基于移动设备上轻量级CNN实现的智能车辆交通标志识别

R. Ayachi, Mouna Afif, Y. Said, A. B. Abdelali
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引用次数: 0

摘要

智能汽车的概念正在成为确保驾驶员舒适和安全的基本特征。智能车辆配备了基于先进技术的智能系统,可以执行上述目的的一系列任务。交通标志识别是保证交通安全的重要系统之一。然而,由于障碍众多,很难开发出最佳的交通标志识别系统。如天气条件,几何变形,最重要的是材料的限制。在这项工作中,我们提出了在移动设备上实现轻量级卷积神经网络(CNN)模型来克服上述挑战。本文提出的CNN结合了高性能和低计算复杂度。通过对公开数据集的评估,证明了该模型的有效性。此外,CNN模型在pynq平台上的实现证明了使用广泛的移动设备对所提出的模型进行推理的可能性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Traffic Sign recognition for smart vehicles based on lightweight CNN implementation on mobile devices
The concept of smart vehicles is becoming an essential feature that ensures driver comfort and security. Smart vehicles are equipped with intelligent systems based on advanced technologies that perform a set of tasks for the mentioned purposes. Recognizing Traffic sign is one the most important systems that guarantee a high-security level. However, it is difficult to develop the best traffic sign recognition system due to numerous obstacles. such as weather conditions, geometric deformation, and most important is the material limitation. In this work, we proposed the implementation of a lightweight convolutional neural network (CNN) model on a mobile device to overcome the mentioned challenges. The proposed CNN combines high performances and low computation complexity. Evaluating the proposed model on publicly available datasets proved its efficiency. Besides, the implementation of the CNN model on the pynq platform demonstrates the possibility of using a wide range of mobile devices for the inference of the proposed model.
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