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A General Active-Learning Framework for On-Road Vehicle Recognition and Tracking

机译:道路车辆识别和跟踪的通用主动学习框架

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This paper introduces a general active-learning framework for robust on-road vehicle recognition and tracking. This framework takes a novel active-learning approach to building vehicle-recognition and tracking systems. A passively trained recognition system is built using conventional supervised learning. Using the query and archiving interface for active learning (QUAIL), the passively trained vehicle-recognition system is evaluated on an independent real-world data set, and informative samples are queried and archived to perform selective sampling. A second round of learning is then performed to build an active-learning-based vehicle recognizer. Particle filter tracking is integrated to build a complete multiple-vehicle tracking system. The active-learning-based vehicle-recognition and tracking (ALVeRT) system has been thoroughly evaluated on static images and roadway video data captured in a variety of traffic, illumination, and weather conditions. Experimental results show that this framework yields a robust efficient on-board vehicle recognition and tracking system with high precision, high recall, and good localization.
机译:本文介绍了用于鲁棒道路车辆识别和跟踪的通用主动学习框架。该框架采用新颖的主动学习方法来构建车辆识别和跟踪系统。被动训练的识别系统是使用常规监督学习构建的。使用用于主动学习的查询和归档界面(QUAIL),对被动训练的车辆识别系统进行了评估,并基于独立的真实世界数据集进行了查询,并将信息量丰富的样本进行查询和存档,以进行选择性采样。然后执行第二轮学习以构建基于主动学习的车辆识别器。集成了粒子过滤器跟踪以构建完整的多车跟踪系统。基于主动学习的车辆识别和跟踪(ALVeRT)系统已针对在各种交通,照明和天气条件下捕获的静态图像和道路视频数据进行了全面评估。实验结果表明,该框架可提供强大,高效的车载识别和跟踪系统,并具有高精度,高召回率和良好的定位性。

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