交通运输系统工程与信息
交通運輸繫統工程與信息
교통운수계통공정여신식
Journal of Transportation Systems Engineering and Information Technology
2015年
5期
246-251
,共6页
李振龙%韩建龙%赵晓华%朱明浩%董文会
李振龍%韓建龍%趙曉華%硃明浩%董文會
리진룡%한건룡%조효화%주명호%동문회
智能交通%醉酒驾驶识别%K近邻%支持向量机%数据窗
智能交通%醉酒駕駛識彆%K近鄰%支持嚮量機%數據窗
지능교통%취주가사식별%K근린%지지향량궤%수거창
intelligent transportation%drunk driving recognizing%KNN%SVM%data window
醉酒驾驶严重威胁道路交通安全,对醉酒驾驶进行准确识别意义重大.利用驾驶模拟舱进行驾驶实验,提取醉酒驾驶和正常驾驶的驾驶行为参数.首先,通过方差分析和均值分析选取方向盘转角作为识别特征,并采用滑动数据窗求取方向盘转角均值序列,构建识别特征参数;然后,分别采用K近邻(KNN)和支持向量机(SVM)对驾驶状态进行识别,得到两种分类方法在不同道路线形的最高识别准确率及其相对应的最优数据窗;最后,对两种分类方法进行了对比分析.结果表明,SVM对醉酒驾驶的识别性能优于KNN;数据窗对KNN的识别准确率影响显著,对SVM的识别准确率影响不明显.
醉酒駕駛嚴重威脅道路交通安全,對醉酒駕駛進行準確識彆意義重大.利用駕駛模擬艙進行駕駛實驗,提取醉酒駕駛和正常駕駛的駕駛行為參數.首先,通過方差分析和均值分析選取方嚮盤轉角作為識彆特徵,併採用滑動數據窗求取方嚮盤轉角均值序列,構建識彆特徵參數;然後,分彆採用K近鄰(KNN)和支持嚮量機(SVM)對駕駛狀態進行識彆,得到兩種分類方法在不同道路線形的最高識彆準確率及其相對應的最優數據窗;最後,對兩種分類方法進行瞭對比分析.結果錶明,SVM對醉酒駕駛的識彆性能優于KNN;數據窗對KNN的識彆準確率影響顯著,對SVM的識彆準確率影響不明顯.
취주가사엄중위협도로교통안전,대취주가사진행준학식별의의중대.이용가사모의창진행가사실험,제취취주가사화정상가사적가사행위삼수.수선,통과방차분석화균치분석선취방향반전각작위식별특정,병채용활동수거창구취방향반전각균치서렬,구건식별특정삼수;연후,분별채용K근린(KNN)화지지향량궤(SVM)대가사상태진행식별,득도량충분류방법재불동도로선형적최고식별준학솔급기상대응적최우수거창;최후,대량충분류방법진행료대비분석.결과표명,SVM대취주가사적식별성능우우KNN;수거창대KNN적식별준학솔영향현저,대SVM적식별준학솔영향불명현.
Drunk driving is a serious threat to road traffic safety. It is of great significance to identify drunk driving accurately. The drunk driving experiment is conducted in a driving simulator. The driving behavior parameters under the drunk driving and normal driving are collected. The steering wheel angle is selected as the feature based on analysis of variance and analysis of mean. The average sequence of steering wheel angle is calculated using a sliding data window. KNN and SVM are used to identify the driver's state. The optimum data window and the highest recognition accuracy of the two algorithms under different road alignment are obtained. The two classification methods are analyzed. The results show that the recognition performance of the SVM is better than that of the KNN. Data window has a significant effect on the performances of KNN and has no significant effect on the performances of SVM.