Modern microscopy and automation technologies enable experiments which can produce millions of images each day. The valuable information is often sparse, and requires clever methods to find useful data. In this thesis a general image classification tool for fluorescence microscopy images was developed usingfeatures extracted from a general Convolutional Neural Network (CNN) trained on natural images. The user selects interesting regions in a microscopy image and then, through an iterative process, using active learning, continually builds a training data set to train a classifier that finds similar regions in other images. The classifier uses conformal prediction to find samples that, if labeled, would most improve the learned model as well...
Today new drugs are tested on cell cultures in wells to minimize time, cost, andanimal testing. The ...
Image focus quality is of utmost importance in digital microscopes because the pathologist cannot ac...
Frequently, neural network training involving biological images suffers from a lack of data, resulti...
Modern microscopy and automation technologies enable experiments which can produce millions of image...
Three-dimensional microscopy is increasingly prevalent in biology due to the development of techniqu...
Three-dimensional microscopy is increasingly prevalent in biology due to the development of techniqu...
Immunofluorescence microscopy is routinely used to visualise the spatial distribution of proteins th...
Herold J, Friedenberger M, Bode M, Rajpoot N, Schubert W, Nattkemper TW. Flexible Synapse Detection ...
Fluorescence microscopy allows for a detailed inspection of cells, cellular networks, and anatomical...
International audienceArtificial intelligence is nowadays used for cell detection and classification...
This research paper presents a novel approach to classifying microscopic images of desmids using tra...
The Institute for Virology, Philipps-University, Marburg, developed a method to create image sequenc...
Abstract—We propose a mathematical framework and algo-rithms both to build accurate models of fluore...
International audienceWe propose FluoGAN, an unsupervised hybrid approach combining the physical mod...
Artificial intelligence is nowadays used for cell detection and classification in optical microscopy...
Today new drugs are tested on cell cultures in wells to minimize time, cost, andanimal testing. The ...
Image focus quality is of utmost importance in digital microscopes because the pathologist cannot ac...
Frequently, neural network training involving biological images suffers from a lack of data, resulti...
Modern microscopy and automation technologies enable experiments which can produce millions of image...
Three-dimensional microscopy is increasingly prevalent in biology due to the development of techniqu...
Three-dimensional microscopy is increasingly prevalent in biology due to the development of techniqu...
Immunofluorescence microscopy is routinely used to visualise the spatial distribution of proteins th...
Herold J, Friedenberger M, Bode M, Rajpoot N, Schubert W, Nattkemper TW. Flexible Synapse Detection ...
Fluorescence microscopy allows for a detailed inspection of cells, cellular networks, and anatomical...
International audienceArtificial intelligence is nowadays used for cell detection and classification...
This research paper presents a novel approach to classifying microscopic images of desmids using tra...
The Institute for Virology, Philipps-University, Marburg, developed a method to create image sequenc...
Abstract—We propose a mathematical framework and algo-rithms both to build accurate models of fluore...
International audienceWe propose FluoGAN, an unsupervised hybrid approach combining the physical mod...
Artificial intelligence is nowadays used for cell detection and classification in optical microscopy...
Today new drugs are tested on cell cultures in wells to minimize time, cost, andanimal testing. The ...
Image focus quality is of utmost importance in digital microscopes because the pathologist cannot ac...
Frequently, neural network training involving biological images suffers from a lack of data, resulti...