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Object Recognition in Images via a Factor Graph Model

机译:通过因子图模型识别图像中的对象

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Object recognition in images suffered from huge search space and uncertain object profile. Recently, the Bag-of-Words methods are utilized to solve these problems, especially the 2-dimension CRF(Conditional Random Field) model. In this paper we suggest the method based on a general and flexible fact graph model, which can catch the long-range correlation in Bag-of-Words by constructing a network learning framework contrasted from lattice in CRF. Furthermore, we explore a parameter learning algorithm based on the gradient descent and Loopy Sum-Product algorithms for the factor graph model. Experimental results on Graz 02 dataset show that, the recognition performance of our method in precision and recall is better than a state-of-art method and the original CRF model, demonstrating the effectiveness of the proposed method.
机译:图像中的对象识别受到巨大的搜索空间和不确定的对象轮廓的困扰。近年来,词袋法被用来解决这些问题,特别是二维CRF(条件随机场)模型。在本文中,我们提出了一种基于通用和灵活的事实图模型的方法,该方法可以通过构建与CRF中的格形成对比的网络学习框架来捕获单词袋中的长期相关性。此外,我们探索了基于梯度下降和Loopy Sum-Product算法的参数学习算法,用于因子图模型。在Graz 02数据集上的实验结果表明,我们的方法在精度和召回率方面的识别性能优于最新方法和原始CRF模型,证明了该方法的有效性。

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