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Left behind occupant recognition in parked cars based on acceleration and pressure information using k-Nearest-Neighbor classification

机译:使用k-最近邻分类基于加速度和压力信息在泊车中识别乘客

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One of the major causes of lethal or serious injuries to children in non-traffic accidents with cars is founded on the unattended left behind of them in parked cars. Therefore, Delphi's safety division is interested in the development of a low cost left behind occupant recognition, so that since 2008 different approaches for a reliable detection system are evaluated. One of them is based on high sensitive analogue accelerometers that monitor vibrations occurring at the car chassis. The investigations show a recognizable signal produced by human beings seated in a parked car which provides enough information to determine the occupancy state of a car. The presented contribution describes the additional use of a second sensor (pressure signal) input to improve the classification reliability by fusing the information of both sensing elements. This is illustrated at the k-Nearest-Neighbor algorithm as preferred classifier.
机译:在非交通事故中,汽车造成儿童致死或重伤的主要原因之一是无人驾驶的停在他们身旁的汽车。因此,德尔福(Delphi)的安全部门对开发一种低成本的乘员识别技术很感兴趣,因此自2008年以来,人们就评估了一种用于可靠检测系统的不同方法。其中之一是基于高灵敏模拟加速度计的,该加速度计可监测汽车底盘发生的振动。调查显示,坐在停着的汽车中的人产生的可识别信号可提供足够的信息来确定汽车的占用状态。提出的贡献描述了第二传感器(压力信号)输入的附加使用,以通过融合两个传感元件的信息来提高分类可靠性。作为首选分类器,在k最近邻算法中对此进行了说明。

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