首页> 外文会议>International archives of the photogrammetry, remote sensing and spatial information sciences conference >AUTOMATIC RECOGNITION OF TRAFFIC SIGNS IN NATURAL SCENE IMAGE BASED ON CENTRAL PROJECTION TRANSFORMATION
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AUTOMATIC RECOGNITION OF TRAFFIC SIGNS IN NATURAL SCENE IMAGE BASED ON CENTRAL PROJECTION TRANSFORMATION

机译:基于中央投影变换的自然场景图像自动识别交通标志

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Considering the problem of automatic traffic signs recognition in natural scene image (mainly including three kinds of traffic signs: yellow warning signs, red prohibition signs and blue mandatory signs), a new method for traffic signs recognition based on central projection transformation is proposed in this paper. In this method, self-adaptive image segmentation is firstly used to extract binary inner images of detected traffic signs after they are detected from natural scene images. Secondly, one-dimensional feature vectors of inner images are computed by central projection transformation. Lastly, these vectors are input to the trained probabilistic neural networks (PNN) for exact classification, the output of PNN is final recognition result. The new method is applied to 221 natural scene images taken by the vehicle-borne mobile photogrammetry system in Nanjing at different time. Experimental results show a recognition rate of over 98%. Especially, the problem of confirming optimal projection number in central projection transformation is solved by the information entropy in this paper. Moreover, the proposed recognition method is compared with other recognition methods based on three kinds of invariant moments. Results of contrastive experiments also show that the method proposed in this paper is effective and reliable.
机译:考虑到自然场景图像中的自动交通标志识别问题(主要包括三种交通标志:黄色警告标志,红色禁止标志和蓝色强制标志),提出了一种基于中央投影变换的交通标志识别方法纸。在该方法中,首先用于在从自然场景图像中检测到检测到的流量标志的二进制内部图像的自适应图像分割。其次,通过中央投影变换计算内部图像的一维特征向量。最后,这些向量被输入到训练有素的概率神经网络(PNN),用于精确分类,PNN的输出是最终识别结果。新方法应用于在不同时间南京车辆传播的移动摄影测量系统拍摄的221个自然场景图像。实验结果表明识别率超过98%。特别是,本文中的信息熵解决了中央投影变换中的最佳投影号的问题。此外,基于三种不变矩的其他识别方法进行了比较了所提出的识别方法。对比实验的结果也表明本文提出的方法是有效可靠的。

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