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Deep Convolutional Neural Network for Pedestrian Detection with Multi-Levels Features Fusion

机译:深度卷积神经网络用于多层次特征融合的行人检测

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Pedestrian detection aims to localize and recognize every pedestrian instance in an image with a bounding box. The current state-of-the-art method is Faster RCNN, which is such a network that uses a region proposal network (RPN) to generate high quality region proposals, while Fast RCNN is used to classifiers extract features into corresponding categories. The contribution of this paper is integrated low-level features and high-level features into a Faster RCNN-based pedestrian detection framework, which efficiently increase the capacity of the feature. Through our experiments, we comprehensively evaluate our framework, on the Caltech pedestrian detection benchmark and our methods achieve state-of-the-art accuracy and present a competitive result on Caltech dataset.
机译:行人检测旨在通过边界框定位和识别图像中的每个行人实例。当前最先进的方法是Faster RCNN,该网络使用区域建议网络(RPN)生成高质量的区域建议,而Fast RCNN用于分类器将要素提取到相应类别中。本文的贡献是将低层特征和高层特征集成到基于Faster RCNN的行人检测框架中,从而有效地增加了特征的容量。通过我们的实验,我们在Caltech行人检测基准上全面评估了我们的框架,我们的方法达到了最先进的准确性,并在Caltech数据集上展现了竞争性的结果。

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