driving geo-information theory, and methodology, into new territory. As the dimension of the ground instantaneous field of view (GIFOV), or pixel size, decreases many more fine landscape features can be readily delineated, at least visually. The challenge has been to produce proven man-machine methods that externalize and improve on human interpretation skills. Some of the most promising results come from the adoption of image segmentation algorithms and the development of so-called object-based classification methodologies. This paper builds on a discussion of different approaches to image segmentation techniques and demonstrates through several applications how segmentation and object-based methods improve on pixel-based image analysis/classification methods. In contrast to pixel-based procedure, image objects can carry many more attributes than only spectral information. In this paper, I address the concepts of object-based image processing, and present an approach that integrates the concept of object-based processing into the image classification process. Object-based processing not only considers contextual information but also information about the shape of and the spatial relations between the image regions.
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