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Visual Explanation by Attention Branch Network for End-to-end Learning-based Self-driving

机译:注意分支网络的视觉解释,用于基于端到端学习的自动驾驶

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Self-driving decides an appropriate control considering the surrounding environment. To this end, self-driving control methods by using a convolutional neural network (CNN) have been studied, which directly input the vehicle-mounted camera image to a network and output a steering directory. However, if we need to control not only steering but also throttle, it is necessary to grasp the state of the car itself in addition to the surrounding environment. Moreover, in order to use CNNs for critical applications such as self-driving, it is important to analyze where the network focuses on the image and to understand the decision making. In this work, we propose a method to solve these problems. First, to control both steering and throttle simultaneously, we propose using the current vehicle speed as the state of the car itself. Second, we introduce an attention branch network (ABN) architecture to a self-driving model, which enables visually analyzing the reason of the self-driving decision making by using an attention map. Experimental results with a driving simulator demonstrate that our method controls a car stably, and we can analyze the decision making by using the attention map.
机译:自动驾驶根据周围环境决定合适的控制方式。为此,已经研究了使用卷积神经网络(CNN)的自动驾驶控制方法,该方法将车载摄像机图像直接输入网络并输出转向目录。但是,如果我们不仅需要控制转向,还需要控制油门,那么除了周围环境之外,还必须掌握汽车本身的状态。此外,为了将CNN用于诸如自动驾驶之类的关键应用,重要的是分析网络将重点放在图像上并了解决策的重要性。在这项工作中,我们提出了一种解决这些问题的方法。首先,为了同时控制转向和油门,我们建议使用当前车速作为汽车本身的状态。其次,我们将注意力分支网络(ABN)架构引入自动驾驶模型,该模型可以通过使用注意力图直观地分析做出自动驾驶决策的原因。驾驶模拟器的实验结果表明,我们的方法可以稳定地控制汽车,并且可以通过使用注意力图来分析决策。

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