Data to support the paper "Transfer Learning of Deep Spatiotemporal Networks to Model Arbitrarily Long Videos of Seizures"
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https://rdr.ucl.ac.uk/articles/dataset/Data_to_support_the_paper_Transfer_Learning_of_Deep_Spatiotemporal_Networks_to_Model_Arbitrarily_Long_Videos_of_Seizures_/14781771/1
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This is the dataset to support the paper:<br>Fernando Pérez-García et al., 2021, <i>Transfer Learning of Deep Spatiotemporal Networks to Model Arbitrarily Long Videos of Seizures</i>.<br>The paper has been accepted for publication at the 24th International Conference on Medical Image Computing and Computer Assisted Intervention (MICCAI 2021).A preprint is available on arXiv: https://arxiv.org/abs/2106.12014<br>Contents:1) A CSV file "seizures.csv" with the following fields: - Subject: subject number - Seizure: seizure number - OnsetClonic: annotation marking the onset of the clonic phase - GTCS: whether the seizure generalises - Discard: whether one (Large, Small), none (No) or both (Yes) views were discarded for training.2) A folder "features_fpc_8_fps_15" containing two folders per seizure. The folders contain features extracted from all possible snippets from the small (S) and large (L) views. The snippets were 8 frames long and downsampled to 15 frames per second. The features are in ".pth" format and can be loaded using PyTorch: https://pytorch.org/docs/stable/generated/torch.load.html The last number of the file name indicates the frame index. For example, the file "006_01_L_000015.pth" corresponds to the features extracted from a snippet starting one second into the seizure video. Each file contains 512 numbers representing the deep features extracted from the corresponding snippet.3) A description file, "README.txt".
提供机构:
University College London
创建时间:
2021-07-05



