一种创新的CNN自适应FCW异常驱动检测策略

Raja Mariatul Qibtiah, Z. M. Zin, M. F. A. Hassan, Siti Salwa Md Noor
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引用次数: 0

摘要

作为一个道路安全问题,对驾驶员分心的研究还处于起步阶段。尽管人们谈论分心,好像他们知道它是什么意思,但它的定义很差。对于驾驶员暴露于各种存在的干扰源的模式,以及这些干扰源对驾驶员表现的影响(无论是单独的还是组合的),我们知之甚少。因此,社会上有许多阶层对预防和减轻分心驾驶的潜在影响有既得利益。为了帮助分析人员围绕这一领域发展所需的进展,本文对倾向于在驾驶环境中识别人类特征的工作进行了广泛的写作研究。关于这个话题已经发表了相当多的文献。这些研究有效地调查了2000年代以来的写作,并认可了该领域40多篇同行评议文章。对每种方法和程序的审查是量化和感知与驾驶行为有关的特征。在写作过程中,在检查不安全驾驶员的各种分类状态时,发现了与异常行为和激烈行为相关的鼓励状态的明显倾向。人体在疲劳或分心状态下的运动,并利用监督人工智能系统地推测潜在的人类情感。例如,视觉面部特征作为驾驶员辅助系统的信号。总的来说,这些文章强调了当前工作的有益影响,以及公开可用的资源,如数据集和工具,使新的学者能够开始在这个领域。此外,它还发现了新的研究潜力,以协助推进和改进驾驶系统。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Innovative Anomaly Driving Detection Strategy for Adaptive FCW of CNN Approach
As a road safety issue, research on driver distraction is still in its infancy. Although people talk about distraction as if they know what it means, it is poorly defined. Less is known about the patterns of driver exposure to the various sources of distraction that exist or the impact of these on driver performance, either individually or in combination. Thus, there are many sectors from the community with a vested interest in preventing and mitigating the potential effects of distracted driving. To assist analysts with developing the required advances around this field, this article gives an extensive writing study of work tending to the issue of human characteristics acknowledgment in a driving environment. A considerable amount of literature has been published on this topic. These studies efficiently survey the writing back to 2000s and recognized more than 40 peer review articles in this field. The review for each approach and procedure is to quantify and perceive characteristics with regards to driving behavior. Over the writing, discovery on solid inclination toward encouraging states related with abnormal behavior and drastic action while checking the various states of taxonomy for unsafe driver. Human body movement while in fatigue or distraction condition and utilizing supervised artificial intelligence to systematically surmise the underlying human affective. For instance, visual face features as a signal for driver assistance system. Overall, these articles highlighted the beneficial effects of the current work along with publicly available resources such as datasets and tools to enable new scholars to begin in this field. Besides, it also discerns new research potential to assist in the advancement and improvement of driving systems.
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