There is a limitation in the size of an image that can be processed using computationally demanding methods such as e.g. Convolutional Neural Networks (CNNs). Furthermore, many networks are designed to work with a pre-determined fixed image size. Some imaging modalities-notably biological and medical-can result in images up to a few gigapixels in size, meaning that they have to be divided into smaller parts, or patches, for processing. However, when performing pixel classification, this may lead to undesirable artefacts, such as edge effects in the final re-combined image. We introduce windowing methods from signal processing to effectively reduce such edge effects. With the assumption that the central part of an image patch often holds ric...
Segmentation, i.e. the labelling of objects in image data, is a crucial step in many medical imaging...
Over the past decades, histopathological cancer diagnostics has become more complex, and the increas...
Despite the popularity and empirical success of patch-based nearest-neighbor and weighted majority v...
There is a limitation in the size of an image that can be processed using computationally demanding ...
Deep learning strategies, particularly convolutional neural networks (CNNs), are especially suited t...
Advances in imaging technology continue to outpace the innovations in computing hardware. For some t...
In this article a new combination of image segmentation techniques including K-means clustering, wat...
The 40th SGAI International Conference on Artificial Intelligence (AI-2020), Cambridge, United Kingd...
The quantification of similarity between image segmen-tations is a complex yet important task. The i...
Convolutional neural networks are the way to solve arbitrary image segmentation tasks. However, when...
Over the past decades, histopathological cancer diagnostics has become more complex, and the increas...
International audienceRecently, optimization with graph cuts became very attractive but generally re...
Data used in image segmentation are not always defined on the same grid. This is particularly true f...
Nonlinear edge preserving smoothing often is performed prior to medical image segmentation. The goal...
In this thesis, we present a novel method for performing image segmentation in a semi-supervised app...
Segmentation, i.e. the labelling of objects in image data, is a crucial step in many medical imaging...
Over the past decades, histopathological cancer diagnostics has become more complex, and the increas...
Despite the popularity and empirical success of patch-based nearest-neighbor and weighted majority v...
There is a limitation in the size of an image that can be processed using computationally demanding ...
Deep learning strategies, particularly convolutional neural networks (CNNs), are especially suited t...
Advances in imaging technology continue to outpace the innovations in computing hardware. For some t...
In this article a new combination of image segmentation techniques including K-means clustering, wat...
The 40th SGAI International Conference on Artificial Intelligence (AI-2020), Cambridge, United Kingd...
The quantification of similarity between image segmen-tations is a complex yet important task. The i...
Convolutional neural networks are the way to solve arbitrary image segmentation tasks. However, when...
Over the past decades, histopathological cancer diagnostics has become more complex, and the increas...
International audienceRecently, optimization with graph cuts became very attractive but generally re...
Data used in image segmentation are not always defined on the same grid. This is particularly true f...
Nonlinear edge preserving smoothing often is performed prior to medical image segmentation. The goal...
In this thesis, we present a novel method for performing image segmentation in a semi-supervised app...
Segmentation, i.e. the labelling of objects in image data, is a crucial step in many medical imaging...
Over the past decades, histopathological cancer diagnostics has become more complex, and the increas...
Despite the popularity and empirical success of patch-based nearest-neighbor and weighted majority v...