Image-based automatic cell counting is an essential yet challenging task, crucial for the diagnosing of many diseases. Current solutions rely on Convolutional Neural Networks and provide astonishing results. However, their performance is often measured only considering counting errors, which can lead to masked mistaken estimations; a low counting error can be obtained with a high but equal number of false positives and false negatives. Consequently, it is hard to determine which solution truly performs best. In this work, we investigate three general counting approaches that have been successfully adopted in the literature for counting several different categories of objects. Through an experimental evaluation over three public collections ...
BACKGROUND: Semiquantitative evaluation and manual cell counting are the commonly used procedures to...
Stereologic cell counting has had a major impact on the field of neuroscience. A major bottleneck in...
Investigating the effect of low-dose radiation exposure on cells using assays of colony-forming abil...
Image-based automatic cell counting is an essential yet challenging task, crucial for the diagnosing...
This paper concerns automated cell counting in microscopy images. The approach we take is to adapt C...
This paper concerns automated cell counting and detection in microscopy images. The approach we take...
Counting cells in fluorescent microscopy is a tedious, time-consuming task that researchers have to ...
A cell-counting algorithm, developed in Matlab®, was created to efficiently count migrated fluoresce...
Despite several methods that exist in different fields of life sciences, certain biotechnological ap...
<div><p>Counting cells and colonies is an integral part of high-throughput screens and quantitative ...
Counting cells in a Neubauer chamber on microbiological culture plates is a laborious task that depe...
Automated cell counting on fluorescent stained bacteria images is a rapid and accurate method for mi...
In this paper we propose a technique to adapt a convolutional neural network (CNN) based object coun...
Investigating the effect of low-dose radiation exposure on cells using assays of colony-forming abil...
Modern biological research generates large amounts of data, which require automation for efficient a...
BACKGROUND: Semiquantitative evaluation and manual cell counting are the commonly used procedures to...
Stereologic cell counting has had a major impact on the field of neuroscience. A major bottleneck in...
Investigating the effect of low-dose radiation exposure on cells using assays of colony-forming abil...
Image-based automatic cell counting is an essential yet challenging task, crucial for the diagnosing...
This paper concerns automated cell counting in microscopy images. The approach we take is to adapt C...
This paper concerns automated cell counting and detection in microscopy images. The approach we take...
Counting cells in fluorescent microscopy is a tedious, time-consuming task that researchers have to ...
A cell-counting algorithm, developed in Matlab®, was created to efficiently count migrated fluoresce...
Despite several methods that exist in different fields of life sciences, certain biotechnological ap...
<div><p>Counting cells and colonies is an integral part of high-throughput screens and quantitative ...
Counting cells in a Neubauer chamber on microbiological culture plates is a laborious task that depe...
Automated cell counting on fluorescent stained bacteria images is a rapid and accurate method for mi...
In this paper we propose a technique to adapt a convolutional neural network (CNN) based object coun...
Investigating the effect of low-dose radiation exposure on cells using assays of colony-forming abil...
Modern biological research generates large amounts of data, which require automation for efficient a...
BACKGROUND: Semiquantitative evaluation and manual cell counting are the commonly used procedures to...
Stereologic cell counting has had a major impact on the field of neuroscience. A major bottleneck in...
Investigating the effect of low-dose radiation exposure on cells using assays of colony-forming abil...