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 COMMUNICATION AND TRANSPORTATION SYSTEMS ENGINEERING AND INFORMATION
2015年
1期
62-68
,共7页
任建强%陈阳舟%辛乐%石建军
任建彊%陳暘舟%辛樂%石建軍
임건강%진양주%신악%석건군
智能交通%交通流特性参数检测%时空轨迹跟踪%低位摄像机
智能交通%交通流特性參數檢測%時空軌跡跟蹤%低位攝像機
지능교통%교통류특성삼수검측%시공궤적근종%저위섭상궤
intelligent transportation%detection of traffic flow characteristic parameters%time-space trajectory tracking%low angle cameras
基于视频的交通流检测在智能交通系统中具有重要意义。本文针对广泛采用的低位摄像机,提出了一种交通流特性参数的检测分析方法。首先基于三级虚拟检测线和自适应更新率局部背景建模来快速提取车辆特征点并消除活动阴影对提取精度的影响;然后基于Adaboost(Adaptive Boosting,自适应增强)分类器实现特征点按车分组,并在跟踪过程中根据运动特征相关度消除分组误差,获取高精度的车辆轨迹;进而自动生成多车道轨迹时空图并提取各车道交通流的多种特性参数。实验结果验证了算法的高效性;同时,自动生成的多车道轨迹时空图也为更多的交通信息获取和更深入的交通流特性分析提供了有力支持。
基于視頻的交通流檢測在智能交通繫統中具有重要意義。本文針對廣汎採用的低位攝像機,提齣瞭一種交通流特性參數的檢測分析方法。首先基于三級虛擬檢測線和自適應更新率跼部揹景建模來快速提取車輛特徵點併消除活動陰影對提取精度的影響;然後基于Adaboost(Adaptive Boosting,自適應增彊)分類器實現特徵點按車分組,併在跟蹤過程中根據運動特徵相關度消除分組誤差,穫取高精度的車輛軌跡;進而自動生成多車道軌跡時空圖併提取各車道交通流的多種特性參數。實驗結果驗證瞭算法的高效性;同時,自動生成的多車道軌跡時空圖也為更多的交通信息穫取和更深入的交通流特性分析提供瞭有力支持。
기우시빈적교통류검측재지능교통계통중구유중요의의。본문침대엄범채용적저위섭상궤,제출료일충교통류특성삼수적검측분석방법。수선기우삼급허의검측선화자괄응경신솔국부배경건모래쾌속제취차량특정점병소제활동음영대제취정도적영향;연후기우Adaboost(Adaptive Boosting,자괄응증강)분류기실현특정점안차분조,병재근종과정중근거운동특정상관도소제분조오차,획취고정도적차량궤적;진이자동생성다차도궤적시공도병제취각차도교통류적다충특성삼수。실험결과험증료산법적고효성;동시,자동생성적다차도궤적시공도야위경다적교통신식획취화경심입적교통류특성분석제공료유력지지。
Video Based detection of traffic flow has great significance in intelligent transportation systems. For the low angle cameras, a novel traffic flow multi-parameters detection method is proposed in this paper. Three virtual detecting lines and a local background modeling with adaptive learning rate are used to quickly extract vehicle feature points and eliminate the influence of activity shadow. Based on a trained Adaboost (Adaptive Boosting) classifier, the feature points are grouped to vehicles. Then the grouping errors are eliminated based on the motion-similarity of feature points in tracking process and the vehicle trajectories are extracted accurately. After that, the multi-lanes time-space diagrams are generated and the multi-parameters of traffic flow are detected automatically. Experimental results prove the efficiency of the method. In addition, the multi-lanes time-space diagrams can provide strong support for more traffic information acquisition and more in-depth analysis of traffic flow characteristics.