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Contextual and Multi-Scale Feature Fusion Network for Traffic Sign Detection

机译:用于交通标志检测的上下文和多尺度特征融合网络

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The traffic sign detection, as an important part of the automatic driving system, requires high accuracy. In this paper, we proposed an end-to-end deep learning network, named the Contextual and Multi-Scale Feature Fusion Network, for traffic sign detection. The model consists of two sub-networks: the Weighted Multi-scale Feature Learning network (W-net) and the Contextual-Attention Learning network (C-net). The W-net extracts multi-scale features and calculates the weights of each feature map layer to detect traffic signs under different scales. The C-net learns the contextual attention mask of interference items and concatenates it with the multi-scale feature, which reduce the detection false efficiently. Compared with several state-of-the-art traffic sign detection methods, our proposed model outperforms others on extensive quantitative and qualitative experiments.
机译:作为自动驱动系统的重要部分,交通标志检测需要高精度。在本文中,我们提出了一个端到端的深度学习网络,命名为上下文和多尺度特征融合网络,用于交通标志检测。该模型由两个子网组成:加权多尺度特征学习网络(W-Net)和上下文学习网络(C-Net)。 W-Net提取多尺度特征,并计算每个特征映射层的权重,以检测不同尺度下的交通标志。 C-Net了解干扰项目的上下文注意掩码,并使用多尺度特征连接它,从而有效地减少了检测。与若干最先进的交通标志检测方法相比,我们提出的模型在广泛的定量和定性实验中表现出其他人。

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