An Improved Approach to Automatic Recognition of Civil Infrastructure Objects

Fengliang Xu, X. Niu, Rongxing Li
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引用次数: 2

Abstract

Abstract Civil infrastructure objects are important elements in GIS applications. Due to the wide variety of object types, automatic recognition of infrastructure objects from imagery has been a challenging issue for the last two decades. Different approaches have been developed for recognition of buildings, one kind of infrastructure object most frequently dealt with in GIS. by defining and employing individual criteria. A Hopfield neural network can effectively combine different criteria in an overall network structure for a global optimization in finding object. In this paper we develop a holistic feature extraction approach including edge extraction, noise edge elimination by Gabor filters, contour extraction based on morphological operations, polygon simplification by local Hough transform, and building roof candidate selection using central contour sequence moment. In addition, shadows associated with buildings are extracted. This improved feature extraction approach greatly enhances the quality of recognition of objects, such as peaked-roofed and flat-roofed buildings, by a Hopfield neural network that accommodates similarity measures using the extracted features in a structured way. The achieved results demonstrate a promising approach for building recognition and can be extended to other infrastructure objects.
一种改进的民用基础设施目标自动识别方法
摘要民用基础设施对象是GIS应用中的重要元素。由于对象类型的多样性,从图像中自动识别基础设施对象一直是一个具有挑战性的问题,在过去的二十年。建筑物是地理信息系统中最常处理的基础设施对象,对于建筑物的识别已经发展了不同的方法。通过定义和采用个人标准。Hopfield神经网络可以有效地将不同的准则组合在一个整体的网络结构中,实现目标的全局寻优。在本文中,我们开发了一种整体特征提取方法,包括边缘提取、Gabor滤波器的噪声边缘消除、基于形态学操作的轮廓提取、局部霍夫变换的多边形简化以及基于中心轮廓序列矩的建筑物屋顶候选选择。此外,提取与建筑物相关的阴影。这种改进的特征提取方法通过Hopfield神经网络以结构化的方式容纳相似性度量,极大地提高了对物体(如尖顶和平顶建筑)的识别质量。所取得的结果证明了一种很有前途的构建识别方法,并且可以扩展到其他基础设施对象。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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