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首页> 外文期刊>Intelligent Transport Systems, IET >Semi-automatic annotation samples for vehicle type classification in urban environments
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Semi-automatic annotation samples for vehicle type classification in urban environments

机译:用于城市环境中车辆类型分类的半自动注释样本

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摘要

Data collection, and especially data annotation, are surprisingly time consuming and costly tasks for vehicle classification. Annotation is used to label examples of vehicles, manually outlining their shapes and assigning their correct classification, for use in classifier training and performance evaluation. This study presents a semi-automatic approach for the annotation of the vehicle samples recorded from roadside CCTV video cameras. Vehicles are detected by using automatic image analysis and classified into four main categories: car, van, bus and motorcycle/bicycle by using a vehicle observation vector constructed from the size, the shape and the appearance features. Unsupervised -means clustering is used to automatically compute an initial class label for each detected vehicle. Then, in an iterative process, the output scores of a linear support vector machines classifier are used to identify the low confidence samples, for which the annotations are considered for manual correction. Experimental results are presented for both synthetic and real datasets to demonstrate the effectiveness and the efficiency of the authors approach, which significantly reduces the time required to generate an annotated dataset. The method is general enough that it can be used in other classification problems and domains that use a manually-created ground-truth.
机译:对于车辆分类,数据收集,尤其是数据注释,是令人费时且昂贵的任务。注释用于标记示例车辆,手动概述其形状并指定正确的分类,以用于分类器训练和性能评估。这项研究提出了一种半自动方法,用于注释路边闭路电视摄像机记录的车辆样本。通过使用自动图像分析来检测车辆,并使用根据尺寸,形状和外观特征构建的车辆观察矢量将其分为四大类:汽车,厢式货车,公共汽车和摩托车/自行车。无监督-均值聚类用于为每个检测到的车辆自动计算初始类别标签。然后,在迭代过程中,将线性支持向量机分类器的输出分数用于标识低置信度样本,对于这些样本,将注释视为手动校正。给出了合成数据集和实际数据集的实验结果,以证明作者方法的有效性和效率,这大大减少了生成带注释的数据集所需的时间。该方法足够通用,可用于使用人工创建的地面真相的其他分类问题和领域。

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