Frame²
This repo contains the scripts and data related to the Frame² dataset.
The dataset comprises of three JSON Lines files. One for visual objects data/VO.jsonl and two for textual annotation: data/PT.jsonl and data/EN.jsonl.
Visual annotations
The visual annotations file consists of a list of objects similar to this:
{
"episode": 1,
"objectId": 313136,
"objectTimespan": [850.36, 852.76],
"frame": "People_by_origin",
"frameElement": "Person",
"boundingBoxes": [
[850.36, 120.0, 22.0, 617.0, 444.0],
...
]
}
Transcription Annotations
The textual annotation follow the following format:
{
"episode": 2,
"sentenceId": 214710,
"sentenceTimespan": [899.3, 902.2],
"sentence": "Two hot dogs .",
"tokens": ["Two", "hot", "dogs", "."],
"frames": [
{
"id": "Cardinal_numbers",
"span": [0, 0],
"frameElements": [{ "id": "Entity", "span": [1, 2] }]
}
]
}
The episode
field identifies the Pedro Pelo Mundo episode where that object appears.
The objectTimespan
and sentenceTimeSpan
fields are a tuple that representing the start and end miliseconds of the video where that object or trasncription appears/is spoken.
frame
and frameElement
are the actual FrameNet entities that the visual object represents. The frames
field in text annotation represents a list of all frames evoked by that sentence and their frame elements. Their labels are identified by the id
field and the span
field informs the tokens that evoked the frame or are the frame elements.
Finally, boundingBoxes
is an array of variable size (with at least one element). Each element is a 5-tuple representing a fixed time point where that bounding box appears and the four other numbers to represent the box itself. It's a tuple of (milisecond, x, y, width, heigh)
. Where the video resolution is 854 x 480 (or 480p).
How to cite
Frederico Belcavello, Tiago Timponi Torrent, Ely E. Matos, Adriana S. Pagano, Maucha Gamonal, Natalia Sigiliano, Lívia Vicente Dutra, Helen de Andrade Abreu, Mairon Samagaio, Mariane Carvalho, Franciany Campos, Gabrielly Azalim, Bruna Mazzei, Mateus Fonseca de Oliveira, Ana Carolina Loçasso Luz, Lívia Pádua Ruiz, Júlia Bellei, Amanda Pestana, Josiane Costa, et al.. 2024. Frame2: A FrameNet-based Multimodal Dataset for Tackling Text-image Interactions in Video. In Proceedings of the 2024 Joint International Conference on Computational Linguistics, Language Resources and Evaluation (LREC-COLING 2024), pages 7429–7437, Torino, Italia. ELRA and ICCL.
License
This dataset is shared under a CC BY-NC 4.0 DEED license. Requests for commercial use should be directed to projeto.framenetbr@ufjf.br.
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