The quantitative study of cell morphology is of great importance as the structure and condition of cells and their structures can be related to conditions of health or disease. The first step towards that, is the accurate segmentation of cell structures. In this work, we compare five approaches, one traditional and four deep-learning, for the semantic segmentation of the nuclear envelope of cervical cancer cells commonly known as HeLa cells. Images of a HeLa cancer cell were semantically segmented with one traditional image-processing algorithm and four three deep learning architectures: VGG16, ResNet18, Inception-ResNet-v2, and U-Net. Three hundred slices, each 2000 × 2000 pixels, of a HeLa Cell were acquired with Serial Block Face Scannin...
Image object segmentation allows localising the region of interest in the image (ROI) and separating...
Living cell segmentation from bright-field light microscopic images is challenging due to the image ...
Cancer is a disease for which we don't have a medicine till now. Because no one knows their cell str...
The quantitative study of cell morphology is of great importance as the structure and condition of c...
This dissertation investigates the volumetric analysis of a variety of cervical cancer cells called ...
This paper investigates the impact of the amount of training data and the shape variability on the s...
This paper describes an algorithm to segment the 3D nuclear envelope of HeLa cancer cells from elect...
This is a data set that contains labeled HeLa cell images, generated in MATLAB® Image Labeler, indic...
This paper describes an image-processing pipeline for the automatic segmentation of the nucle...
This is a data set that contains labelled HeLa cell images, indicating the four different classes - ...
In this work, an unsupervised volumetric semantic instance segmentation of the plasma membrane of He...
This is a data set that contains 300 labelled HeLa cell images, indicating the five different classe...
This paper describes an unsupervised algorithm, which segments the nuclear envelope of HeLa cells im...
In the fields of diagnosis, digital pathology, and drug discovery, the characterization of tissue, i...
Nuclei segmentation in whole-slide imaging (WSI) plays a crucial role in the field of computational ...
Image object segmentation allows localising the region of interest in the image (ROI) and separating...
Living cell segmentation from bright-field light microscopic images is challenging due to the image ...
Cancer is a disease for which we don't have a medicine till now. Because no one knows their cell str...
The quantitative study of cell morphology is of great importance as the structure and condition of c...
This dissertation investigates the volumetric analysis of a variety of cervical cancer cells called ...
This paper investigates the impact of the amount of training data and the shape variability on the s...
This paper describes an algorithm to segment the 3D nuclear envelope of HeLa cancer cells from elect...
This is a data set that contains labeled HeLa cell images, generated in MATLAB® Image Labeler, indic...
This paper describes an image-processing pipeline for the automatic segmentation of the nucle...
This is a data set that contains labelled HeLa cell images, indicating the four different classes - ...
In this work, an unsupervised volumetric semantic instance segmentation of the plasma membrane of He...
This is a data set that contains 300 labelled HeLa cell images, indicating the five different classe...
This paper describes an unsupervised algorithm, which segments the nuclear envelope of HeLa cells im...
In the fields of diagnosis, digital pathology, and drug discovery, the characterization of tissue, i...
Nuclei segmentation in whole-slide imaging (WSI) plays a crucial role in the field of computational ...
Image object segmentation allows localising the region of interest in the image (ROI) and separating...
Living cell segmentation from bright-field light microscopic images is challenging due to the image ...
Cancer is a disease for which we don't have a medicine till now. Because no one knows their cell str...