交通标志识别神经网络模型的分析与训练

A. U. Mentsiev, T. G. Aigumov, E. M. Abdulmukminova
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引用次数: 0

摘要

目标。本研究的目的是开发和训练一个基于卷积神经网络的神经网络模型,用于有效识别图像中的道路标志。方法。使用了深度学习方法,即卷积神经网络,它允许您自动提取图像特征并在大型数据集上进行训练。研究方法包括以下步骤:收集和准备各种道路标志数据,创建并训练基于卷积层的神经网络模型,应用数据增强方法提高模型性能,并在测试数据集上评估模型的有效性。结果。建立了一种基于输入图像的神经网络模型,该模型可以高精度地对不同类型的道路标志进行分类。该模型在多样化和高质量的数据上进行训练,使其能够概括和识别不同照明条件和相机角度下的道路标志。数据增强技术的使用显著提高了模型的性能,提高了模型的泛化能力。结论。该研究强调了使用多样化和高质量数据来训练模型以及应用数据增强技术来提高其性能的重要性。该研究证实了使用神经网络,特别是卷积神经网络在识别图像中的道路标志任务中的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Analysis and training of a traffic sign recognition neural network model
Objective . The purpose of the research is to develop and train a neural network model based on convolutional neural networks for effective recognition of road signs in images. Method . Deep learning methods were used, namely convolutional neural networks, which allow you to automatically extract image characteristics and train on a large data set. The research methodology included the following steps: collecting and preparing a variety of road sign data, creating and training a neural network model based on convolutional layers, applying data augmentation methods to improve model performance, and evaluating the model’s effectiveness on a test data set. Result . A neural network model is developed that can classify various types of road signs based on input images with high accuracy. The model was trained on diverse and high-quality data, allowing it to generalize and recognize road signs in different lighting conditions and camera angles. The use of data augmentation techniques significantly increased the model’s performance and improved its generalization ability. Conclusion . The study highlights the importance of using diverse and high-quality data to train a model and applying data augmentation techniques to improve its performance. The study confirms the effectiveness of using neural networks, especially convolutional neural networks, for the task of recognizing road signs in images.
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