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引用次数: 2

摘要

实时检测拥挤场景中的行人是人群监控和管理中的一项具有挑战性的任务。世界各地的许多研究人员都解决了这个问题,并取得了令人满意的结果。然而,根据场景中人群的密度,人群中行人的自动检测问题仍然是一个悬而未决的问题。为了确保安全,实时自动化人群检测和跟踪过程是设计一个鲁棒性和安全性的系统所必需的。物体的检测和定位成功地帮助识别了行人检测的主要问题,并在自动管理人群方面迈出了重要的一步。在本文中,我们使用了微型的YOLOv4。YOLO(你只看一次)被证明在检测和定位图像中的物体方面非常有用,具有令人印象深刻的响应速度。YOLO网络通常将整个图像缩放为固定大小的网格,然后使用边界框识别和检测这些网格中的区域。在COCO数据集上对已训练好的YOLO初始模型进行迁移学习,处理监控视频中行人的检测。本文讨论了所提出的YOLOv4微小模型在UCSD行人检测数据集上的实现和检测性能,并取得了令人满意的结果。
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Real-Time Pedestrian Detection using YOLO
Detecting pedestrians in a crowded scene in real time is a challenging task in monitoring and managing crowd. Many researchers around the world have addressed this task and managed to achieve satisfactory results. However, the problem of automating detection of pedestrians in the crowd is still an open issue depending on the density of crowd in a scene. To ensure safety and security, automating the crowd detection and tracking process in real time is necessary in designing a robust and secure system. Detecting and localizing objects has successfully aided in identifying the major problems with detecting pedestrians and has been a major step forward in managing crowd automatically. In this paper, we have used tiny YOLOv4. YOLO (You Only Look Once) has proved quite useful in detecting and localizing objects in an image with impressive response speed. YOLO network usually scales an entire image into fixed sized grids and then identifies and detects the region into these grids using bounding boxes. Using transfer learning on an already trained YOLO inception model on COCO dataset, detection of pedestrians in surveillance videos is handled. The paper discusses the implementation and detection performance of the proposed YOLOv4 tiny model on the UCSD pedestrian Detection dataset with promising results.
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