基于卷积神经网络的全景图像交通标志检测

Sathit Prasomphan, Thanthip Tathong, Primpisa Charoenprateepkit
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引用次数: 3

摘要

本研究提出了一种交通标志全景图像检测方法,主要针对交通管制标志和引导标志,特别是蓝绿标志。提出了一种大型全景图像中信号检测的新方法。采用卷积神经网络技术作为检测工具。此外,所需的步骤是与卷积神经网络技术结合使用的技术,通过使用Tensorflow训练来提高交通标志检测的准确性。此外,为了提高图像检测的精度,还加入了一些图像处理技术。例如,为图像添加亮度。从实验结果来看,利用训练好的卷积神经网络模型从全景图像(360°)中检测交通标志,提高了从全景图像(360°)中检测交通标志的准确性。
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Traffic Sign Detection for Panoramic Images Using Convolution Neural Network Technique
This research presents a method for panoramic traffic sign images detection for regulatory signs and guide signs especially blue and green sign. A new approach for detecting the signs inside a large panoramic image was considered. A convolution neural network technique was used as tools for detecting. In addition, the steps required are the technique used in conjunction with the convolution neural network technique by using Tensorflow training to improve the accuracy of traffic sign detection. Moreover, to improve the accuracy of image detection, some image processing technique was added. For example, adding brightness to an image. From the experimental results, detection of traffic signs from panoramic images (360°) by using trained convolution neural network model to improve a traffic sign detection, the accuracy from panoramic images (360°) is better than the traditional model.
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