Particle Filter Based Probabilistic Forced Alignment for Continuous Gesture Recognition

Necati Cihan Camgöz, Simon Hadfield, R. Bowden
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引用次数: 7

Abstract

In this paper, we propose a novel particle filter based probabilistic forced alignment approach for training spatiotemporal deep neural networks using weak border level annotations. The proposed method jointly learns to localize and recognize isolated instances in continuous streams. This is done by drawing training volumes from a prior distribution of likely regions and training a discriminative 3D-CNN from this data. The classifier is then used to calculate the posterior distribution by scoring the training examples and using this as the prior for the next sampling stage. We apply the proposed approach to the challenging task of large-scale user-independent continuous gesture recognition. We evaluate the performance on the popular ChaLearn 2016 Continuous Gesture Recognition (ConGD) dataset. Our method surpasses state-of-the-art results by obtaining 0.3646 and 0.3744 Mean Jaccard Index Score on the validation and test sets of ConGD, respectively. Furthermore, we participated in the ChaLearn 2017 Continuous Gesture Recognition Challenge and was ranked 3rd. It should be noted that our method is learner independent, it can be easily combined with other approaches.
基于粒子滤波的连续手势识别概率强制对齐
在本文中,我们提出了一种基于粒子滤波的概率强制对齐方法,用于使用弱边界级标注训练时空深度神经网络。该方法联合学习对连续流中的孤立实例进行定位和识别。这是通过从可能区域的先验分布中绘制训练量并从该数据中训练判别3D-CNN来完成的。然后使用分类器通过对训练样本进行评分来计算后验分布,并将其用作下一个采样阶段的先验。我们将提出的方法应用于具有挑战性的大规模用户独立连续手势识别任务。我们在流行的ChaLearn 2016连续手势识别(cond)数据集上评估了性能。我们的方法超越了最先进的结果,在cond的验证集和测试集上分别获得了0.3646和0.3744的平均Jaccard指数得分。此外,我们还参加了ChaLearn 2017连续手势识别挑战赛,并获得了第三名。值得注意的是,我们的方法是独立于学习者的,它可以很容易地与其他方法相结合。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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