Scene recognition in traffic surveillance system using Neural Network and probabilistic model

Duong Nguyen-Ngoc Tran, L. Pham, Ha Manh Tran, Synh Viet-Uyen Ha
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引用次数: 2

Abstract

In the traffic surveillance system (TSS), there are many factors affect the qualities of the result. Through practical application, it is difficult to determine which scene changing during the day period, from the daylight to nighttime, the conversion of the sunny and overcast, wet and dry scene. However, there have been no controlled studies which illustrate the method to distinguish environment scene, which is the one of six main challenges in TSS. Therefore, this paper presents the method to detect and recognize the change of scene during all-day surveillance; Thus, TSS adopt the recognition to determine the appropriate method for each scene, for increasing performance. Our recognition model is based on the combination of the CIE-Lab color space and the histogram of the region-of-interest (ROI) in each frame, which used for extracting the feature for the Feed Forward Neural Network to perform the detection. In the experiment section, our results show that the benefits of our proposed method in the real-world traffic surveillance system.
基于神经网络和概率模型的交通监控系统场景识别
在交通监控系统(TSS)中,影响监控结果质量的因素很多。通过实际应用,很难确定哪些场景在白天期间变化,从白天到夜间,阳光和阴天,潮湿和干燥场景的转换。然而,目前还没有对照研究来说明如何区分环境场景,这是TSS研究面临的六大挑战之一。为此,本文提出了全天监控中场景变化的检测与识别方法;因此,TSS采用识别来确定适合每个场景的方法,以提高性能。我们的识别模型是基于CIE-Lab颜色空间和每帧感兴趣区域(ROI)直方图的组合,用于提取特征,供前馈神经网络进行检测。在实验部分,我们的结果表明了我们所提出的方法在实际交通监控系统中的优势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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