基于yolo的加强孟加拉国道路和交通公共安全

Anjir Ahmed Chowdhury, Sabrina Kashem Chowdhury, Hanif, Sadia Noor Nosheen, Md. Saniat Rahman Zishan
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引用次数: 1

摘要

为了提升人脸、动作、人物等多重跟踪的效率水平,引入了深度学习的方法,以减少道路上因粗心大意而发生的事故,并在孟加拉国抓获犯罪分子。本文提出了一种在YOLOv2算法框架下,在孟加拉国发生车祸、行人过桥、使用斑马线等情况下,处理速度更快、结果最好的多重检测方法。在YOLOv2算法中加入不同的层,在不同的卷积层中传递信息,检测多个有动作的对象。本文采用了DarkFlow框架下的YOLOv2算法,通过最大卷积层对特征图进行重组,使其他层的特征图与底层相匹配,达到指定事件的预期输出,从而获得更高的置信值比率。通过去除不相关区域的噪声,训练视频和测试视频的检测采用了相当平行的置信比。
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YOLO-Based Enhancement of Public Safety on Roads and Transportation in Bangladesh
In order to upgrade the efficiency level of multiple tracking like face, actions, characters, a deep learning method is introduced to reduce the accidents occurred in roads for carelessness and also to capture the criminals in Bangladesh. This paper presents a faster processing multiple detection method with the best possible outcome under the framework of YOLOv2 algorithm in the event of car accident, crossing foot over bridge and using the zebra crossing in Bangladesh. Different layers were added to the YOLOv2 algorithm to pass the information in various convolutional layers to detect multiple objects with actions. In this paper YOLOv2 algorithm under DarkFlow framework is used to achieve higher ratio of confidence value as the max convolutional layers reorganize the feature map so that other layers feature map can be matched with the bottom layers to achieve the expected output of the indicated events. By removing the noise from the unrelated area, the detections of the training video and test video adopt quite parallel confidence ratio.
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