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Boosting-Like Deep Convolutional Network for Pedestrian Detection

机译:用于行人检测的升高的深卷积网络

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This paper proposes a boosting-like deep learning (BDL) framework for pedestrian detection. The fusion of handcrafted and deep learned features is considered to extract more effective representations. Due to overtraining on the limited training samples, over-fitting and convergence stability are two major problems of deep learning. We propose the boosting-like algorithm to enhance the system convergence stability through adjusting the updating rate according to the classification condition of samples in the training process. We theoretically give the derivation of our algorithm. Our approach achieves 15.85% and 3.81% reduction in the average miss rate compared with ACF and JointDeep on the largest Caltech dataset, respectively.
机译:本文提出了一种用于行人检测的升高的深度学习(BDL)框架。被手绘和深度学习功能的融合被认为是提取更有效的表示。由于有限的训练样本过度训练,过度拟合和收敛稳定性是深度学习的两个主要问题。我们提出了升压算法,通过根据训练过程中的样本的分类条件调整更新速率来提高系统收敛稳定性。理论上我们提供了我们算法的推导。与ACF和CALTECH数据集的ACF和Jighdeep相比,我们的方法达到了平均错过率的15.85%和3.81%。

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