基于卷积神经网络的鹈鹕穿越自适应时间安排

Randy Putra Resha, R. F. Rachmadi, S. M. S. Nugroho, I. Purnama
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引用次数: 2

摘要

行人是城市的重要实体之一,政府已经提供了各种设施,使行人行走更加安全舒适,包括鹈鹕穿越系统。鹈鹕十字路口是为城市设计的,如果行人按下特定的按钮,它会停止交通(将交通灯改为红色)。鹈鹕过马路的主要问题是过马路的时间是固定的,没有根据行人的情况进行调整,例如行人的数量和行走速度。本文提出了一种基于卷积神经网络(CNN)分类器的鹈鹕穿越自适应时间安排系统。该系统使用两个不同的摄像头,第一个摄像头指向行人等候区,另一个摄像头指向鹈鹕人行横道。我们利用了最初用于目标检测问题的MobileNet-SSD (Single Shot Detector) CNN架构。第一步使用MS-COCO数据集训练MobileNet-SSD CNN分类器,并对VOC数据集的权值进行微调。我们删除了除人类之外的所有VOC类别,因为在拟议的系统中,该类将用于行人检测。然后根据检测到的行人和预定义的行人行走速度和启动时间计算行人过马路时间。为了测试所提出的系统,我们收集了一些代表真实系统环境的视频,并对这些数据进行了实验。实验表明,该系统在鹈鹕穿越的情况下是可行的,并给出了适当的配置建议。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Pelican Crossing Adaptive Time Arrangement using Convolutional Neural Network
Pedestrian is one of the important entities for the urban city and various facilities are already provided by the government to make pedestrian walking more safe and comfortable, including the pelican crossing system. Pelican crossing is designed for urban area and it will stop the traffic (by changing the traffic light to red) if pedestrians press a specific button. The main problem of pelican crossing is that the crossing time is fixed and it not adjusted based on the condition of the pedestrian, e.g. number and walks speed of the pedestrian. In this paper, we propose an adaptive time arrangement system on pelican crossing using convolutional neural network (CNN) classifier. The system is built using two different cameras, with the first camera pointing to the pedestrian waiting area and other camera pointing to the pelican crossing. We utilize MobileNet-SSD (Single Shot Detector) CNN architecture that originally used for object detection problem. The MobileNet-SSD CNN classifier was trained using MS-COCO dataset for the first step and fine-tuned the weights on VOC dataset. We remove all VOC categories except for person class because the class will be used for pedestrian detection in the proposed system. The pedestrian crossing time is then calculated based on the detected pedestrian and some predefined pedestrian walk speed and start-up time. To test the proposed system, we have collected several videos that represented the real system environment and conducted experiments on those data. Experiments show that the system is feasible to use in the pelican crossing situation with some appropriate configuration recommendation.
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