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Deep Learning for Large-Scale Traffic-Sign Detection and Recognition

机译:深度学习大规模交通标志检测和识别

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Automatic detection and recognition of traffic signs plays a crucial role in management of the traffic-sign inventory. It provides an accurate and timely way to manage traffic-sign inventory with a minimal human effort. In the computer vision community, the recognition and detection of traffic signs are a well-researched problem. A vast majority of existing approaches perform well on traffic signs needed for advanced driver-assistance and autonomous systems. However, this represents a relatively small number of all traffic signs (around 50 categories out of several hundred) and performance on the remaining set of traffic signs, which are required to eliminate the manual labor in traffic-sign inventory management, remains an open question. In this paper, we address the issue of detecting and recognizing a large number of traffic-sign categories suitable for automating traffic-sign inventory management. We adopt a convolutional neural network (CNN) approach, the mask R-CNN, to address the full pipeline of detection and recognition with automatic end-to-end learning. We propose several improvements that are evaluated on the detection of traffic signs and result in an improved overall performance. This approach is applied to detection of 200 traffic-sign categories represented in our novel dataset. The results are reported on highly challenging traffic-sign categories that have not yet been considered in previous works. We provide comprehensive analysis of the deep learning method for the detection of traffic signs with a large intra-category appearance variation and show below 3% error rates with the proposed approach, which is sufficient for deployment in practical applications of the traffic-sign inventory management.
机译:交通标志的自动检测和识别在交通标志库存管理中起着至关重要的作用。它提供了一种准确的,及时的方式来管理交通符号库存,以最小的人类努力。在计算机视觉社区中,交通标志的识别和检测是一个良好研究的问题。绝大多数现有方法在高级驾驶员援助和自治系统所需的交通标志中表现出色。然而,这代表了相对较少的所有交通标志(大约50个类别超过数百类),并且在剩余的交通标志上的性能是消除交通符号库存管理中的手动劳动所必需的,仍然是一个开放的问题。在本文中,我们解决了检测和识别适用于自动化交通库存管理的大量交通标志类别的问题。我们采用卷积神经网络(CNN)方法,掩模R-CNN,以解决自动端到端学习的全部检测和识别流水线。我们提出了几种改进,这些改进是在检测到交通标志并导致整体性能提高。这种方法适用于在我们的新型数据集中代表的200个交通标志类别的检测。结果报告了在以前的作品中尚未考虑的高度挑战性的交通标志类别。我们提供了对具有大型外部外观变化的流量标志的深度学习方法的全面分析,并显示出低于3%的错误率,提出的方法是在交通符号库存管理的实际应用中进行部署。 。

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