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Contextual scene segmentation of driving behavior based on double articulation analyzer

机译:基于双清晰度分析器的驾驶行为上下文场景分割

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Various advanced driver assistance systems (ADASs) have recently been developed, such as Adaptive Cruise Control and Precrash Safety System. However, most ADASs can operate in only some driving situations because of the difficulty of recognizing contextual information. For closer cooperation between a driver and vehicle, the vehicle should recognize a wider range of situations, similar to that recognized by the driver, and assist the driver with appropriate timing. In this paper, we assumed a double articulation structure in driving behavior data and segmented driving behavior into meaningful chunks for driving scene recognition in a similar manner to natural language processing (NLP). A double articulation analyzer translated the driving behavior into meaningless manemes, which are the smallest units of the driving behavior just like phonemes in NLP, and from them it constructed navemes, which are meaningful chunks of driving behavior just like morphemes. As a result of this two-phase analysis, we found that driving chunks equivalent to language words were closer to the complicated or contextual driving scene segmentation produced by human recognition.
机译:最近已经开发了各种高级驾驶员辅助系统(ADAS),例如自适应巡航控制和碰撞前安全系统。但是,由于难以识别上下文信息,因此大多数ADAS只能在某些驾驶情况下运行。为了使驾驶员和车辆之间的合作更加紧密,车辆应识别出与驾驶员所识别的情况类似的更广泛的情况,并在适当的时机协助驾驶员。在本文中,我们假设驾驶行为数据具有双重发音结构,并将驾驶行为分割为有意义的块,以类似于自然语言处理(NLP)的方式进行驾驶场景识别。双重发音分析器将驾驶行为转换为无意义的语义,它们是驾驶行为的最小单位,就像NLP中的音素一样,并从中构造了音素,它们是驾驶行为的重要组成部分,就像语素一样。作为此两阶段分析的结果,我们发现相当于语言单词的驾驶块更接近于人类识别所产生的复杂或上下文驾驶场景分割。

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