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Speed sign recognition in complex scenarios based on deep cascade networks

机译:基于深级级联网络的复杂场景中的速度签署识别

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摘要

Speed sign is one of the most important instant indications for drivers to adjust the speed of their cars. In the literature, almost all of the existing methods for speed sign recognition are based on static pictures with clean images. When dealing with the traffic signs in complex environments, these existing approaches often have inaccurate detected areas, which lead to the difficulty of recognition. The authors propose a deep cascade network to improve the recognition of the speed signs with a structure of cascade subnetworks. The proposed network is composed of a localisation subnetwork and a classification subnetwork. The difficult issue in complex scenarios is the detection of the speed sign due to its small resolution, occlusion, colour fading etc. The proposed localisation subnetwork can improve the localisation accuracy by borrowing the idea of locating the targets from coarse to fine. Ultimately, the classification sub-network extracts more effective features for speed sign recognition. The experimental results illustrate that the proposed method outperforms the YOLOv2 or YOLOv3 model in identifying the speed sign in complex scenarios with at least 6% higher in terms of area under curve, and this will promote the improvement of recognition significantly.
机译:速度标志是司机调整汽车速度最重要的即时指示之一。在文献中,几乎所有现有的速度标志识别方法都基于具有清洁图像的静态图片。在复杂环境中处理交通标志时,这些现有方法通常具有不准确的检测区域,这导致识别难度。作者提出了一个深度级联网络,以改善级联子网结构的速度标志的识别。所提出的网络由本地化子网和分类子网组成。复杂情景中的困难问题是由于其小分辨率,遮挡,颜色衰落等而检测速度符号。所提出的本地化子网可以通过借用从粗糙到精细定位目标的想法来提高本地化准确性。最终,分类子网络提取更有效的特征以进行速度标识识别。实验结果表明,所提出的方法优于衡量yolov2或yolov3模型在曲线下识别复杂情景的速度符号,这将促进显着识别的提高。

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