Recognition of maximal speed limit traffic signs for use in advanced ADAS algorithms

Barbara Strišković, M. Vranješ, D. Vranješ, M. Popovic
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Abstract

Advanced Driver Assistance Systems (ADAS) have been increasingly developing, specifically in the last decade. One of such ADAS is that intended for traffic signs recognition. This paper deals with the recognition of a specific subset of traffic signs, i.e. speed limit traffic signs. The complete solution is based on the usage of machine learning and finally implemented in the C programming language. After the optimization process, the final solution is implemented on the real ADAS board, to check its performance in a real operational environment. Due to the limited resources of the ADAS board itself, a simple Convolutional Neural Network (CNN) was created to recognize speed limit traffic signs. For CNN training a large database of 6891 training images is used. When testing the solution, 731 test images from the real traffic are used, as well as 123 real video sequences. The test results show that in certain situations the proposed solution is capable of achieving high performance in terms of precision, while in some cases additional improvements of the solution should be investigated. It is capable of processing 12 frames per second when operating with state-of-the-art automotive camera resolution, i.e. 1280x720 pixels.
识别最高速度限制交通标志,用于先进的ADAS算法
先进驾驶辅助系统(ADAS)在过去十年中得到了越来越多的发展。其中一种ADAS用于交通标志识别。本文研究了交通标志的一个特定子集,即限速交通标志的识别问题。完整的解决方案是基于机器学习的使用,最后在C编程语言中实现。经过优化过程,最终的解决方案在真实的ADAS板上实现,在真实的操作环境中检验其性能。由于ADAS板本身的资源有限,因此创建了一个简单的卷积神经网络(CNN)来识别限速交通标志。对于CNN的训练,使用了一个包含6891张训练图像的大型数据库。在测试解决方案时,使用了来自真实流量的731个测试图像以及123个真实视频序列。测试结果表明,在某些情况下,所提出的解决方案能够在精度方面实现高性能,而在某些情况下,解决方案还需要进一步改进。当使用最先进的汽车相机分辨率(即1280x720像素)时,它能够每秒处理12帧。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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