A Hierarchical Deep Architecture and Mini-batch Selection Method for Joint Traffic Sign and Light Detection

Alex D. Pon, Oles Andrienko, Ali Harakeh, Steven L. Waslander
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引用次数: 35

Abstract

Traffic light and sign detectors on autonomous cars are integral for road scene perception. The literature is abundant with deep learning networks that detect either lights or signs, not both, which makes them unsuitable for real-life deployment due to the limited graphics processing unit (GPU) memory and power available on embedded systems. The root cause of this issue is that no public dataset contains both traffic light and sign labels, which leads to difficulties in developing a joint detection framework. We present a deep hierarchical architecture in conjunction with a mini-batch proposal selection mechanism that allows a network to detect both traffic lights and signs from training on separate traffic light and sign datasets. Our method solves the overlapping issue where instances from one dataset are not labelled in the other dataset. We are the first to present a network that performs joint detection on traffic lights and signs. We measure our network on the Tsinghua-Tencent 100K benchmark for traffic sign detection and the Bosch Small Traffic Lights benchmark for traffic light detection and show it outperforms the existing Bosch Small Traffic light state-of-the-art method. We focus on autonomous car deployment and show our network is more suitable than others because of its low memory footprint and real-time image processing time. Qualitative results can be viewed at https://youtu.be/ YmogPzBXOw.
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交通标志与信号灯联合检测的层次深度结构与小批量选择方法
自动驾驶汽车上的交通灯和标志探测器是道路场景感知不可或缺的一部分。文献中有大量深度学习网络只能检测灯光或标志,而不能同时检测两者,这使得它们不适合实际部署,因为嵌入式系统上的图形处理单元(GPU)内存和功率有限。这个问题的根本原因是没有公共数据集包含交通灯和标志标签,这导致开发联合检测框架的困难。我们提出了一个深度层次结构,结合一个小批量建议选择机制,允许网络从单独的交通灯和标志数据集的训练中检测交通灯和标志。我们的方法解决了一个数据集的实例在另一个数据集中没有标记的重叠问题。我们是第一个提出对交通信号灯和标志进行联合检测的网络。我们在清华-腾讯100K交通标志检测基准和博世小交通灯交通信号灯检测基准上测试了我们的网络,结果表明它优于现有的博世小交通灯最先进的方法。我们专注于自动驾驶汽车的部署,并证明我们的网络比其他网络更适合,因为它的内存占用少,实时图像处理时间长。定性结果可在https://youtu.be/ YmogPzBXOw上查看。
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