Accurately segmented nuclei are important, not only for cancer classification, but also for predicting treatment effectiveness and other biomedical applications. However, the diversity of cell types, various external factors, and illumination conditions make nucleus segmentation a challenging task. In this work, we present a new deep learning-based method for cell nucleus segmentation. The proposed convolutional blur attention (CBA) network consists of downsampling and upsampling procedures. A blur attention module and a blur pooling operation are used to retain the feature salience and avoid noise generation in the downsampling procedure. A pyramid blur pooling (PBP) module is proposed to capture the multi-scale information in the upsampli...
Nucleus segmentation of fluorescence microscopy is a critical step in quantifying measurements in ce...
Creating manual annotations in a large number of images is a tedious bottleneck that limits deep lea...
Background: Advances in image analysis and computational techniques have facilitated automatic detec...
Nuclei segmentation is an important step in the task of medical image analysis. Nowadays, deep learn...
Identifying nuclei is often a critical first step in analyzing microscopy images of cells and classi...
Accurate and fast segmentation of nuclei in histopathological images plays a crucial role in cancer ...
Accurate and fast segmentation of nuclei in histopathological images plays a crucial role in cancer ...
In histopathological image analysis, cell nucleus segmentation plays an important role in the clinic...
Deep neural networks (DNNs) offer state-of-the-art performance for cell nucleus detection and segmen...
Recently, image processing technology has been applied to various fields and to be beneficial for hu...
Identifying nuclei is often a critical first step in analyzing microscopy images of cells and classi...
years. The histological images obtained from a biopsy of breast tissues are regarded as being the hi...
Cilj ovog rada je pokazati da duboko učenje uspješno rješava problem lokalizacije staničnih jezgara ...
One of the most popular methods in the diagnosis of breast cancer is fine-needle biopsy without aspi...
Nucleus segmentation and classification are the prerequisites in the workflow of digital pathology p...
Nucleus segmentation of fluorescence microscopy is a critical step in quantifying measurements in ce...
Creating manual annotations in a large number of images is a tedious bottleneck that limits deep lea...
Background: Advances in image analysis and computational techniques have facilitated automatic detec...
Nuclei segmentation is an important step in the task of medical image analysis. Nowadays, deep learn...
Identifying nuclei is often a critical first step in analyzing microscopy images of cells and classi...
Accurate and fast segmentation of nuclei in histopathological images plays a crucial role in cancer ...
Accurate and fast segmentation of nuclei in histopathological images plays a crucial role in cancer ...
In histopathological image analysis, cell nucleus segmentation plays an important role in the clinic...
Deep neural networks (DNNs) offer state-of-the-art performance for cell nucleus detection and segmen...
Recently, image processing technology has been applied to various fields and to be beneficial for hu...
Identifying nuclei is often a critical first step in analyzing microscopy images of cells and classi...
years. The histological images obtained from a biopsy of breast tissues are regarded as being the hi...
Cilj ovog rada je pokazati da duboko učenje uspješno rješava problem lokalizacije staničnih jezgara ...
One of the most popular methods in the diagnosis of breast cancer is fine-needle biopsy without aspi...
Nucleus segmentation and classification are the prerequisites in the workflow of digital pathology p...
Nucleus segmentation of fluorescence microscopy is a critical step in quantifying measurements in ce...
Creating manual annotations in a large number of images is a tedious bottleneck that limits deep lea...
Background: Advances in image analysis and computational techniques have facilitated automatic detec...