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An Attention-Seq2Seq Model Based on CRNN Encoding for Automatic Labanotation Generation from Motion Capture Data

机译:一种基于CRNN编码的SEQ2SEQ模型从运动捕捉数据中的自动攀爬生成

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Labanotation is an important notation system widely used for recording dances. Numerous methods have been proposed for automatic Labanotation generation from motion capture data. Recently, the sequence-to-sequence (seq2seq) model is proposed. However, the encoder of the model only encodes the temporal information of motion data, lacking the encoding for spatial information. And it is challenging for the decoder to align input and output sequences due to the imbalance of the sequence lengths. In this paper, we propose an attention-seq2seq model based on Convolutional Recurrent Neural Network (CRNN). The proposed model employs an encoder based on CRNN to learn the spatial-temporal information of motion data and applies an attention mechanism to align each target Laban symbol with relevant parts of the input motion data in decoding. Experiments show that the proposed method performs favorably against state-of-the-art algorithms in the automatic Labanotation generation task.
机译:Labanotation是一种重要的符号系统,广泛用于录制舞蹈。 已经提出了许多方法用于从运动捕获数据产生的自动攀载生成。 最近,提出了序列到序列(SEQ2SEQ)模型。 然而,该模型的编码器仅对运动数据的时间信息进行编码,缺少空间信息的编码。 由于序列长度的不平衡,解码器对解码器对准输入和输出序列是具有挑战性的。 在本文中,我们提出了一种基于卷积复发性神经网络(CRNN)的SEQ2SEQ模型。 所提出的模型采用基于CRNN的编码器来学习运动数据的空间时间信息,并应用注意机制以使每个目标Laban符号与输入运动数据的相关部分对准。 实验表明,该方法对自动攀爬生成任务中的最先进的算法进行了有利的算法。

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