The success of deep learning in image recognition is substantially driven by large-scale, well-curated data. On visual recognition of common objects, the data can be scalably annotated on online crowd-sourcing platforms because the labeling does not need any prior knowledge. However, the case is not true for images of expertise like biological or medical imaging in which labeling them needs background knowledge. Although data collection is still usually easy, the annotation is difficult. Existing self-supervised or semi-supervised solutions train a model that tries to learn from a small amount of labeled data and a large amount of unlabeled data. These solutions show good performances on common object recognition but have been found not to ...
To help manage the large amount of biomedical images produced, image information retrieval tools hav...
Accurate annotations of medical images are essential for various clinical applications. The remarkab...
The success of an object classifier depends strongly on its training set, but this fact seems to be ...
The success of deep learning in image recognition is substantially driven by large-scale, well-curat...
Labeled data is a prerequisite for successfully applying machine learning techniques to a wide range...
International audienceLarge-scale annotated corpora have yielded impressive performance improvements...
Supervised deep neural networks need datasets for training, in which the data need to be annotated b...
The supervised learning-based recommendation models, whose infrastructures are sufficient training s...
Crowdsourcing in pathology has been performed on tasks that are assumed to be manageable by nonexper...
We introduce a method for efficiently crowdsourcing multiclass annotations in challenging, real worl...
Collective intelligence has emerged as a powerful methodology for annotating and classifying challen...
Background Machine learning, especially deep learning, is becoming more and more relevant in resear...
The amount of digital image and video data keeps increasing at an ever-faster rate. While "big data"...
Collective intelligence has emerged as a powerful methodology for annotating and classifying challen...
We introduce a method to greatly reduce the amount of redundant annotations required when crowdsourc...
To help manage the large amount of biomedical images produced, image information retrieval tools hav...
Accurate annotations of medical images are essential for various clinical applications. The remarkab...
The success of an object classifier depends strongly on its training set, but this fact seems to be ...
The success of deep learning in image recognition is substantially driven by large-scale, well-curat...
Labeled data is a prerequisite for successfully applying machine learning techniques to a wide range...
International audienceLarge-scale annotated corpora have yielded impressive performance improvements...
Supervised deep neural networks need datasets for training, in which the data need to be annotated b...
The supervised learning-based recommendation models, whose infrastructures are sufficient training s...
Crowdsourcing in pathology has been performed on tasks that are assumed to be manageable by nonexper...
We introduce a method for efficiently crowdsourcing multiclass annotations in challenging, real worl...
Collective intelligence has emerged as a powerful methodology for annotating and classifying challen...
Background Machine learning, especially deep learning, is becoming more and more relevant in resear...
The amount of digital image and video data keeps increasing at an ever-faster rate. While "big data"...
Collective intelligence has emerged as a powerful methodology for annotating and classifying challen...
We introduce a method to greatly reduce the amount of redundant annotations required when crowdsourc...
To help manage the large amount of biomedical images produced, image information retrieval tools hav...
Accurate annotations of medical images are essential for various clinical applications. The remarkab...
The success of an object classifier depends strongly on its training set, but this fact seems to be ...