一种用于驾驶警告等级分类的标记数据新方法

Ana Farhat, K. Cheok
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引用次数: 0

摘要

本文考虑了一种新的碰撞预警级别预测方法,该方法使用分类器来解释自我车辆与前方物体之间当前和过去的相对位置窗口。前提是ego车辆配备了激光雷达、雷达或摄像头来测量相对距离。提出了一种机器学习方法,其中特征是碰撞时间(TTC),可以通过卡尔曼滤波估计距离,速度和加速度来确定。分类器生成警告标签类,将警报级别与观察级别结合起来。第一部分分类器称为预测分类器1,通过评估当前实例的TTC值产生警报级别;然而,分类器的第二部分称为预测分类器2,通过应用一种新的数学算法来产生手表标签,该算法解释给定窗口中过去的TTC值。警报和监视标签通过警告标签生成器合并在一起,以生成数据集的最终标签。本文介绍了利用神经网络的机器学习方法的公式和仿真结果。该结果的未来扩展将解决深度学习方法,其中卡尔曼滤波和TTC特征将被消除。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Novel Approach in Labeling Data for Classification of Warning Level While Driving
A novel approach for predicting collision warning levels using a classifier that interprets a window of present and past relative positions between the ego vehicle and front object is considered. The premise assumes that the ego vehicle is equipped with a LiDAR, radar or camera that measures the relative distance. A machine learning approach is presented where the feature is the time-to-collision (TTC) which can be determined from Kalman filter estimate of distance, speed and acceleration. The classifier produces classes of warning labels that combines alert levels with watch levels. First part of the classifier called predictor classifier 1, produces the alert levels by evaluating the TTC value of current instance; however, the second part of the classifier called predictor classifier 2, produces the watch labels by applying a novel mathematical algorithm that interprets past values of TTC in a given window. Alert and watch labels are merged together by warning labels generator to produce the final labels for the dataset. This paper presents the formulation and simulation results for the machine learning approach that utilizes neural networks. A future extension of the result will address a deep learning approach where the Kalman filtering & TTC features will be eliminated.
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