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首页> 外文期刊>Intelligent Transportation Systems, IEEE Transactions on >Moving Object Classification Using a Combination of Static Appearance Features and Spatial and Temporal Entropy Values of Optical Flows
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Moving Object Classification Using a Combination of Static Appearance Features and Spatial and Temporal Entropy Values of Optical Flows

机译:使用静态外观特征和光流的时空熵值的组合进行运动对象分类

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摘要

This paper proposes a new approach for classifying four types of moving objects in an intelligent transportation system. Pedestrians, cars, motorcycles, and bicycles are classified based on their side views from a fixed camera. A moving object is segmented and tracked using background subtraction, silhouette projection, an area ratio, a Kalman filter, and appearance correlation operations. For the classification of a segmented object, a combination of static and spatiotemporal features based on the cooccurrence of its appearance and the movements of its local parts is proposed. To extract the static appearance features, adaptive block-based gradient intensities and histograms of oriented gradients are proposed. For the spatiotemporal features, the optical-flow-based entropy values of instantaneous and short-term movements are proposed. The former finds the spatial entropy values of the orientations and the amplitudes of optical flows in a block to extract the local movement information from two consecutive image frames. The latter finds the temporal entropy values of the tracked optical flows in different orientation bins to extract the short-term movement information from several consecutive frames. Linear support vector machines with batch incremental learning are proposed to classify the four classes of objects. Experimental results from 12 test video sequences and comparisons with several feature descriptors show the effect of the proposed classification system and the advantage of the proposed features in classification.
机译:本文提出了一种在智能交通系统中对四种类型的运动物体进行分类的新方法。行人,汽车,摩托车和自行车基于固定摄像机的侧视图进行分类。使用背景减法,轮廓投影,面积比,卡尔曼滤波器和外观相关操作对运动对象进行分割和跟踪。为了对分割的对象进行分类,提出了一种基于其外观和局部运动共同出现的静态和时空特征的组合。为了提取静态外观特征,提出了基于块的自适应梯度强度和定向梯度的直方图。对于时空特征,提出了基于光流的瞬时和短期运动的熵值。前者在一个块中找到方向的空间熵值和光流的振幅,以从两个连续的图像帧中提取局部运动信息。后者在不同的方向仓中找到跟踪的光流的时间熵值,以从几个连续的帧中提取短期运动信息。提出了具有批量增量学习的线性支持向量机,以对四类对象进行分类。来自12个测试视频序列的实验结果以及与多个特征描述符的比较显示了所提出的分类系统的效果以及所提出的特征在分类中的优势。

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