This paper presents a robust method for the classification of medical image types in figures of the biomedical literature using the fusion of visual and textual information. A deep convolutional network is trained to discriminate among 31 classes including compound figures, diagnostic image types and generic illustrations, while another shallow convolutional network is used for the analysis of the captions paired with the images. Various fusion methods are analyzed as well as data augmentation approaches. The proposed system is validated on the ImageCLEF 2013 classification task, largely improving the currently best performance from 83.5% to 93.7% accuracy
The paper presents special forms of an ensemble of classifiers for analysis of medical images based ...
Deep learning is now causing a paradigm change in medical image analysis. This technology has lately...
The illustrations in biomedical publications often provide useful information in aiding clinicians\u...
Much of medical knowledge is stored in the biomedical literature, collected in archives like PubMed ...
The classification of medical images and illustrations from the biomedical literature is important f...
This paper describes a multimodal (image + text) learning approach for automatically identifying thr...
AbstractMillions of figures appear in biomedical articles, and it is important to develop an intelli...
Millions of figures appear in biomedical articles, and it is important to develop an intelligent fig...
Multimodal images are used across many application areas including medical and surveillance. Due to ...
Gaining access to large, labelled sets of relevant images is crucial for the development and testing...
The medical image fusion is the process of coalescing multiple images from multiple imaging modaliti...
My thesis develops machine learning methods that exploit multimodal clinical data to improve medical...
The tremendous success of machine learning algorithms at image recognition tasks in recent years int...
This articles describes the ImageCLEF 2015 Medical Classification task. The task contains several su...
Medical image classification is a key technique of Computer-Aided Diagnosis (CAD) systems. Tradition...
The paper presents special forms of an ensemble of classifiers for analysis of medical images based ...
Deep learning is now causing a paradigm change in medical image analysis. This technology has lately...
The illustrations in biomedical publications often provide useful information in aiding clinicians\u...
Much of medical knowledge is stored in the biomedical literature, collected in archives like PubMed ...
The classification of medical images and illustrations from the biomedical literature is important f...
This paper describes a multimodal (image + text) learning approach for automatically identifying thr...
AbstractMillions of figures appear in biomedical articles, and it is important to develop an intelli...
Millions of figures appear in biomedical articles, and it is important to develop an intelligent fig...
Multimodal images are used across many application areas including medical and surveillance. Due to ...
Gaining access to large, labelled sets of relevant images is crucial for the development and testing...
The medical image fusion is the process of coalescing multiple images from multiple imaging modaliti...
My thesis develops machine learning methods that exploit multimodal clinical data to improve medical...
The tremendous success of machine learning algorithms at image recognition tasks in recent years int...
This articles describes the ImageCLEF 2015 Medical Classification task. The task contains several su...
Medical image classification is a key technique of Computer-Aided Diagnosis (CAD) systems. Tradition...
The paper presents special forms of an ensemble of classifiers for analysis of medical images based ...
Deep learning is now causing a paradigm change in medical image analysis. This technology has lately...
The illustrations in biomedical publications often provide useful information in aiding clinicians\u...