Vehicle Detection and Localization for Autonomous Traffic Monitoring Systems in Unstructured Crowded Scenes

S. Egodawela, H. Herath, S. M. A. B. Willamuna, M. Ekanayake, G. Godaliyadda, J. Wijayakulasooriya, V. Herath, I. M. S. Sathyaprasad
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引用次数: 1

Abstract

Image/video processing has been one of the major developments in the recent history with its applications in areas of Road safety, military, medical and agriculture fields. Due to its complexity a generic solution for multiple object detection in extremely crowded scenes remains to be found. Traditional methods of optical flow, connected component analysis and image segmentation have been extensively studied in image processing and video processing material. With recent developments of machine learning and numerical optimization techniques the use of deep neural networks are getting frequent in image processing applications. Among such deep learningbased methods commonly used in this context are RCNN variants, Mask RCNN and YOLOv3. An exhaustive comparison of the traditional methods and deep learning-based methods and also deep learning methods are discussed in this paper. This study will be of use in selection of a method for any extremely crowded scene object detection problem.
非结构化拥挤场景下自主交通监控系统的车辆检测与定位
图像/视频处理是近年来的主要发展之一,它在道路安全、军事、医疗和农业领域都有应用。由于其复杂性,在极其拥挤的场景中寻找一种通用的多目标检测方案仍有待研究。传统的光流、连通分量分析和图像分割方法在图像处理和视频处理材料中得到了广泛的研究。随着机器学习和数值优化技术的发展,深度神经网络在图像处理中的应用越来越频繁。在这种情况下通常使用的基于深度学习的方法包括RCNN变体、Mask RCNN和YOLOv3。本文对传统方法和基于深度学习的方法以及深度学习方法进行了详尽的比较。本文的研究将对任何极端拥挤的场景目标检测问题的方法选择具有指导意义。
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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