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Explicit Forward Glance Duration Hidden Markov Model for Inference of Spillover Detection

机译:明确的前瞻性持续时间隐马尔可夫模型推断溢出溢出检测

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To better understand the effects of distracted driving on crash causation, forward roadway glance durations need to be carefully examined. Secondary tasks that impose high cognitive load lead to spillover effects that are moderated by the duration of the forward roadway glance within an alternation sequence involving both, in-vehicle and on-road glances. Spillover effects diminish the hazard anticipation ability of drivers. When alternating glances in a time series, the probability of detecting a spillover is invisible and the hidden state depends on the amount of time that has elapsed since the secondary task was initiated in the current state which is in contrast with the hidden Markov theory, where there is a constant probability of changing state given spillover detection in the state up to that time. No research estimates the probability of spillover detection in a time series with an explicit glance duration. In the current effort, we apply a semi-hidden Markov model where secondary task severity is used as an observation to infer hidden state and relax the assumption of constant state duration. Based on the reliable accuracy of the task itself, and the proposed model, different sequences of secondary task during various time window were tested for spillover detection. With a threshold of 50%, different forward roadway glance durations are required in each sequence associated with different types of secondary tasks.
机译:为了更好地了解分散驾驶驾驶对碰撞原因的影响,需要仔细检查向前巷道的潮流。施加高认知负荷的二次任务导致溢出效应,其在涉及车载和通道途径的交替顺序内的前向道路上的持续时间透明。溢出效应减少了司机的危险预期能力。当在时间序列中交替透气时,检测溢出溢出的概率是不可见的,隐藏状态取决于自从次要任务在当前状态中发起的时间以来,这与隐藏的马尔可夫理论相反,其中在迄今为止的状态下,在状态下溢出检测有恒定的概率。没有研究估计在时间序列中溢出检测的概率,明确瞥了一眼。在目前的努力中,我们应用了一个半隐球马尔可夫模型,其中二次任务严重程度用作推断隐藏状态的观察,并放松恒定状态持续时间的假设。基于任务本身的可靠精度,以及所提出的模型,测试各个时间窗口的不同次要序列进行溢出检测。对于50%的阈值,在与不同类型的二级任务相关联的每个序列中需要不同的向前道路延伸持续时间。

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