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Performance Analysis of Object Detection Algorithm for Intelligent Traffic Surveillance System

机译:智能交通监控系统目标检测算法性能分析

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摘要

Object detection algorithm such as convolution neural networks (CNN) is implemented for traffic surveillance applications. A neural network consists of input minimum one hidden and an output layer. Urban vehicle dataset, which consists of four classes of images such as Heavy, Auto, Light, and Two-wheeler captured during day, evening and night, which includes blur images. The dataset is composed of images of varying illumination. Performance parameters such as accuracy, precession, recall and f1 score calculated for night and blur image dataset. Obtained results shows that the algorithm effectively detects objects with an accuracy of 91% for night images and 88 % for blur images.
机译:诸如卷积神经网络(CNN)的对象检测算法可用于交通监控应用。一个神经网络由至少一个隐藏的输入层和一个输出层组成。城市车辆数据集,由四类图像组成,例如在白天,晚上和晚上捕获的重,自动,轻和两轮车图像,其中包括模糊图像。该数据集由照明度不同的图像组成。为夜间和模糊图像数据集计算的性能参数,如准确性,进动,召回率和f1分数。所得结果表明,该算法可有效检测物体,夜间图像的准确度为91%,模糊图像的准确度为88%。

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