基于嵌入式dsp平台的实时车牌识别

Clemens Arth, Florian Limberger, H. Bischof
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引用次数: 145

摘要

本文提出了一个功能齐全的车牌检测与识别系统。该系统在嵌入式DSP平台上实现,对视频流进行实时处理。它由检测模块和字符识别模块组成。该探测器基于Viola和Jones提出的AdaBoost方法。使用基于区域的方法将检测到的车牌分割成单个字符。字符分类采用支持向量分类。为了加快对嵌入式设备的检测速度,在系统中集成了卡尔曼跟踪器。探测器的搜索区域被限制在预测到下一个车牌位置的位置。并结合后续帧的分类结果,提高分类精度。我们系统的主要优点是它的实时性,除了视频流之外,它不需要任何额外的传感器输入(例如来自红外传感器)。我们在大量使用劣质视频的车辆和车牌上评估了我们的系统,并表明通过结合后续帧的分类结果可以部分补偿低分辨率。
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Real-Time License Plate Recognition on an Embedded DSP-Platform
In this paper we present a full-featured license plate detection and recognition system. The system is implemented on an embedded DSP platform and processes a video stream in real-time. It consists of a detection and a character recognition module. The detector is based on the AdaBoost approach presented by Viola and Jones. Detected license plates are segmented into individual characters by using a region-based approach. Character classification is performed with support vector classification. In order to speed up the detection process on the embedded device, a Kalman tracker is integrated into the system. The search area of the detector is limited to locations where the next location of a license plate is predicted. Furthermore, classification results of subsequent frames are combined to improve the class accuracy. The major advantages of our system are its real-time capability and that it does not require any additional sensor input (e.g. from infrared sensors) except a video stream. We evaluate our system on a large number of vehicles and license plates using bad quality video and show that the low resolution can be partly compensated by combining classification results of subsequent frames.
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