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Faster R-CNN for Robust Pedestrian Detection Using Semantic Segmentation Network

机译:使用语义分割网络的R-CNN更快的鲁棒行人检测

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摘要

Convolutional neural networks (CNN) have enabled significant improvements in pedestrian detection owing to the strong representation ability of the CNN features. However, it is generally difficult to reduce false positives on hard negative samples such as tree leaves, traffic lights, poles, etc. Some of these hard negatives can be removed by making use of high level semantic vision cues. In this paper, we propose a region-based CNN method which makes use of semantic cues for better pedestrian detection. Our method extends the Faster R-CNN detection framework by adding a branch of network for semantic image segmentation. The semantic network aims to compute complementary higher level semantic features to be integrated with the convolutional features. We make use of multi-resolution feature maps extracted from different network layers in order to ensure good detection accuracy for pedestrians at different scales. Boosted forest is used for training the integrated features in a cascaded manner for hard negatives mining. Experiments on the Caltech pedestrian dataset show improvements on detection accuracy with the semantic network. With the deep VGG16 model, our pedestrian detection method achieves robust detection performance on the Caltech dataset.
机译:卷积神经网络(CNN)由于具有强大的CNN特征表示能力,已大大改善了行人检测。但是,通常很难减少诸如树叶,交通信号灯,电线杆等硬性否定样本上的误报。可以通过使用高级语义视觉提示来去除其中的一些硬性否定。在本文中,我们提出了一种基于区域的CNN方法,该方法利用语义提示来更好地检测行人。我们的方法通过添加用于语义图像分割的网络分支来扩展Faster R-CNN检测框架。语义网络旨在计算要与卷积特征集成的互补高级语义特征。我们使用从不同网络层提取的多分辨率特征图,以确保对不同比例的行人具有良好的检测精度。人工林用于级联训练硬底片的综合功能。在Caltech行人数据集上进行的实验表明,使用语义网络可以提高检测精度。借助深VGG16模型,我们的行人检测方法可在Caltech数据集上实现强大的检测性能。

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