Image focus quality is of utmost importance in digital microscopes because the pathologist cannot accurately characterize the tissue state without focused images. We propose to train a classifier to measure the focus quality of microscopy scans based on an extensive set of image features. However, classifiers rely heavily on the quality and quantity of the training data, and collecting annotated data is tedious and expensive. We therefore propose a new method to automatically generate large amounts of training data using image stacks. Our experiments demonstrate that a classifier trained with the image stacks performs comparably with one trained with manually annotated data. The classifier is able to accurately detect out-of-focus regions, ...
Autofucusing is the fundamental step when it comes to image acquistion and analysis with automated m...
Objective: Large-scale microscopy-based experiments often result in images with rich but sparse info...
Objective: Large-scale microscopy-based experiments often result in images with rich but sparse info...
Image focus quality is of utmost importance in digital microscopes because the pathologist cannot ac...
Image focus quality is of utmost importance in digital microscopes because the pathologist cannot ac...
BACKGROUND:Large image datasets acquired on automated microscopes typically have some fraction of lo...
Abstract Background Large image datasets acquired on automated microscopes typically have some fract...
BACKGROUND:Large image datasets acquired on automated microscopes typically have some fraction of lo...
Background Large image datasets acquired on automated microscopes typically have so...
This thesis presents methods that address three fundamental tasks in the field of microscopy image a...
This thesis presents methods that address three fundamental tasks in the field of microscopy image a...
In this paper, we compare four field-of-view (FOV) metrics that, when applied to a low-resolution im...
In this paper, we compare four field-of-view (FOV) metrics that, when applied to a low-resolution im...
Digital holographic microscopy (DHM) is a label-free, single-shot technique that is well suited for ...
Digital holographic microscopy (DHM) is a label-free, single-shot technique that is well suited for ...
Autofucusing is the fundamental step when it comes to image acquistion and analysis with automated m...
Objective: Large-scale microscopy-based experiments often result in images with rich but sparse info...
Objective: Large-scale microscopy-based experiments often result in images with rich but sparse info...
Image focus quality is of utmost importance in digital microscopes because the pathologist cannot ac...
Image focus quality is of utmost importance in digital microscopes because the pathologist cannot ac...
BACKGROUND:Large image datasets acquired on automated microscopes typically have some fraction of lo...
Abstract Background Large image datasets acquired on automated microscopes typically have some fract...
BACKGROUND:Large image datasets acquired on automated microscopes typically have some fraction of lo...
Background Large image datasets acquired on automated microscopes typically have so...
This thesis presents methods that address three fundamental tasks in the field of microscopy image a...
This thesis presents methods that address three fundamental tasks in the field of microscopy image a...
In this paper, we compare four field-of-view (FOV) metrics that, when applied to a low-resolution im...
In this paper, we compare four field-of-view (FOV) metrics that, when applied to a low-resolution im...
Digital holographic microscopy (DHM) is a label-free, single-shot technique that is well suited for ...
Digital holographic microscopy (DHM) is a label-free, single-shot technique that is well suited for ...
Autofucusing is the fundamental step when it comes to image acquistion and analysis with automated m...
Objective: Large-scale microscopy-based experiments often result in images with rich but sparse info...
Objective: Large-scale microscopy-based experiments often result in images with rich but sparse info...