基于图像处理和深度神经分类的交通利益相关者物理特征判定器

Turan Goktug Altundogan, M. Karakose
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引用次数: 2

摘要

如今,图像处理和深度学习已广泛应用于工业和非工业领域。除此之外,智慧城市是研究人员和研发人员非常受欢迎的趋势。在智慧城市应用中,研究人员和研发人员提出了城市交通、健康、安全和能源问题的解决方案。智慧城市在交通方面的应用主要集中在交通违规检测、交通拥堵、停车点建议、公共交通等方面。提出了一种基于图像处理和深度神经分类的交通利益相关者物理特征检测方案。上述交通利益相关者包括汽车、公共汽车、卡车、拖车、摩托车和行人。我们从交通视频中检测出适合这些交通利益相关者的轮廓,然后首先从视频中裁剪这些轮廓。然后使用深度图像分类器模型对检测到的轮廓进行分类。此外,我们根据轮廓尺寸计算车辆的尺寸特征,并根据HSV特征确定颜色。我们打算通过这项研究为智慧城市的工作人员和研究人员提供物理特征,以便在他们的应用程序中使用这些特征来控制违规行为,确定统计数据和其他类似的应用程序。出于这个原因,我们将在将来提供带有web服务应用程序的解决方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Image Processing and Deep Neural Image Classification Based Physical Feature Determiner for Traffic Stakeholders
Nowadays, image processing and deep learning is used in industrial and non-industrial areas. Addition to this, smart cities are very popular trend for the researchers and r&d workers. In the smart city applications, researchers and r&d workers present solutions about traffic, health, security and energy problems in the cities. The smart city applications for the traffic are focused on proposing solutions about detecting traffic violations, congestions, park spot suggestion, public transportations etc. We propose a solution for detecting traffic stakeholders physical features based on image processing and deep neural classification. The mentioned traffic stakeholders are automobiles, buses, trucks, trailers, motorcycles and pedestrians. We detect contours from the traffic videos which appropriate size for these traffic stakeholders then we crop these contours from the video first. Then we use the deep image classifier model for classification with detected contours. Addition to this we calculate vehicles dimensional features based on the contour size and determine colors based on HSV features. We intend with this study providing physical features to the smart city workers and researchers for using these features in their applications which controlling violations, determining statistics and the other applications like mentioned. For this reason, we provide this solution with a web service application in the future.
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