Automatic anatomical landmark localization has made great strides by leveraging deep learning methods in recent years. The ability to quantify the uncertainty of these predictions is a vital ingredient needed to see these methods adopted in clinical use, where it is imperative that erroneous predictions are caught and corrected. We propose Quantile Binning, a data-driven method to categorise predictions by uncertainty with estimated error bounds. This framework can be applied to any continuous uncertainty measure, allowing straightforward identification of the best subset of predictions with accompanying estimated error bounds. We facilitate easy comparison between uncertainty measures by constructing two evaluation metrics derived from Qua...
Bayesian Neural Nets (BNN) are increasingly used for robust organ auto-contouring. Uncertainty heatm...
Both theoretical and practical problems in deep learning classification benefit from assessing uncer...
The accurate estimation of predictive uncertainty carries importance in medical scenarios such as lu...
Automatic anatomical landmark localization has made great strides by leveraging deep learning method...
Landmark localisation in medical imaging has achieved great success using deep encoder-decoder style...
Place recognition is key to Simultaneous Localization and Mapping (SLAM) and spatial perception. How...
Deep neural networks are becoming the new standard for automated image classification and segmentati...
Deep neural networks have become the gold-standard approach for the automated segmentation of 3D med...
Deep learning algorithms have the potential to automate the examination of medical images obtained i...
This paper explores uncertainty quantification (UQ) as an indicator of the trustworthiness of automa...
Although deep networks have been shown to perform very well on a variety of medical imaging tasks, i...
The application of deep learning to the medical diagnosis process has been an active area of researc...
Historical maps are almost the exclusive source to trace back the characteristics of earth before mo...
We propose a new method for fully automatic landmark localisation using Convolutional Neural Network...
Numerous applications of machine learning involve representing probability distributions over high-d...
Bayesian Neural Nets (BNN) are increasingly used for robust organ auto-contouring. Uncertainty heatm...
Both theoretical and practical problems in deep learning classification benefit from assessing uncer...
The accurate estimation of predictive uncertainty carries importance in medical scenarios such as lu...
Automatic anatomical landmark localization has made great strides by leveraging deep learning method...
Landmark localisation in medical imaging has achieved great success using deep encoder-decoder style...
Place recognition is key to Simultaneous Localization and Mapping (SLAM) and spatial perception. How...
Deep neural networks are becoming the new standard for automated image classification and segmentati...
Deep neural networks have become the gold-standard approach for the automated segmentation of 3D med...
Deep learning algorithms have the potential to automate the examination of medical images obtained i...
This paper explores uncertainty quantification (UQ) as an indicator of the trustworthiness of automa...
Although deep networks have been shown to perform very well on a variety of medical imaging tasks, i...
The application of deep learning to the medical diagnosis process has been an active area of researc...
Historical maps are almost the exclusive source to trace back the characteristics of earth before mo...
We propose a new method for fully automatic landmark localisation using Convolutional Neural Network...
Numerous applications of machine learning involve representing probability distributions over high-d...
Bayesian Neural Nets (BNN) are increasingly used for robust organ auto-contouring. Uncertainty heatm...
Both theoretical and practical problems in deep learning classification benefit from assessing uncer...
The accurate estimation of predictive uncertainty carries importance in medical scenarios such as lu...