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Localized Traffic Sign Detection with Multi-scale Deconvolution Networks

机译:多尺度反卷积网络的局部交通标志检测

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Autonomous driving is becoming a future practical lifestyle greatly driven by deep learning. Specifically, an effective traffic sign detection by deep learning plays a critical role for it. However, different countries have different sets of traffic signs, making localized traffic sign recognition model training a tedious and daunting task. To address the issues of taking amount of time to compute complicate algorithm and low ratio of detecting blurred and sub-pixel images of localized traffic signs, we propose Multi-Scale Deconvolution Networks (MDN), which flexibly combines multi-scale convolutional neural network with deconvolution sub-network, leading to efficient and reliable localized traffic sign recognition model training. It is demonstrated that the proposed MDN is effective compared with classical algorithms on the benchmarks of the localized traffic sign, such as Chinese Traffic Sign Dataset (CTSD), and the German Traffic Sign Benchmarks (GTSRB).
机译:在深度学习的推动下,自动驾驶正成为一种未来的实用生活方式。具体而言,通过深度学习进行有效的交通标志检测在其中起着至关重要的作用。然而,不同的国家有不同的交通标志集,使得本地化的交通标志识别模型训练是一项繁琐而艰巨的任务。为了解决耗时的计算复杂算法和局部交通标志的模糊和亚像素图像检测率低的问题,我们提出了多尺度反卷积网络(MDN),该网络灵活地将多尺度卷积神经网络与去卷积子网络,从而导致高效,可靠的本地化交通标志识别模型训练。结果表明,与经典算法相比,在本地交通标志的基准上,例如中国交通标志数据集(CTSD)和德国交通标志基准(GTSRB),提出的MDN是有效的。

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