Comparative Analysis of Deep Learning Models for Dysarthric Speech Detection

Author:

Padmanaban Shanmugapriya1,Mohan V1

Affiliation:

1. Saranathan College of Engineering

Abstract

Abstract Dysarthria is a speech communication disorder that is associated with neurological impairments. In order to detect this disorder from speech, we present an experimental comparison of deep models developed based on frequency domain features. A comparative analysis of deep models is performed in the detection of dysarthria using scalogram of Dysarthric Speech. Also, it can assist physicians, specialists, and doctors based on the results of its detection. Since Dysarthric speech signals have segments of breathy and semi-whispery, experiments are performed only on the frequency domain representation of speech signals. Time domain speech signal is transformed into a 2-D scalogram image through wavelet transformation. Then, the scalogram images are applied to pre-trained convolutional neural networks. The layers of pre-trained networks are tuned for our scalogram images through transfer learning. The proposed method of applying the scalogram images as input to pre-trained CNNs is evaluated on the TORGO database and the classification performance of these networks is compared. In this work, AlexNet, GoogLeNet, and ResNet 50 are considered deep models of pre-trained convolutional neural networks. The proposed method of using pre-trained and transfer learned CNN with scalogram image feature achieved better accuracy when compared to other machine learning models in the dysarthria detection system.

Publisher

Research Square Platform LLC

Reference18 articles.

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5. Souissi N, Cherif A (2015) “Dimensionality reduction for voice disorders identification system based on Mel Frequency Cepstral Coefficients and Support Vector Machine”, in 7th International Conference on Modelling, Identification and Control (ICMIC), pp. 1–6,

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