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首页> 外文期刊>International Journal of Advanced Robotic Systems >Real-time vehicle detection and tracking using improved histogram of gradient features and Kalman filters
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Real-time vehicle detection and tracking using improved histogram of gradient features and Kalman filters

机译:使用改进的梯度特征直方图和卡尔曼滤波器对车辆进行实时检测和跟踪

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Intelligent transportation systems and safety driver-assistance systems are important research topics in the field of transportation and traffic management. This study investigates the key problems in front vehicle detection and tracking based on computer vision. A video of a driven vehicle on an urban structured road is used to predict the subsequent motion of the front vehicle. This study provides the following contributions. (1) A new adaptive threshold segmentation algorithm is presented in the image preprocessing phase. This algorithm is resistant to interference from complex environments. (2) Symmetric computation based on a traditional histogram of gradient (HOG) feature vector is added in the vehicle detection phase. Symmetric HOG feature with AdaBoost classification improves the detection rate of the target vehicle. (3) A motion model based on adaptive Kalman filter is established. Experiments show that the prediction of Kalman filter model provides a reliable region for eliminating the interference of shadows and sharply decreasing the missed rate.
机译:智能交通系统和安全驾驶辅助系统是交通和交通管理领域的重要研究课题。这项研究调查了基于计算机视觉的前车检测和跟踪中的关键问题。在城市结构化道路上行驶的车辆的视频用于预测前方车辆的后续运动。这项研究提供了以下贡献。 (1)在图像预处理阶段提出了一种新的自适应阈值分割算法。该算法可抵抗复杂环境的干扰。 (2)在车辆检测阶段添加了基于传统梯度直方图(HOG)特征向量的对称计算。具有AdaBoost分类的对称HOG功能可提高目标车辆的检测率。 (3)建立了基于自适应卡尔曼滤波的运动模型。实验表明,卡尔曼滤波模型的预测提供了可靠的区域,可以消除阴影的干扰,并大大降低漏检率。

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