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Visualization of driving behavior using deep sparse autoencoder

机译:使用深度稀疏自动编码器可视化驾驶行为

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Driving behavioral data is too high-dimensional for people to review their driving behavior. It includes accelerator opening rate, steering angle, brake Master-Cylinder pressure and other various information. The high-dimensional data is not very intuitive for drivers to understand their driving behavior when they take a look back on their recorded driving behavior. We used a deep sparse autoencoder to extract the low-dimensional high-level representation from high-dimensional raw driving behavioral data obtained from a control area network. Based on this low-dimensional representation, we propose two visualization methods called Driving Cube and Driving Color Map. Driving Cube is a cubic representation displaying extracted three-dimensional features. Driving Color Map is a colored trajectory shown on a road map representing the extracted features. The trajectory is colored using the RGB color space, which corresponds to the extracted three-dimensional features. To evaluate the proposed method for extracting low-dimensional feature, we conducted an experiment and found several differences with recorded driving behavior by viewing the visualized Driving Color Map and that our visualization methods can help people to recognize different driving behavior. To evaluate the effectiveness of low-dimensional representation, we compared deep sparse autoencoder with other conventional methods from the viewpoint of linear separability of elemental driving behavior. As a result, our methods outperformed other conventional methods.
机译:驾驶行为数据的维度过高,人们无法查看他们的驾驶行为。它包括油门开度,转向角,制动总泵压力和其他各种信息。高维数据对于驾驶员在回顾其记录的驾驶行为时了解其驾驶行为不是很直观。我们使用了深度稀疏的自动编码器,从从控制区域网络获得的高维原始驾驶行为数据中提取了低维高级表示。基于此低维表示,我们提出了两种可视化方法,分别称为Driving Cube和Driving Color Map。驾驶立方是显示提取的三维特征的立方表示。驾驶颜色图是在路线图上显示的彩色轨迹,代表所提取的特征。使用与提取的三维特征相对应的RGB颜色空间对轨迹进行着色。为了评估提出的低维特征提取方法,我们进行了一项实验,通过查看可视化的“驾驶颜色图”,发现了与记录的驾驶行为的一些差异,并且我们的可视化方法可以帮助人们识别不同的驾驶行为。为了评估低维表示的有效性,我们从元素驱动行为的线性可分离性的角度比较了深度稀疏自动编码器和其他常规方法。结果,我们的方法优于其他常规方法。

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