2018
DOI: 10.1007/978-3-319-98932-7_28
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Overview of ImageCLEF 2018: Challenges, Datasets and Evaluation

Abstract: This paper presents an overview of the ImageCLEF 2018 evaluation campaign, an event that was organized as part of the CLEF (Conference and Labs of the Evaluation Forum) Labs 2018. ImageCLEF is an ongoing initiative (it started in 2003) that promotes the evaluation of technologies for annotation, indexing and retrieval with the aim of providing information access to collections of images in various usage scenarios and domains. In 2018, the 16th edition of ImageCLEF ran three main tasks and a pilot task: (1) a c… Show more

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Cited by 32 publications
(24 citation statements)
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“…Existing studies attempted to adapt advanced general VQA methods based on large-scale pre-trained models for Med-VQA [1,2,38,42,48]. These studies are mostly reports of the ImageCLEF VQA-Med Challenge [2,16]. Typically, visual features are extracted by deep pre-trained architectures such as ResNet or VGGNet, and textual features are extracted by stacked RNN-based layers.…”
Section: Medical Visual Question Answeringmentioning
confidence: 99%
“…Existing studies attempted to adapt advanced general VQA methods based on large-scale pre-trained models for Med-VQA [1,2,38,42,48]. These studies are mostly reports of the ImageCLEF VQA-Med Challenge [2,16]. Typically, visual features are extracted by deep pre-trained architectures such as ResNet or VGGNet, and textual features are extracted by stacked RNN-based layers.…”
Section: Medical Visual Question Answeringmentioning
confidence: 99%
“…Dynamic Search for Complex Tasks 7 The lab strives to answer one key question: how can we evaluate, and consequently build, dynamic search algorithms? The 2018 Lab focuses on the development of an evaluation framework, where participants submit "querying agents" that generate queries to be submitted to a static retrieval system.…”
Section: The Clef Lab Sessionsmentioning
confidence: 99%
“…ImageCLEF 9 organizes three main tasks and a pilot task: (i) a caption prediction task that aims at predicting the caption of a figure from the biomedical literature based only on the figure image; (ii) a tuberculosis task that aims at detecting the tuberculosis type, severity and drug resistance from CT (Computed Tomography) volumes of the lung; (iii) a lifelog task (videos, images and other sources) about daily activities understanding and moment retrieval, and (iv) a pilot task on visual question answering where systems are asked to answer medical questions [7].…”
Section: The Clef Lab Sessionsmentioning
confidence: 99%
“…It has been held every year since then and delivered many results in the analysis and retrieval of images [20,21]. Medical tasks started in 2004 and have in some years been the majority of the tasks in ImageCLEF [18,19].…”
Section: Introductionmentioning
confidence: 99%