Datasets:
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README.md
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* **Bad** is a class used to label images that cannot be confidently annotated as containing one of the aforementioned habitat types by the annotator due to poor image quality, turbidity, or similar.
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Each of the six annotators have labelled all the images (that is, six individual annotations are provided for each image), which allows for analyzing how inter-annotator disagreement can affect the performance of machine learning models.
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Cross-validation splits and date-based splits are provided in the [jambo_splits_public.csv](jambo_splits_public.csv) file. Check out the starter notebook [howto_jambo.ipynb](howto_jambo.ipynb) to get started.
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For more information about the dataset and baseline models, please see the paper presented at the ECCV 2024 Computer Vision for Ecology (CV4E) Workshop:
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* **Bad** is a class used to label images that cannot be confidently annotated as containing one of the aforementioned habitat types by the annotator due to poor image quality, turbidity, or similar.
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Each of the six annotators have labelled all the images (that is, six individual annotations are provided for each image), which allows for analyzing how inter-annotator disagreement can affect the performance of machine learning models.
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The easiest way to fetch the dataset is to simply clone this repository using git:
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```bash
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sudo apt-get install git-lfs # in case it's not installed
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git lfs install
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git clone https://huggingface.co/datasets/vapaau/jambo
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```
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Cross-validation splits and date-based splits are provided in the [jambo_splits_public.csv](jambo_splits_public.csv) file. Check out the starter notebook [howto_jambo.ipynb](howto_jambo.ipynb) to get started.
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For more information about the dataset and baseline models, please see the paper presented at the ECCV 2024 Computer Vision for Ecology (CV4E) Workshop:
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