A Generative-Discriminative Hybrid Method for Multi-View Object Detection

Dongqing Zhang, Shih-Fu Chang
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引用次数: 22

Abstract

We present a novel discriminative-generative hybrid approach in this paper, with emphasis on application in multiview object detection. Our method includes a novel generative model called Random Attributed Relational Graph (RARG) which is able to capture the structural and appearance characteristics of parts extracted from objects. We develop new variational learning methods to compute the approximation of the detection likelihood ratio function. The variaitonal likelihood ratio function can be shown to be a linear combination of the individual generative classifiers defined at nodes and edges of the RARG. Such insight inspires us to replace the generative classifiers at nodes and edges with discriminative classifiers, such as support vector machines, to further improve the detection performance. Our experiments have shown the robustness of the hybrid approach - the combined detection method incorporating the SVM-based discriminative classifiers yields superior detection performances compared to prior works in multiview object detection.
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一种多视图目标检测的生成-判别混合方法
本文提出了一种新的判别-生成混合方法,重点研究了该方法在多视图目标检测中的应用。我们的方法包括一种新的生成模型,称为随机属性关系图(RARG),它能够捕获从物体中提取的零件的结构和外观特征。我们开发了新的变分学习方法来计算检测似然比函数的近似值。变似然比函数可以显示为在RARG的节点和边缘定义的单个生成分类器的线性组合。这启发我们将节点和边缘的生成分类器替换为判别分类器,如支持向量机,以进一步提高检测性能。我们的实验已经证明了混合方法的鲁棒性-与先前的多视图目标检测工作相比,结合基于svm的判别分类器的组合检测方法产生了更好的检测性能。
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