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Drowsiness Detection Based on the Analysis of Breathing Rate Obtained from Real-time Image Recognition

机译:基于实时图像识别获得的呼吸率分析的嗜睡检测

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Road accidents and victims provoked by drowsiness are a worldwide relevant social and economic problem. In EU, 25% of road accidents are related with fatigue. The relation between drowsiness and accidents is supported by scientific evidences that relate microsleep and other fatigue episodes with the loss of control of the vehicle. Nowadays there exist different technological approaches for drowsiness mitigating while driving, which try to reduce these accidents by detecting driver's physical condition and acting on the driver response. The techniques for mitigating accidents are based on algorithms of detection of physiological parameters that ensure drivers confidence and an appropriate use of the technology. The most frequently used non-invasive system are the cameras, which have been explored and used, mainly detecting eye movement and eyelid closure (PERCLOS). These systems have limitations due to artifacts and noise related to environmental and emotional conditions, which might lead to false positives. With the purpose of solving these shortcomings, the goal of the research is to develop a system capable of detecting the level of drowsiness based on the involuntary movements of the driver provoked by the respiration captured by means of cameras. In the current research, robustness in front of different types of users and circumstances has been explored. A system of reduced size automotive cameras of high dynamics is proposed to be used as breathing rate sensor. Images captured by these sensors will be processed to obtain the driver's chest/abdomen movement. These data will be analyzed in real time by a validated algorithm that interprets the movement and obtains the level of fatigue and drowsiness of the driver. A twofold “gold standard” is used to compare the robustness of the developed system. An experimental design has been developed in order to take into consideration different anthropometric characteristics, clothing types, user and vehicle movement and light conditions. The result will provide the boundary conditions of any system based on on-board cameras. These data will be used for building the algorithms to detect and interpret breathing patterns. The results show the capabilities of this approach and also permit to define the needs and requirements of the resulting technological developments.
机译:道路交通事故和嗜睡引起的受害者是与世界范围相关的社会和经济问题。在欧盟,有25%的道路交通事故与疲劳有关。睡意与事故之间的关系得到了科学证据的支持,这些证据将微睡眠和其他疲劳发作与车辆失控相关联。如今,存在缓解行车时嗜睡的不同技术方法,这些方法试图通过检测驾驶员的身体状况并根据驾驶员的反应来减少这些事故。缓解事故的技术基于生理参数检测算法,可确保驾驶员信心并适当使用该技术。最常用的非侵入式系统是摄像机,它们已经被研究和使用,主要用于检测眼球运动和眼睑闭合(PERCLOS)。这些系统由于与环境和情感条件有关的伪影和噪声而受到限制,这可能会导致误报。为了解决这些缺点,研究的目的是开发一种能够基于由照相机捕获的呼吸引起的驾驶员的不自主运动来检测睡意水平的系统。在当前的研究中,已经探索了面对不同类型的用户和情况的鲁棒性。提出了一种减小尺寸的高动态汽车摄像机系统,用作呼吸速率传感器。这些传感器捕获的图像将被处理以获得驾驶员的胸部/腹部运动。这些数据将通过经过验证的算法进行实时分析,该算法可解释运动并获得驾驶员的疲劳和困倦程度。双重“黄金标准”用于比较开发系统的鲁棒性。为了考虑不同的人体测量特征,衣服类型,用户和车辆的运动以及光线条件,已经开发了实验设计。结果将提供基于车载摄像机的任何系统的边界条件。这些数据将用于构建检测和解释呼吸模式的算法。结果显示了这种方法的功能,并且还可以定义最终技术发展的需求。

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