This repository is associated with the manuscript "Fully automatic segmentation of glottis and vocal folds in endoscopic laryngeal high-speed videos using a deep Convolutional LSTM Network", where we used a deep Convolutional Neural Network (CNN) approach for the first time to fully automatically segment not only the time-varying glottal area but also the vocal fold tissue directly from laryngeal HS video. The approach was developed and intensely evaluated on a dataset comprising 130 HS-sequences (13,000 HS video frames in total) obtained from healthy as well as pathologic subjects. Here, we provide the used dataset, the code along with the best performing Neural Network, and scripts to evaluate the segmentation performance. This work was...
Vocal disorders directly arise from the physical shape of the vocal cords. Videostroboscopic imaging...
Each examination yields video and audio data, where the video data is stored either lossy or lossles...
This thesis puts forward a new Convolutional Neural Network based on the U-Net Architecture, called ...
This repository is associated with the manuscript "Fully automatic segmentation of glottis and vocal...
The objective investigation of the dynamic properties of vocal fold vibrations demands the recording...
The objective investigation of the dynamic properties of vocal fold vibrations demands the recording...
Exact analysis of the glottal vibration patten is vital for assessing voice pathologies. One of the ...
Laryngeal videoendoscopy is one of the main tools in clinical examinations for voice disorders and v...
Endoscopic high-speed video (HSV) systems for visualization and assessment of vocal fold dynamics in...
Laryngeal videoendoscopy is one of the main tools in clinical examinations for voice disorders and v...
The larynx, a common site for head and neck cancers, is often overlooked in automated contouring due...
An automatic method for segmenting glottis in high speed endoscopic video (HSV) images of vocal fold...
Abstract High-speed videoendoscopy is an important tool to study laryngeal dynamics, to quantify voc...
PURPOSE: To develop and validate a deep learning model for distinguishing healthy vocal folds (HVF) ...
OBJECTIVE: This study aims to develop and validate a convolutional neural network (CNN)-based algori...
Vocal disorders directly arise from the physical shape of the vocal cords. Videostroboscopic imaging...
Each examination yields video and audio data, where the video data is stored either lossy or lossles...
This thesis puts forward a new Convolutional Neural Network based on the U-Net Architecture, called ...
This repository is associated with the manuscript "Fully automatic segmentation of glottis and vocal...
The objective investigation of the dynamic properties of vocal fold vibrations demands the recording...
The objective investigation of the dynamic properties of vocal fold vibrations demands the recording...
Exact analysis of the glottal vibration patten is vital for assessing voice pathologies. One of the ...
Laryngeal videoendoscopy is one of the main tools in clinical examinations for voice disorders and v...
Endoscopic high-speed video (HSV) systems for visualization and assessment of vocal fold dynamics in...
Laryngeal videoendoscopy is one of the main tools in clinical examinations for voice disorders and v...
The larynx, a common site for head and neck cancers, is often overlooked in automated contouring due...
An automatic method for segmenting glottis in high speed endoscopic video (HSV) images of vocal fold...
Abstract High-speed videoendoscopy is an important tool to study laryngeal dynamics, to quantify voc...
PURPOSE: To develop and validate a deep learning model for distinguishing healthy vocal folds (HVF) ...
OBJECTIVE: This study aims to develop and validate a convolutional neural network (CNN)-based algori...
Vocal disorders directly arise from the physical shape of the vocal cords. Videostroboscopic imaging...
Each examination yields video and audio data, where the video data is stored either lossy or lossles...
This thesis puts forward a new Convolutional Neural Network based on the U-Net Architecture, called ...