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Fine-Grained Vehicle Recognition via Detection-Classification-Tracking in Surveillance Video

机译:监控视频中基于检测分类跟踪的粗粒车辆识别

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摘要

Object recognition is a wide applied task in computer vision. Many fine-grained object recognition approaches are proposed in recent years to detect the same species objects effectively at subordinate-level. In this paper, we present a novel fine-grained vehicle recognition by utilizing collaborative feedback scheme of detection-classification-tracking in surveillance video. We collect a labeled data set of 200 car images which contains three types of car images in addition to negative samples, and extract Haar-like features from the training samples to build global appearance model for fine-grained feature representation. Then a multi-class SVMs classifier is trained offline on the training data set to distinguish the intra-class variability of cars. The collaborative feedback scheme incorporate the tracking and feedback constraint for reduce the frequency of detection and recognition. That is, the detector localizes the motion objects in every frame except that have been observed and tracked, and the best matching object with the given initial car is identified by the classifier and be tracked in the subsequent frames until it is not present. The collaborative scheme of detecting-and-tracking can decreases the computational cost in terms of the frequency of detection and recognition at each frame. The experiment result shows that our approach can effectively locate the best matching car at the frames when the target car appears.
机译:对象识别是计算机视觉中一项广泛应用的任务。近年来,提出了许多细粒度的对象识别方法,以在下属级别有效地检测相同物种的对象。在本文中,我们通过利用监控视频中检测分类跟踪的协作反馈方案,提出了一种新颖的细粒度车辆识别。我们收集了200张汽车图像的标记数据集,其中除了负样本外还包含三种类型的汽车图像,并从训练样本中提取类似Haar的特征,以建立用于精细特征表示的全局外观模型。然后,在训练数据集上离线训练多类SVM分类器,以区分汽车的类内变异性。协作反馈方案结合了跟踪和反馈约束,以减少检测和识别的频率。即,检测器将每个帧中的运动对象定位在已观察和跟踪的对象之外,并且通过分类器识别与给定初始汽车的最佳匹配对象,并在后续帧中对其进行跟踪,直到不存在为止。检测和跟踪的协作方案可以在每帧检测和识别的频率方面降低计算成本。实验结果表明,当目标车出现时,我们的方法可以有效地将最佳匹配车定位在车架上。

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