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A Precise Drunk Driving Detection Using Weighted Kernel Based on Electrocardiogram

机译:基于心电图的加权核精确醉酒驾驶检测

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摘要

Globally, 1.2 million people die and 50 million people are injured annually due to traffic accidents. These traffic accidents cost $500 billion dollars. Drunk drivers are found in 40% of the traffic crashes. Existing drunk driving detection (DDD) systems do not provide accurate detection and pre-warning concurrently. Electrocardiogram (ECG) is a proven biosignal that accurately and simultaneously reflects human’s biological status. In this letter, a classifier for DDD based on ECG is investigated in an attempt to reduce traffic accidents caused by drunk drivers. At this point, it appears that there is no known research or literature found on ECG classifier for DDD. To identify drunk syndromes, the ECG signals from drunk drivers are studied and analyzed. As such, a precise ECG-based DDD (ECG-DDD) using a weighted kernel is developed. From the measurements, 10 key features of ECG signals were identified. To incorporate the important features, the feature vectors are weighted in the customization of kernel functions. Four commonly adopted kernel functions are studied. Results reveal that weighted feature vectors improve the accuracy by 11% compared to the computation using the prime kernel. Evaluation shows that ECG-DDD improved the accuracy by 8% to 18% compared to prevailing methods.
机译:在全球范围内,每年有120万人死于交通事故,并且有5000万人受伤。这些交通事故造成的损失达5,000亿美元。在40%的交通事故中发现了酒后驾车的人。现有的酒后驾驶检测(DDD)系统无法同时提供准确的检测和预警。心电图(ECG)是一种经过验证的生物信号,可以准确并同时反映人类的生物学状况。在这封信中,对基于ECG的DDD分类器进行了研究,以减少因酒后驾驶引起的交通事故。在这一点上,似乎没有关于DDD的ECG分类器的已知研究或文献。为了识别醉酒综合征,研究和分析了来自醉酒司机的ECG信号。这样,开发了使用加权核的精确的基于ECG的DDD(ECG-DDD)。通过测量,确定了ECG信号的10个关键特征。为了合并重要的特征,在内核函数的定制中对特征向量进行加权。研究了四个常用的内核函数。结果表明,与使用素核的计算相比,加权特征向量将准确性提高了11%。评估表明,与传统方法相比,ECG-DDD的准确性提高了8%至18%。

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