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A traffic surveillance system using dynamic saliency map and SVM boosting

机译:使用动态显着性图和SVM Boosting的交通监控系统

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This paper proposes a traffic surveillance system that can efficiently detect an interesting object and identify vehicles and pedestrians in real traffic situations. The proposed system consists of a moving object detection model and an object identification model. A dynamic saliency map is used for analyzing dynamics of the successive static saliency maps, and can localize an attention area in dynamic scenes to focus on a specific moving object for traffic surveillance purposes. The candidate local areas of a moving object are followed by a blob detection processing including binarization, morphological closing and labeling methods. For identifying a moving object class, the proposed system uses a hybrid of global and local information in each local area. Although the global feature analysis is a compact way to identify an object and provide a good accuracy for non-occluded objects, it is sensitive to image translation and occlusion. Therefore, a local feature analysis is also considered and combined with the global feature analysis. In order to construct an efficient classifier using the global and local features, this study proposes a novel classifier based on boosting of support vector machines. The proposed object identification model can identify a class of moving object and discard unexpected candidate area which does not include an interesting object. As a result, the proposed road surveillance system is able to detect a moving object and identify the class of the moving object. Experimental results show that the proposed traffic surveillance system can successfully detect specific moving objects.
机译:本文提出了一种交通监控系统,可以有效地检测到有趣的物体并在实际交通情况下识别车辆和行人。所提出的系统包括运动物体检测模型和物体识别模型。动态显着性图用于分析连续静态显着性图的动态,并且可以在动态场景中定位关注区域,以针对交通监控的目的集中在特定的移动对象上。运动对象的候选局部区域之后是斑点检测处理,包括二进制化,形态学封闭和标记方法。为了识别运动对象类别,提出的系统在每个局部区域中使用了全局和局部信息的混合体。尽管全局特征分析是识别对象并为非遮挡对象提供良好准确性的紧凑方法,但它对图像平移和遮挡很敏感。因此,还应考虑局部特征分析并将其与全局特征分析相结合。为了利用全局和局部特征构造有效的分类器,本研究提出了一种基于支持向量机提升的新型分类器。提出的物体识别模型可以识别一类运动物体,并丢弃不包括有趣物体的意外候选区域。结果,所提出的道路监视系统能够检测运动物体并识别运动物体的类别。实验结果表明,所提出的交通监控系统能够成功地检测出特定的运动物体。

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