Pedestrian Detection for Vehicle-borne Image Based on Two-level YOLOv3

Lu Han
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引用次数: 1

Abstract

In this paper, I mainly focus on real-time pedestrian detection, which is a critical part of robot vision and autonomous driving cars. In recent, convolutional neural networks and deep learning have received so many reputations due to their enormous ability and wide use. For example, image classification, understanding climate, analyzing documents, advertising, etc. Object detection is different from image classification, which is a relatively new area where are waiting for more researchers to dedicate themselves. In the first part, I introduce the appliance of real-time object detection, and in the second part, I introduce some related works of real-time object detection, In the third part, where my work is, I indicate the method to increase the performance of pedestrian detection. I delete the y1 layer of the output of YOLOv3 and magnify the upsampling rate. At the last, I regulate the anchors to achieve more accuracy and better performance. Finally, I explain my experiments and give my research conclusion.
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在本文中,我主要关注实时行人检测,这是机器人视觉和自动驾驶汽车的关键部分。最近,卷积神经网络和深度学习因其巨大的能力和广泛的应用而获得了许多声誉。例如,图像分类,了解气候,分析文件,广告等。目标检测不同于图像分类,这是一个相对较新的领域,有待更多的研究者投入。第一部分介绍了实时目标检测的应用,第二部分介绍了实时目标检测的相关工作,第三部分是我的工作所在,指出了提高行人检测性能的方法。我删除YOLOv3输出的y1层,放大上采样率。最后,我对锚进行了调整,使其更准确,性能更好。最后对我的实验进行了说明,并给出了我的研究结论。
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