Qiu Yongbo, Yang Xin, Yang Siqi, Gong Yuyou, Lv Qinrui, Yang Bo
School of Electronic and Electrical Engineering, Chongqing University of Science and Technology, Chongqing, China.
School of Electronic and Electrical Engineering, Chongqing University of Science and Technology, Chongqing, China.
J Voice. 2024 Sep 20. doi: 10.1016/j.jvoice.2024.08.022.
Crying is one of the primary means by which infants communicate with their environment in the early stages of life. These cries can be triggered by physiological factors such as hunger or sleepiness, or by pathological factors such as illness or discomfort. Therefore, analyzing infant cries can assist inexperienced parents in better caring for their babies. Most studies have predominantly utilized a single-speech feature, such as Mel Frequency Cepstral Coefficients (MFCC), for classifying infant cries, while other speech features, such as Mel Spectrogram and Tonnetz, are often overlooked. In this study, we manually designed a hybrid feature set, MMT (including MFCC, Mel Spectrogram, and Tonnetz), and explored its application in infant cry classification. Additionally, we proposed a convolutional neural network based on residual connections and long short-term memory (LSTM) networks, termed ResLSTM. We compared the performance of different deep learning models using the hybrid feature set MMT and the single MFCC feature. This study utilized the Baby Crying, Dunstan Baby Language, and Donate a Cry datasets. The results indicate that the hybrid feature set MMT outperforms the single MFCC feature. The MMT combined with the ResLSTM method achieved the best performance, obtaining accuracy rates of 94.15%, 92.92%, and 95.98% on the three datasets, respectively.
哭泣是婴儿在生命早期与周围环境交流的主要方式之一。这些哭声可能由饥饿或困倦等生理因素引发,也可能由疾病或不适等病理因素引发。因此,分析婴儿哭声有助于缺乏经验的父母更好地照顾宝宝。大多数研究主要利用单一语音特征,如梅尔频率倒谱系数(MFCC)来对婴儿哭声进行分类,而其他语音特征,如梅尔频谱图和音高频率图,则常常被忽视。在本研究中,我们手动设计了一个混合特征集MMT(包括MFCC、梅尔频谱图和音高频率图),并探索了其在婴儿哭声分类中的应用。此外,我们提出了一种基于残差连接和长短期记忆(LSTM)网络的卷积神经网络,称为ResLSTM。我们使用混合特征集MMT和单一MFCC特征比较了不同深度学习模型的性能。本研究使用了婴儿哭声、邓斯坦婴儿语言和捐赠哭声数据集。结果表明,混合特征集MMT优于单一MFCC特征。MMT与ResLSTM方法相结合取得了最佳性能,在三个数据集上的准确率分别达到了94.15%、92.92%和95.98%。