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Pedestrian detection system for smart communities using deep Convolutional Neural Networks

机译:使用深卷积神经网络的智能社区的行人检测系统

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Pedestrian recognition is a key problem for a number of application domains namely autonomous driving, search and rescue, surveillance and robotics. Real-time pedestrian recognition entails determining if a pedestrian is in an image frame. State-of-art pedestrian detection convolution neural networks(CNN) such as Fast R-CNN depend on computationally expensive region detection algorithms to hypothesize pedestrian locations. This paper presents a simple, fast and very accurate approach by cascading fast regional detection and deep convolution networks. Convolution networks have been shown to excel at image classification. However, convolution networks are notoriously slow at inference time. In this work, we introduce a fast regional detection cascaded with deep convolution networks that enables real-time pedestrian detection that could be used to alert a driver if a pedestrian is on the roadway. The classification CNN has given an accuracy of 95.7%, with a processing rate of about 15 frames per second on a low performance system without a graphical processing unit (GPU).
机译:行人识别是许多应用领域的关键问题,即自动驾驶,搜索和救援,监控和机器人。实时步行识别需要确定步行是否在图像框架中。最先进的行人检测卷积神经网络(CNN),例如FAST R-CNN,取决于计算昂贵的区域检测算法,使行人位置解假设。本文通过级联快速区域检测和深度卷积网络提出了一种简单,快速而非常准确的方法。卷积网络已显示在图像分类中的Excel。然而,卷积网络在推理时间令人奇迹。在这项工作中,我们引入了一个快速的区域检测,具有深度卷积网络,可以使用实时的行人检测,如果行人在道路上,可以用于提醒驾驶员。分类CNN的精度为95.7 %,在没有图形处理单元(GPU)的低性能系统上,每秒约15帧的处理速率。

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