一种用于理解由移动摄像机捕获的视频场景中的道路交通标志的自动方法

T. Uchida, H. Hanaizumi
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引用次数: 3

摘要

我们已经提出了一种在视频场景中检测道路交通标志的方法。为了实现对目标位置与相机方向不一致引起的形状变形的灵活检测,引入了多模板技术。在这里,我们提出了一种自动理解视频场景中的道路交通标志的方法。该方法位于理解前一种方法检测到的符号的第二个过程。符号理解过程简化为评估具有可能变形和检测到的符号模板之间的空间和光谱相似性。为了有效地进行评估,引入了二叉决策树分类器。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An automated method for understanding road traffic signs in a video scene captured by a mobile camera
We have already proposed a method for detecting road traffic signs in a video scene. In order to realize flexible detection in shape deformation due to discrepancy between target position and camera direction, multiple template techniques were introduced. Here, we proposed an automated method for understanding road traffic signs in a video scene. The method was located at the 2nd process for understanding the signs detected by the previous method. The sign understanding process was reduced to evaluation of both spatial and spectral similarities among the sign templates with possible deformations and signs detected. A binary decision tree classifier was introduced for efficient performing the evaluations.
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