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Using Bidirectional Long Short Term Memory with Attention Layer to Estimate Driver Behavior

机译:使用带有注意层的双向长期短期记忆来估计驾驶员行为

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Driver distraction is one of the primary causes of fatal car accidents in U.S. Analyzing driver behavior using different types of data including driving data, driver status or a combination of them is an emerging machine learning solution to detect the distraction level and notify the driver. Deep learning methods such as recurrent neural networks outperform other machine learning methods in car safety applications. In this paper, we used time-sequenced driving data that we collected in eight driving contexts to measure the driver distraction level. Our RNN is also capable of detecting the type of behavior that caused distraction. We used the driver interaction with the car infotainment system as the distracting activity. Two types of LSTM networks were used including bidirectional LSTM network and attention network. We compare the performance of these two complex networks to that of the simple LSTM in estimating driver behavior. We show that our attention network outperforms the other two, while adding bidirectional LSTM networks enhanced the training process of simple LSTM network.
机译:驾驶员分心是美国致命车祸的主要原因之一。使用不同类型的数据(包括驾驶数据,驾驶员状态或其组合)分析驾驶员行为是一种新兴的机器学习解决方案,可检测驾驶员的分心程度并通知驾驶员。在汽车安全应用中,诸如递归神经网络之类的深度学习方法优于其他机器学习方法。在本文中,我们使用了在八个驾驶环境中收集的按时间顺序排列的驾驶数据,以测量驾驶员的注意力分散程度。我们的RNN还能够检测导致分心的行为类型。我们将驾驶员与汽车信息娱乐系统的交互作为分散注意力的活动。使用了两种类型的LSTM网络,包括双向LSTM网络和关注网络。在估计驱动程序行为时,我们将这两个复杂网络的性能与简单LSTM的性能进行了比较。我们证明了我们的注意力网络优于其他两个,同时添加双向LSTM网络增强了简单LSTM网络的训练过程。

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