Training LDCRF model on unsegmented sequences using connectionist temporal classification

A. A. Atashin, Kamaledin Ghiasi-Shirazi, A. Harati
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引用次数: 2

Abstract

Many machine learning problems such as speech recognition, gesture recognition, and handwriting recognition are concerned with simultaneous segmentation and labeling of sequence data. Latent-dynamic conditional random field (LDCRF) is a well-known discriminative method that has been successfully used for this task. However, LDCRF can only be trained with pre-segmented data sequences in which the label of each frame is available apriori. In the realm of neural networks, the invention of connectionist temporal classification (CTC) made it possible to train recurrent neural networks on unsegmented sequences with great success. In this paper, we use CTC to train an LDCRF model on unsegmented sequences. Experimental results on two gesture recognition tasks show that the proposed method outperforms LDCRFs, hidden Markov models, and conditional random fields.
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使用连接时间分类在未分割序列上训练LDCRF模型
许多机器学习问题,如语音识别、手势识别和手写识别,都涉及序列数据的同时分割和标记。潜在动态条件随机场(LDCRF)是一种众所周知的判别方法,已经成功地用于该任务。然而,LDCRF只能使用预分割的数据序列进行训练,其中每帧的标签都是先验的。在神经网络领域,连接时间分类(CTC)的发明使得在未分割的序列上训练递归神经网络成为可能,并取得了巨大的成功。在本文中,我们使用CTC在未分割序列上训练LDCRF模型。在两个手势识别任务上的实验结果表明,该方法优于LDCRFs、隐马尔可夫模型和条件随机场。
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