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Adaptive Shadow and Highlight Invariant Colour Segmentation for Traffic Sign Recognition Based on Kohonen SOM

机译:基于Kohonen SOM的交通标志自适应阴影高亮不变颜色分割。

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This paper describes an intelligent algorithm for traffic sign recognition which converges quickly, is accurate in its segmentation and adaptive in its behaviour. The proposed approach can segment images of traffic signs in different lighting and environmental conditions and in different countries. It is based on using Kohonen's Self-Organizing Maps (SOM) as a clustering tool and it is developed for Intelligent Vehicle applications. The current approach does not need any prior training. Instead, a slight portion, which is about 1% of the image under investigation, is used for training. This is a key issue to ensure fast convergence and high adaptability. The current approach was tested by using 442 images which were collected under different environmental conditions and from different countries. The proposed approach shows promising results; good improvement of 73% is observed in faded traffic sign images compared with 53.3% using the traditional algorithm. The adaptability of the system is evident from the segmentation of the traffic sign images from various countries where the result is 96% for the nine countries included in the test.
机译:本文介绍了一种用于交通标志识别的智能算法,该算法收敛迅速,分段准确,行为自适应。所提出的方法可以分割在不同照明和环境条件下以及在不同国家中的交通标志的图像。它基于Kohonen的自组织地图(SOM)作为聚类工具,并且是为智能车辆应用开发的。当前的方法不需要任何事先培训。取而代之的是,将一小部分(约占所研究图像的1%)用于训练。这是确保快速收敛和高度适应性的关键问题。通过使用在不同环境条件下和不同国家收集的442张图像对当前方法进行了测试。所提出的方法显示出令人鼓舞的结果;与使用传统算法的53.3%相比,在褪色的交通标志图像中可观察到73%的良好改善。从各个国家/地区的交通标志图像的分割中可以明显看出该系统的适应性,该测试中包括的9个国家/地区的结果为96%。

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