Safety Application Car Crash Detection Using Multiclass Support Vector Machine

Mike Schwarz, A. Buhmann
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引用次数: 1

Abstract

In this paper, the application of Support Vector Machine (SVM) on multiple car crash situations for improved decision of saftey applications, e.g. airbag control systems is presented. In general, we should argue from a different perspective: we don’t want to show the latest and greatest Machine Learing (ML) results. The intention of the paper is to show how state of the art products use ML for safety critical applications. It is the goal to avoid the deployment of an airbag. Today, saftey applications depend on various detection algorithms and sensor systems. The challenge for these kind of decision problems depend on crucial constraints named decision time and sensor signals which are complicated to distinguish. The system has to decide whether to fire or not to fire an airbag within a few milliseconds. We use a (Multiclass) Support Vector Machine to account for an improved classification with the given constraints. Various multiclass classification methods are rated and the two methods One-Versus-Rest and One-Versus-One are benchmarked in terms of quantities as test error, training time, memory consumption and misclassified crashes. All methods are applied to real measurement data of car crashes for the type of full frontal crashes in various conditions. We will show that One-Versus-One performs best. The method is able to classify car crash situations and improve the detection possibility. This allows for active and passive occupant safety components in the automotive area.
安全应用:基于多类支持向量机的碰撞检测
本文介绍了支持向量机(SVM)在多种汽车碰撞情况下的应用,以改进安全应用(如安全气囊控制系统)的决策。一般来说,我们应该从不同的角度进行争论:我们不想展示最新和最好的机器学习(ML)结果。本文的目的是展示最先进的产品如何将ML用于安全关键应用。我们的目标是避免打开安全气囊。如今,安全应用依赖于各种检测算法和传感器系统。这类决策问题的挑战在于决策时间和传感器信号的关键约束,这些约束很难区分。系统必须在几毫秒内决定是否启动安全气囊。我们使用(多类)支持向量机来解释给定约束下改进的分类。对各种多类分类方法进行了评级,并对One-Versus-Rest和One-Versus-One两种方法进行了测试错误、训练时间、内存消耗和误分类崩溃等数量的基准测试。将所有方法应用于不同工况下全正面碰撞类型的实际碰撞测量数据。我们将展示“一对一”的最佳表现。该方法能够对碰撞情况进行分类,提高检测的可能性。这允许在汽车区域的主动和被动乘员安全组件。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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