Image classification is often prone to labelling uncertainty. To generate suitable training data, images are labelled according to evaluations of human experts. This can result in ambiguities, which will affect subsequent models. In this work, we aim to model the labelling uncertainty in the context of remote sensing and the classification of satellite images. We construct a multinomial mixture model given the evaluations of multiple experts. This is based on the assumption that there is no ambiguity of the image class, but apparently in the experts' opinion about it. The model parameters can be estimated by a stochastic Expectation Maximization algorithm. Analysing the estimates gives insights into sources of label uncertainty. Here, we fo...
We explore some ideas around quantifying and visualising classification uncertainty within a geodemo...
The use of machine learning techniques in classification problems has been shown to be useful in man...
The use of machine learning techniques in classification problems has been shown to be useful in man...
Technological and computational advances continuously drive forward the field of deep learning in re...
Uncertainty quantification in machine learning is a timely and vast field of research. In supervised...
A significant leap forward in the performance of remote sensing models can be attributed to recent a...
As many other research fields, remote sensing has been greatly impacted by machine and deep learning...
Like many other research fields, remote sensing has been greatly impacted by machine and deep learni...
Classification, and in particular semantic segmentation, plays a major role in remote sensing. In re...
Fonte, C. C., & Gonçalves, L. M. S. (2018). Identification of low accuracy regions in land cover map...
Moraes, D., Benevides, P., Moreira, F. D., Costa, H., & Caetano, M. (2021). Exploring the use of cla...
Supervised classification of remotely sensed images has been widely used to map land cover and land ...
Abstract: Classification of multispectral remotely sensed data with textural features is investigate...
The aim of this article is to assess if the data provided by soft classifiers and uncertainty measur...
Deep learning methods have become valuable tools in remote sensing for tasks like aerial scene clas...
We explore some ideas around quantifying and visualising classification uncertainty within a geodemo...
The use of machine learning techniques in classification problems has been shown to be useful in man...
The use of machine learning techniques in classification problems has been shown to be useful in man...
Technological and computational advances continuously drive forward the field of deep learning in re...
Uncertainty quantification in machine learning is a timely and vast field of research. In supervised...
A significant leap forward in the performance of remote sensing models can be attributed to recent a...
As many other research fields, remote sensing has been greatly impacted by machine and deep learning...
Like many other research fields, remote sensing has been greatly impacted by machine and deep learni...
Classification, and in particular semantic segmentation, plays a major role in remote sensing. In re...
Fonte, C. C., & Gonçalves, L. M. S. (2018). Identification of low accuracy regions in land cover map...
Moraes, D., Benevides, P., Moreira, F. D., Costa, H., & Caetano, M. (2021). Exploring the use of cla...
Supervised classification of remotely sensed images has been widely used to map land cover and land ...
Abstract: Classification of multispectral remotely sensed data with textural features is investigate...
The aim of this article is to assess if the data provided by soft classifiers and uncertainty measur...
Deep learning methods have become valuable tools in remote sensing for tasks like aerial scene clas...
We explore some ideas around quantifying and visualising classification uncertainty within a geodemo...
The use of machine learning techniques in classification problems has been shown to be useful in man...
The use of machine learning techniques in classification problems has been shown to be useful in man...