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基于时空图模型的中文诗歌发音特征预测

A Spatial-Temporal Graph Model for Pronunciation Feature Prediction of Chinese Poetry.

出版信息

IEEE Trans Neural Netw Learn Syst. 2023 Dec;34(12):10294-10308. doi: 10.1109/TNNLS.2022.3165554. Epub 2023 Nov 30.

DOI:10.1109/TNNLS.2022.3165554
PMID:35446770
Abstract

With the development of artificial intelligence, speech recognition and prediction have become one of the important research domains with wild applications, such as intelligent control, education, individual identification, and emotion analysis. Chinese poetry reading contains rich features of continuous pronunciations, such as mood, emotion, rhythm schemes, lyric reading, and artistic expression. Therefore, the prediction of the pronunciation characteristics of a Chinese poetry reading is the significance for the presentation of high-level machine intelligence and has the potential to create a high-level intelligent system for teaching children to read Tang poetry. Mel frequency cepstral coefficient (MFCC) is currently used to present important speech features. Due to the complexity and high degree of nonlinearity in poetry reading, however, there is a tough challenge facing accurate pronunciation feature prediction, that is, how to model complex spatial correlations and time dynamics, such as rhyme schemes. As for many current methods, they ignore the spatial and temporal characteristics in MFCC presentation. In addition, these methods are subjected to certain limitations on prediction for long-term performance. In order to solve these problems, we propose a novel spatial-temporal graph model (STGM-MHA) based on multihead attention for the purpose of pronunciation feature prediction of Chinese poetry. The STGM-MHA is designed using an encoder-decoder structure. The encoder compresses the data into a hidden space representation, while the decoder reconstructs the hidden space representation as output. In the model, a novel gated recurrent unit (GRU) module (AGRU) based on multihead attention is proposed to extract the spatial and temporal features of MFCC data effectively. The evaluation comparison of our proposed model versus state-of-the-art methods in six datasets reveals the clear advantage of the proposed model.

摘要

随着人工智能的发展,语音识别和预测已经成为一个重要的研究领域,具有广泛的应用,如智能控制、教育、身份识别和情感分析。中文诗歌朗诵包含丰富的连续发音特征,如语气、情感、韵律、吟诵和艺术表现。因此,预测中文诗歌朗诵的发音特征对于表现高级机器智能具有重要意义,并且有可能创建一个教授儿童读唐诗的高级智能系统。梅尔频率倒谱系数(MFCC)目前用于表示重要的语音特征。然而,由于诗歌朗诵的复杂性和高度非线性,准确预测发音特征面临着艰巨的挑战,即如何建模复杂的空间相关性和时间动态,如韵律。对于许多现有的方法,它们忽略了 MFCC 表示中的空间和时间特征。此外,这些方法在预测长期性能方面受到一定的限制。为了解决这些问题,我们提出了一种基于多头注意力的新的时空图模型(STGM-MHA),用于预测中文诗歌的发音特征。STGM-MHA 采用编码器-解码器结构设计。编码器将数据压缩到隐藏空间表示中,解码器将隐藏空间表示重构为输出。在模型中,提出了一种基于多头注意力的新型门控循环单元(GRU)模块(AGRU),以有效地提取 MFCC 数据的空间和时间特征。我们的模型与六个数据集的最新方法的评估比较表明了该模型的明显优势。

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