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Identification of occupant posture using a Bayesian classification methodology to reduce the risk of injury in a collision

机译:使用贝叶斯分类方法识别乘员姿势,以减少碰撞中受伤的风险

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Recent studies have shown that smart restraint systems, which will recognize and then adapt to a specific collision and occupant combination, have a strong opportunity to significantly reduce occupant injuries during a traffic accident. As a step toward the development of these adaptive restraint systems, this study proposes a novel methodology for the classification of pre-crash occupant posture. Various occupant postures were simulated with a human model and the corresponding data was recorded using sensor models implemented in a mid-size car interior. The sensor data was then used to train two Bayesian classifiers which categorized an unknown occupant posture as one of nine predefined classes. The posture classifiers and a look-up table which contained optimized restraint laws for each class were combined to form catalog controllers for the restraint systems. The benefit of these restraint systems with catalog controllers vs. a restraint system optimized at a nominal posture was estimated by analyzing crash simulations with the occupant in 200 different postures. While the minimum error rate classifier showed the highest correct classification rate (90%), the Bayesian minimum risk classifier estimated the highest average injury reduction (21%). As expected, the highest injury reduction (up to 45%) was recorded for the posture classes closest to the windshield, whereas the lowest injury reduction was found for the classes closest to the nominal position. While the proposed restraint system with a catalog controller requires considerable "offline" computational effort, it is more versatile in terms of using complex human models and injury criteria and is much faster during the brief decision window available than recent "online" controllers proposed previously in literature.
机译:最近的研究表明,智能约束系统可以识别并适应特定的碰撞和乘员组合,在很大程度上可以减少交通事故中的乘员伤害。作为发展这些自适应约束系统的一步,本研究提出了一种用于碰撞前乘员姿势分类的新颖方法。用人体模型模拟各种乘员姿势,并使用在中型汽车内部实现的传感器模型记录相应的数据。然后,将传感器数据用于训练两个贝叶斯分类器,这些贝叶斯分类器将未知的乘员姿势分类为九个预定义类别之一。姿势分类器和一个包含每个类别的最佳约束定律的查找表被组合起来,形成约束系统的目录控制器。通过分析乘员在200个不同姿势下的碰撞模拟,可以估算出这些带有目录控制器的约束系统与以名义姿势优化的约束系统相比的优势。最小错误率分类器显示出最高的正确分类率(90%),而贝叶斯最小风险分类器则估计了最高的平均伤害减少率(21%)。不出所料,最接近挡风玻璃的姿势类别的伤害减少最高(达45%),而最接近名义位置的姿势类别的伤害减少最小。尽管所提出的带有目录控制器的约束系统需要大量的“离线”计算工作,但在使用复杂的人体模型和伤害准则方面,它具有更多的通用性,并且在简短的决策窗口内比以前的最新“在线”控制器要快得多。文献。

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