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首页> 外文期刊>International Journal of Computer Vision >Categorization of Multiple Objects in a Scene Using a Biased Sampling Strategy
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Categorization of Multiple Objects in a Scene Using a Biased Sampling Strategy

机译:使用偏向采样策略对场景中的多个对象进行分类

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摘要

Recently, various bag-of-features (BoF) methods show their good resistance to within-class variations and occlusions in object categorization. In this paper, we present a novel approach for multi-object categorization within the BoF framework. The approach addresses two issues in BoF related methods simultaneously: how to avoid scene modeling and how to predict labels of an image when multiple categories of objects are co-existing. We employ a biased sampling strategy which combines the bottom-up, biologically inspired saliency information and loose, top-down class prior information for object class modeling. Then this biased sampling component is further integrated with a multi-instance multi-label leaning and classification algorithm. With the proposed biased sampling strategy, we can perform multi-object categorization within an image without semantic segmentation. The experimental results on PASCAL VOC2007 and SUN09 show that the proposed method significantly improves the discriminative ability of BoF methods and achieves good performance in multi-object categorization tasks.
机译:最近,各种特征包(BoF)方法显示出它们对对象分类中类内变异和遮挡的良好抵抗力。在本文中,我们提出了一种在BoF框架内进行多对象分类的新颖方法。该方法同时解决了与BoF相关的方法中的两个问题:如何避免场景建模以及当多种对象同时存在时如何预测图像的标签。我们采用了一种偏见的采样策略,该策略结合了自下而上的,受生物学启发的显着性信息和松散,自上而下的类先验信息,用于对象类建模。然后,该有偏差的采样组件将进一步与多实例多标签倾斜和分类算法集成在一起。借助提出的有偏抽样策略,我们可以在图像中执行多对象分类,而无需进行语义分割。在PASCAL VOC2007和SUN09上的实验结果表明,该方法显着提高了BoF方法的判别能力,并在多对象分类任务中取得了良好的性能。

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