Selfsupervised learning for pathological speech detection
- URL: http://arxiv.org/abs/2406.02572v1
- Date: Thu, 16 May 2024 07:12:47 GMT
- Title: Selfsupervised learning for pathological speech detection
- Authors: Shakeel Ahmad Sheikh,
- Abstract summary: Speech production is susceptible to influence and disruption by various neurodegenerative pathological speech disorders.
These disorders lead to pathological speech characterized by abnormal speech patterns and imprecise articulation.
Unlike neurotypical speakers, patients with speech pathologies or impairments are unable to access various virtual assistants such as Alexa, Siri, etc.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Speech production is a complex phenomenon, wherein the brain orchestrates a sequence of processes involving thought processing, motor planning, and the execution of articulatory movements. However, this intricate execution of various processes is susceptible to influence and disruption by various neurodegenerative pathological speech disorders, such as Parkinsons' disease, resulting in dysarthria, apraxia, and other conditions. These disorders lead to pathological speech characterized by abnormal speech patterns and imprecise articulation. Diagnosing these speech disorders in clinical settings typically involves auditory perceptual tests, which are time-consuming, and the diagnosis can vary among clinicians based on their experiences, biases, and cognitive load during the diagnosis. Additionally, unlike neurotypical speakers, patients with speech pathologies or impairments are unable to access various virtual assistants such as Alexa, Siri, etc. To address these challenges, several automatic pathological speech detection (PSD) approaches have been proposed. These approaches aim to provide efficient and accurate detection of speech disorders, thereby facilitating timely intervention and support for individuals affected by these conditions. These approaches mainly vary in two aspects: the input representations utilized and the classifiers employed. Due to the limited availability of data, the performance of detection remains subpar. Self-supervised learning (SSL) embeddings, such as wav2vec2, and their multilingual versions, are being explored as a promising avenue to improve performance. These embeddings leverage self-supervised learning techniques to extract rich representations from audio data, thereby offering a potential solution to address the limitations posed by the scarcity of labeled data.
Related papers
- Self-supervised Speech Models for Word-Level Stuttered Speech Detection [66.46810024006712]
We introduce a word-level stuttering speech detection model leveraging self-supervised speech models.
Our evaluation demonstrates that our model surpasses previous approaches in word-level stuttering speech detection.
arXiv Detail & Related papers (2024-09-16T20:18:20Z) - Voice Disorder Analysis: a Transformer-based Approach [10.003909936239742]
This paper proposes a novel solution that adopts transformers directly working on raw voice signals.
We consider many recording types at the same time, such as sentence reading and sustained vowel emission.
The experimental results, obtained on both public and private datasets, show the effectiveness of our solution in the disorder detection and classification tasks.
arXiv Detail & Related papers (2024-06-20T19:29:04Z) - Impact of Speech Mode in Automatic Pathological Speech Detection [14.011517808456892]
This paper analyzes the influence of speech mode on pathological speech detection approaches.
It examines two categories of approaches, i.e., classical machine learning and deep learning.
Results indicate that classical approaches may struggle to capture pathology-discriminant cues in spontaneous speech.
In contrast, deep learning approaches demonstrate superior performance, managing to extract additional cues that were previously inaccessible in non-spontaneous speech.
arXiv Detail & Related papers (2024-06-14T12:19:18Z) - Exploring Speech Pattern Disorders in Autism using Machine Learning [12.469348589699766]
This study presents a comprehensive approach to identify distinctive speech patterns through the analysis of examiner-patient dialogues.
We extracted 40 speech-related features, categorized into frequency, zero-crossing rate, energy, spectral characteristics, Mel Frequency Cepstral Coefficients (MFCCs) and balance.
The classification model aimed to differentiate between ASD and non-ASD cases, achieving an accuracy of 87.75%.
arXiv Detail & Related papers (2024-05-03T02:59:15Z) - Identification of Cognitive Decline from Spoken Language through Feature
Selection and the Bag of Acoustic Words Model [0.0]
The early identification of symptoms of memory disorders plays a significant role in ensuring the well-being of populations.
The lack of standardized speech tests in clinical settings has led to a growing emphasis on developing automatic machine learning techniques for analyzing naturally spoken language.
The work presents an approach related to feature selection, allowing for the automatic selection of the essential features required for diagnosis from the Geneva minimalistic acoustic parameter set and relative speech pauses.
arXiv Detail & Related papers (2024-02-02T17:06:03Z) - Show from Tell: Audio-Visual Modelling in Clinical Settings [58.88175583465277]
We consider audio-visual modelling in a clinical setting, providing a solution to learn medical representations without human expert annotation.
A simple yet effective multi-modal self-supervised learning framework is proposed for this purpose.
The proposed approach is able to localise anatomical regions of interest during ultrasound imaging, with only speech audio as a reference.
arXiv Detail & Related papers (2023-10-25T08:55:48Z) - A New Benchmark of Aphasia Speech Recognition and Detection Based on
E-Branchformer and Multi-task Learning [29.916793641951507]
This paper presents a new benchmark for Aphasia speech recognition using state-of-the-art speech recognition techniques.
We introduce two multi-task learning methods based on the CTC/Attention architecture to perform both tasks simultaneously.
Our system achieves state-of-the-art speaker-level detection accuracy (97.3%), and a relative WER reduction of 11% for moderate Aphasia patients.
arXiv Detail & Related papers (2023-05-19T15:10:36Z) - Investigation of Data Augmentation Techniques for Disordered Speech
Recognition [69.50670302435174]
This paper investigates a set of data augmentation techniques for disordered speech recognition.
Both normal and disordered speech were exploited in the augmentation process.
The final speaker adapted system constructed using the UASpeech corpus and the best augmentation approach based on speed perturbation produced up to 2.92% absolute word error rate (WER)
arXiv Detail & Related papers (2022-01-14T17:09:22Z) - A Preliminary Study of a Two-Stage Paradigm for Preserving Speaker
Identity in Dysarthric Voice Conversion [50.040466658605524]
We propose a new paradigm for maintaining speaker identity in dysarthric voice conversion (DVC)
The poor quality of dysarthric speech can be greatly improved by statistical VC.
But as the normal speech utterances of a dysarthria patient are nearly impossible to collect, previous work failed to recover the individuality of the patient.
arXiv Detail & Related papers (2021-06-02T18:41:03Z) - Multi-view Temporal Alignment for Non-parallel Articulatory-to-Acoustic
Speech Synthesis [59.623780036359655]
Articulatory-to-acoustic (A2A) synthesis refers to the generation of audible speech from captured movement of the speech articulators.
This technique has numerous applications, such as restoring oral communication to people who cannot longer speak due to illness or injury.
We propose a solution to this problem based on the theory of multi-view learning.
arXiv Detail & Related papers (2020-12-30T15:09:02Z) - Detecting Parkinsonian Tremor from IMU Data Collected In-The-Wild using
Deep Multiple-Instance Learning [59.74684475991192]
Parkinson's Disease (PD) is a slowly evolving neuro-logical disease that affects about 1% of the population above 60 years old.
PD symptoms include tremor, rigidity and braykinesia.
We present a method for automatically identifying tremorous episodes related to PD, based on IMU signals captured via a smartphone device.
arXiv Detail & Related papers (2020-05-06T09:02:30Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.