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The roles of camera-based rear vision systems and object-detection systems: Inferences from crash data

机译:基于相机的后视系统和对象检测系统的角色:崩溃数据的推广

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Advances in electronic countermeasures for lane-change crashes, including both camera-based rear vision systems and object-detection systems, have provided more options for meeting driver needs than were previously available with rearview mirrors. To some extent, human factors principles can be used to determine what countermeasures would best meet driver needs. However, it is also important to examine sets of crash data as closely as possible for the information they may provide. We review previous analyses of crash data and attempt to reconcile the implications of these analyses with each other as well as with general human factors principles. We argue that the data seem to indicate that the contribution of blind zones to lane-change crashes is substantial. Consequently, as decisions are made about electronic countermeasures for lane-change crashes, the first goal should be to support drivers' own perceptual capabilities by eliminating blind zones, as could be done with camera-based displays. More elaborate systems that could bypass driver perception with artificial object-detection capabilities might also be useful, because they could address crashes attributable to driver weaknesses in areas beyond basic sensation, such as attention or decision making. However, design of such systems should take into account any remaining blind zone problems.
机译:车道更换崩溃的电子对策的进展,包括基于相机的后视系统和对象检测系统,提供了更多用于满足驱动程序需求的选项,而不是先前使用后视镜。在某种程度上,人为因素原则可用于确定最适合达到驾驶员需求的对策。但是,对于他们可以提供的信息,尽可能地仔细检查一组崩溃数据。我们审查了之前的崩溃数据分析,并试图互相调和这些分析的影响以及普通人的因素原则。我们认为数据似乎表明盲区对车道变化崩溃的贡献很大。因此,由于对车道更改崩溃的电子对策进行了决策,因此第一个目标应该是通过消除盲区来支持驱动程序自己的感知能力,可以通过基于相机的显示器来完成。可以绕过驱动器对人工对象检测能力的更精细的系统可能也有用,因为它们可以解决船舶,该崩溃应归因于超出基本感觉之外的领域的驾驶员弱点,例如注意或决策。但是,这些系统的设计应考虑到任何剩余的盲区问题。

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