基于TI OMAP-L138的交通标志自动识别系统的设计与实现

P. Phalguni, K. Ganapathi, V. Madumbu, R. Rajendran, S. David
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引用次数: 10

摘要

本文讨论了图像中交通标志检测与识别系统的设计与处理器实现。利用形态学算子、分割和轮廓检测从输入图像中分离出感兴趣区域(ROI),利用胡氏矩匹配、基于直方图的匹配、基于梯度直方图的匹配、基于欧氏距离的匹配和模板匹配五种方法识别感兴趣区域中的交通标志。采用了基于标志形状的分类系统。通过比较在德州仪器TMS320C6748处理器上运行算法所用的时钟周期数,评估了各种识别方法的性能。使用多种方法来识别交通标志,可以根据不同数据集的方法性能进行定制。实验表明,该系统鲁棒性好,适合实时应用,识别分类准确率高达90%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Design and implementation of an automatic traffic sign recognition system on TI OMAP-L138
This paper discusses the design and processor implementation of a system that detects and recognizes traffic signs present in an image. Morphological operators, segmentation and contour detection are used for isolating the Regions of Interest (ROIs) from the input image, while five methods - Hu moment matching, histogram based matching, Histogram of Gradients based matching, Euclidean distance based matching and template matching are used for recognizing the traffic sign in the ROI. A classification system based on the shape of the sign is adopted. The performance of the various recognition methods is evaluated by comparing the number of clock cycles used to run the algorithm on the Texas Instruments TMS320C6748 processor. The use of multiple methods for recognizing the traffic signs allows for customization based on the performance of the methods for different datasets. The experiments show that the developed system is robust and well-suited for real-time applications and achieved recognition and classification accuracies of upto 90%.
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