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Detecting Alzheimer’s Disease from Speech Using Neural Networks with Bottleneck Features and Data Augmentation

机译:使用具有瓶颈特征和数据增强的神经网络从言语中检测阿尔茨海默病

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This paper presents a method of detecting Alzheimer’s disease (AD) from the spontaneous speech of subjects in a picture description task using neural networks. This method does not rely on the manual transcriptions and annotations of a subject’s speech, but utilizes the bottleneck features extracted from audio using an ASR model. The neural network contains convolutional neural network (CNN) layers for local context modeling, bidirectional long shortterm memory (BiLSTM) layers for global context modeling and an attention pooling layer for classification. Furthermore, a masking- based data augmentation method is designed to deal with the data scarcity problem. Experiments on the DementiaBank dataset show that the detection accuracy of our proposed method is 82.59%, which is better than the baseline method based on manually-designed acoustic features and support vector machines (SVM), and achieves the state-of-the-art performance of detecting AD using only audio data on this dataset.
机译:本文介绍了使用神经网络的图片描述任务中的受试者的自发语音检测阿尔茨海默病(AD)的方法。 此方法不依赖于受试者的语音的手动转录和注释,但是利用使用ASR模型从音频提取的瓶颈功能。 神经网络包含用于本地上下文建模的卷积神经网络(CNN)层,用于全局上下文建模的双向长短短路存储器(BILSTM)层和用于分类的注意池层。 此外,基于掩蔽的数据增强方法旨在处理数据稀缺问题。 DementiaBank数据集上的实验表明,我们提出的方法的检测精度为82.59%,这比基于手动设计的声学特征和支持向量机(SVM)的基线方法更好,并实现了最先进的 在该数据集上仅使用音频数据检测广告的性能。

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