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Boosted Convolutional Neural Networks (BCNN) for Pedestrian Detection

机译:用于行人检测的增强卷积神经网络(BCNN)

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A boosted convolutional neural network (BCNN) system is proposed to enhance the pedestrian detection performance in this work. Being inspired by the classic boosting idea, we develop a weighted loss function that emphasizes challenging samples in training a convolutional neural network (CNN). Two types of samples are considered challenging: 1) samples with detection scores falling in the decision boundary, and 2) temporally associated samples with inconsistent scores. A weighting scheme is designed for each of them. Finally, we train a boosted fusion layer to benefit from the integration of these two weighting schemes. We use the Fast-RCNN as the baseline, and test the corresponding BCNN on the Caltech pedestrian dataset in the experiment, and show a significant performance gain of the BCNN over its baseline.
机译:提出了一种增强的卷积神经网络(BCNN)系统来提高行人检测性能。受到经典提振思想的启发,我们开发了加权损失函数,该函数在训练卷积神经网络(CNN)时强调了具有挑战性的样本。两种类型的样本被认为具有挑战性:1)检测分数落在决策边界内的样本,以及2)分数不一致的时间相关样本。为它们中的每一个设计一个加权方案。最后,我们训练了增强的融合层,以从这两个加权方案的集成中受益。我们使用Fast-RCNN作为基线,并在实验中在Caltech行人数据集上测试相应的BCNN,并显示BCNN在其基线之上的显着性能提升。

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