赢家通吃机制,用于从多源数据中自动提取对象

A. Mancini, E. Frontoni, P. Zingaretti
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引用次数: 10

摘要

从多源航空数据中自动提取目标是许多活动的理想特性,例如检测3D城市模型变化或更新道路数据库。本文采用了来自其他研究领域的赢家通吃(WTA)机制,将像素和区域分类的优点结合起来。我们将激光雷达数据和多光谱高分辨率图像融合在一起,生成一组特征,用于增强分类器检测建筑物、树木、裸地和草地。基于区域分类的主要优点是它消除了基于像素分类器对噪声的敏感性。WTA方法非常有用,特别是当基于像素的方法留下许多未分类的像素时;典型的情况是建筑物屋顶或薄树冠的边界,那里的激光雷达数据通常是嘈杂的。在城市环境中,使用高分辨率激光雷达和多光谱数据比较了像素、区域和WTA方法的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Winner Takes All mechanism for automatic object extraction from multi-source data
Automatic object extraction from multi-source aerial data is a desirable property for many activities, such as detecting 3D city model changes or updating road databases. This paper applies the Winner Takes All (WTA) mechanism, derived from other research fields, to combine the benefits of pixel and region classification. We fuse LiDAR data and multi-spectral high-resolution images to generate the set of features used by boosted classifiers to detect buildings, trees, bare land and grass. The main benefit of region based classification is that it removes the sensibility to noise of pixel based classifiers. The WTA approach is useful especially when pixel based approaches leave many pixels unclassified; typical cases are borders of building roofs or thin canopies, where LiDAR data are often noisy. Results in an urban environment using high-resolution LiDAR and multi-spectral data are presented comparing the performance of pixel, region and WTA approaches.
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