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深度学习车型识别在联网收费系统中应用浅析 被引量:3
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作者 刘卫东 魏周朝 郭长全 《中国交通信息化》 2016年第S1期79-83,共5页
本文阐述了双视频流三维深度学习车型识别系统设计方案,介绍了系统的工作原理、前端设计、主要设备选型及设计参考,着重讲述了深度学习车型识别系统所实现的功能及特色应用,并结合技术发展趋势,展望标准化、多功能、稳定性高、实用性好... 本文阐述了双视频流三维深度学习车型识别系统设计方案,介绍了系统的工作原理、前端设计、主要设备选型及设计参考,着重讲述了深度学习车型识别系统所实现的功能及特色应用,并结合技术发展趋势,展望标准化、多功能、稳定性高、实用性好的深度学习车型识别技术在未来的联网收费、车辆联网、治安防控等领域的规模化应用所带来的经济价值和社会效益。 展开更多
关键词 车型识别 双视频流三维视觉测量 深度学习 车辆特征检测
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Vehicle Detection in Still Images by Using Boosted Local Feature Detector 被引量:1
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作者 Young-joon HAN Hern-soo HAHN 《Journal of Measurement Science and Instrumentation》 CAS 2010年第1期41-45,共5页
Vehicle detectition in still images is a comparatively difficult task. This paper presents a method for this task by using boosted local pattern detector constructed from two local features including Haar-like and ori... Vehicle detectition in still images is a comparatively difficult task. This paper presents a method for this task by using boosted local pattern detector constructed from two local features including Haar-like and oriented gradient features. The whole process is composed of three stages. In the first stage, local appearance features of vehicles and non-vehicle objects are extracted. Haar-tike and oriented gradient features are extracted separately in this stage as local features. In the second stage, Adabeost algorithm is used to select the most discriminative features as weak detectors from the two local feature sets, and a strong local pattern detector is built by the weighted combination of these selected weak detectors. Finally, vehicle detection can be performed in still images by using the boosted strong local feature detector. Experiment results show that the local pattern detector constructed in this way combines the advantages of Haar-like and oriented gradient features, and can achieve better detection results than the detector by using single Haar-like features. 展开更多
关键词 vehicle detection still image ADABOOST local features
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Automatic Vehicle License Recognition Based on Video Vehicular Detection System
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作者 杨兆选 陈杨 +1 位作者 何英华 吴骏 《Transactions of Tianjin University》 EI CAS 2006年第3期199-203,共5页
Traditional methods of license character extraction cannot meet the requirements of recognition accuracy and speed rendered by the video vehicular detection system. Therefore, a license plate localization method based... Traditional methods of license character extraction cannot meet the requirements of recognition accuracy and speed rendered by the video vehicular detection system. Therefore, a license plate localization method based on multi-scale edge detection and a character segmentation algorithm based on Markov random field model is presented. Results of experiments demonstrate that the method yields more accurate license character extraction in contrast to traditional localization method based on edge detection by difference operator and character segmentation based on threshold. The accuracy increases from 90% to 94% under preferable illumination, while under poor condition, it increases more than 5%. When the two improved algorithms are used, the accuracy and speed of automatic license recognition meet the system's requirement even under the noisy circumstance or uneven illumination. 展开更多
关键词 vehicle license recognition license plate localization character segmentation
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