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  • Open Access
    Authors: 
    Kunpeng Yao;
    Publisher: Zenodo
    Country: Switzerland
    Project: EC | SAHR (741945)

    Dataset generated during and/or analyzed during for the spring assembly bimanual manipulation task in the SAHR project.

  • Research data . 2020
    Open Access
    Authors: 
    Kunpeng Yao;
    Publisher: Zenodo
    Country: Switzerland
    Project: EC | SAHR (741945)

    Summary of experimental data of the unscrewing experiment, for the purpose of studying the effects of task condition on the human hand pose selection strategy in bimanaul fine manipulation tasks.

  • Open Access
    Authors: 
    Ehrmann, Maud; Romanello, Matteo; Doucet, Antoine; Clematide, Simon;
    Country: Switzerland
    Project: EC | NewsEye (770299)

    HIPE-2022 datasets used for the HIPE 2022 shared task on named entity recognition and classification (NERC) and entity linking (EL) in multilingual historical documents. HIPE-2022 datasets are based on six primary datasets assembled and prepared for the shared task. Primary datasets are composed of historical newspapers and classic commentaries covering ca. 200 years, feature several languages and different entity tag sets and annotation schemes. They originate from several European cultural heritage projects, from HIPE organizers’ previous research project, and from the previous HIPE-2020 campaign. Some are already published, others are released for the first time for HIPE-2022. The HIPE-2022 shared task assembles and prepares these primary datasets in HIPE-2022 release(s), which correspond to a single package composed of neatly structured and homogeneously formatted files. Primary datasets undergo the following preparation steps: conversion to the HIPE format (with correction of data inconsistencies and metadata consolidation); rearrangement or composition of train and dev splits. Please also refer to: HIPE-2022 shared task website: https://hipe-eval.github.io/HIPE-2022/ HIPE-2022 data repository: https://github.com/hipe-eval/HIPE-2022-data Here is an overview of the primary datasets: Dataset alias Readme Document type Languages Suitable for Project hipe2020 link historical newspapers de, fr, en NERC-Coarse, NERC-Fine, EL CLEF-HIPE-2020 newseye link historical newspapers de, fi, fr, sv NERC-Coarse, NERC-Fine, EL NewsEye sonar link historical newspapers de NERC-Coarse, EL SoNAR letemps link historical newspapers fr NERC-Coarse, NERC-Fine LeTemps topres19th link historical newspapers en NERC-Coarse, EL Living with Machines ajmc link classical commentaries de, fr, en NERC-Coarse, NERC-Fine, EL AjMC The HIPE-2022 team expresses her greatest appreciation to the partnering projects, namely AJMC, impresso, HIPE-2020, Living with Machines, NewsEye, and SoNAR, for contributing their NE-annotated datasets (and hiding a part thereof for the time of the evaluation campaign). New releases are planned. Check the HIPE-2022 website for updates.

Advanced search in
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3 Research products, page 1 of 1
  • Open Access
    Authors: 
    Kunpeng Yao;
    Publisher: Zenodo
    Country: Switzerland
    Project: EC | SAHR (741945)

    Dataset generated during and/or analyzed during for the spring assembly bimanual manipulation task in the SAHR project.

  • Research data . 2020
    Open Access
    Authors: 
    Kunpeng Yao;
    Publisher: Zenodo
    Country: Switzerland
    Project: EC | SAHR (741945)

    Summary of experimental data of the unscrewing experiment, for the purpose of studying the effects of task condition on the human hand pose selection strategy in bimanaul fine manipulation tasks.

  • Open Access
    Authors: 
    Ehrmann, Maud; Romanello, Matteo; Doucet, Antoine; Clematide, Simon;
    Country: Switzerland
    Project: EC | NewsEye (770299)

    HIPE-2022 datasets used for the HIPE 2022 shared task on named entity recognition and classification (NERC) and entity linking (EL) in multilingual historical documents. HIPE-2022 datasets are based on six primary datasets assembled and prepared for the shared task. Primary datasets are composed of historical newspapers and classic commentaries covering ca. 200 years, feature several languages and different entity tag sets and annotation schemes. They originate from several European cultural heritage projects, from HIPE organizers’ previous research project, and from the previous HIPE-2020 campaign. Some are already published, others are released for the first time for HIPE-2022. The HIPE-2022 shared task assembles and prepares these primary datasets in HIPE-2022 release(s), which correspond to a single package composed of neatly structured and homogeneously formatted files. Primary datasets undergo the following preparation steps: conversion to the HIPE format (with correction of data inconsistencies and metadata consolidation); rearrangement or composition of train and dev splits. Please also refer to: HIPE-2022 shared task website: https://hipe-eval.github.io/HIPE-2022/ HIPE-2022 data repository: https://github.com/hipe-eval/HIPE-2022-data Here is an overview of the primary datasets: Dataset alias Readme Document type Languages Suitable for Project hipe2020 link historical newspapers de, fr, en NERC-Coarse, NERC-Fine, EL CLEF-HIPE-2020 newseye link historical newspapers de, fi, fr, sv NERC-Coarse, NERC-Fine, EL NewsEye sonar link historical newspapers de NERC-Coarse, EL SoNAR letemps link historical newspapers fr NERC-Coarse, NERC-Fine LeTemps topres19th link historical newspapers en NERC-Coarse, EL Living with Machines ajmc link classical commentaries de, fr, en NERC-Coarse, NERC-Fine, EL AjMC The HIPE-2022 team expresses her greatest appreciation to the partnering projects, namely AJMC, impresso, HIPE-2020, Living with Machines, NewsEye, and SoNAR, for contributing their NE-annotated datasets (and hiding a part thereof for the time of the evaluation campaign). New releases are planned. Check the HIPE-2022 website for updates.

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