Objective: Voice disorders significantly compromise individuals' ability to speak in their daily lives. Without early diagnosis and treatment, these disorders may deteriorate drastically. Thus, automatic classification systems at home are desirable for people who are inaccessible to clinical disease assessments. However, the performance of such systems may be weakened owing to the constrained resources, and domain mismatch between the clinical data and noisy real-world data. Methods: This study develops a compact and domain-robust voice disorder classification system to identify the utterances of health, neoplasm, and benign structural diseases. Our proposed system utilizes a feature extractor model composed of factorized convolutional neur...
Approximately 1.2% of the world's population has impaired voice production. As a result, automatic d...
Previous studies on the automatic classification of voice disorders have mostly investigated the bin...
Diagnosis on the basis of a computerized acoustic examination may play an incredibly important role ...
A large population around the world is suffering from voice-related complications. Computer-based vo...
Automatic objective non-invasive detection of pathological voice based on computerized analysis of a...
Background: Normal voice production depends on the synchronized cooperation of multiple physiologica...
Many speech features and models, including Deep Neural Networks (DNN), are used for classification t...
Acoustic analysis using signal processing tools can be used to extract voice features to distinguish...
Abstract Voice is an essential component of human communication, serving as a fundamental medium for...
A short review of some recent findings in the field of automatic voice disorders detection and class...
Previously held under moratorium from 15th April 2021 until 2nd May 2023.The research presented in t...
The Saarbrücken Voice Database contains speech and simultaneous electroglottography recordings of 10...
Automatically detecting pathological voice disorders such as vocal cord paralysis or Reinke’s edema ...
Edge Analytics and Artificial Intelligence are important features of the current smart connected liv...
Voice pathology is increasing dramatically, especially due to unhealthy social habits, being too muc...
Approximately 1.2% of the world's population has impaired voice production. As a result, automatic d...
Previous studies on the automatic classification of voice disorders have mostly investigated the bin...
Diagnosis on the basis of a computerized acoustic examination may play an incredibly important role ...
A large population around the world is suffering from voice-related complications. Computer-based vo...
Automatic objective non-invasive detection of pathological voice based on computerized analysis of a...
Background: Normal voice production depends on the synchronized cooperation of multiple physiologica...
Many speech features and models, including Deep Neural Networks (DNN), are used for classification t...
Acoustic analysis using signal processing tools can be used to extract voice features to distinguish...
Abstract Voice is an essential component of human communication, serving as a fundamental medium for...
A short review of some recent findings in the field of automatic voice disorders detection and class...
Previously held under moratorium from 15th April 2021 until 2nd May 2023.The research presented in t...
The Saarbrücken Voice Database contains speech and simultaneous electroglottography recordings of 10...
Automatically detecting pathological voice disorders such as vocal cord paralysis or Reinke’s edema ...
Edge Analytics and Artificial Intelligence are important features of the current smart connected liv...
Voice pathology is increasing dramatically, especially due to unhealthy social habits, being too muc...
Approximately 1.2% of the world's population has impaired voice production. As a result, automatic d...
Previous studies on the automatic classification of voice disorders have mostly investigated the bin...
Diagnosis on the basis of a computerized acoustic examination may play an incredibly important role ...