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Efficient search methods and deep belief networks with particle filtering for non-rigid tracking: Application to lip tracking

机译:用于非刚性跟踪的粒子滤波的高效搜索方法和深度信念网络:应用于唇迹

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Pattern recognition methods have become a powerful tool for segmentation in the sense that they are capable of automatically building a segmentation model from training images. However, they present several difficulties, such as requirement of a large set of training data, robustness to imaging conditions not present in the training set, and complexity of the search process. In this paper we tackle the second problem by using a deep belief network learning architecture, and the third problem by resorting to efficient searching algorithms. As an example, we illustrate the performance of the algorithm in lip segmentation and tracking in video sequences. Quantitative comparison using different strategies for the search process are presented. We also compare our approach to a state-of-the-art segmentation and tracking algorithm. The comparison show that our algorithm produces competitive segmentation results and that efficient search strategies reduce ten times the run-complexity.
机译:模式识别方法已成为分割的强大工具,因为它们能够从训练图像自动构建分段模型。然而,它们存在几个困难,例如需要大量训练数据,培训集中不存在的成像条件的鲁棒性以及搜索过程的复杂性。在本文中,我们通过使用深度信仰网络学习架构和第三个问题来解决第二个问题,通过借助于高效的搜索算法来解决第三个问题。作为示例,我们说明了在视频序列中的唇部分段和跟踪中的算法的性能。介绍了使用不同策略的搜索过程的定量比较。我们还将我们的方法与最先进的分段和跟踪算法进行了比较。比较表明,我们的算法产生了竞争性的分段结果,并且该效率的搜索策略减少了运行复杂性的十倍。

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