作者
Mohammed Razzok, Abdelmajid Badri, Ilham EL Mourabit, Yassine Ruichek, Aıcha Sahel
发表日期
2022
期刊
Int J Adv Appl Sci ISSN
卷号
2252
期号
8814
页码范围
195
简介
Pedestrian detection is a rapidly growing field of computer vision with applications in smart cars, surveillance, automotive safety, and advanced robotics. Most of the success of the last few years has been driven by the rapid growth of deep learning, more efficient tools capable of learning semantic, high-level, deeper features of images are proposed. In this article, we investigated the task of pedestrian detection on roads using models based on convolutional neural networks. We compared the performance of standard state-of-the-art object detectors like Faster region-based convolutional network (R-CNN), single shot detector (SSD), and you only look once, version 3 (YOLOv3). Results show that YOLOv3 is the best object detection model than others for pedestrians in terms of detection and time prediction.
引用总数
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M Razzok, A Badri, IEL Mourabit, Y Ruichek, A Sahel - Int J Adv Appl Sci ISSN, 2022