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首页> 外文期刊>International Journal of Performability Engineering >Pedestrian Detection based on Faster R-CNN
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Pedestrian Detection based on Faster R-CNN

机译:基于更快的R-CNN的行人检测

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Pedestrian detection has a wide range of applications, such as intelligent assisted driving, intelligent monitoring, pedestrian analysis, and intelligent robotics. Therefore, it has been the focus of research on target detection applications. In this paper, the Faster R-CNN target detection model is combined with the convolutional neural networks VGG16 and ResNet101 respectively, and the deep convolutional neural network is used to extract the image features. By adjusting the structure and parameters of Faster R-CNN's RPN, the multi-scale problem existing in the pedestrian detection process is solved to some extent. The experimental results compare the detection ability of the two schemes on the INRIA pedestrian dataset. The resulting model is migrated and validated on the Pascal Voc2007 dataset.
机译:行人检测具有广泛的应用,如智能辅助驾驶,智能监控,行人分析和智能机器人。 因此,它一直是对目标检测应用的研究的重点。 在本文中,较快的R-CNN目标检测模型分别与卷积神经网络VGG16和Resnet101组合,并且使用深卷积神经网络来提取图像特征。 通过调整更快的R-CNN RPN的结构和参数,在一定程度上解决了行人检测过程中存在的多尺度问题。 实验结果比较了INRIA行人数据集中的两种方案的检测能力。 在Pascal VOC2007数据集上迁移并验证生成的模型。

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