An implementation of IMLE-Net: An Interpretable Multi-level Multi-channel Model for ECG Classification

Overview

IMLE-Net: An Interpretable Multi-level Multi-channel Model for ECG Classification

The repostiory consists of the code, results and data set links for the paper title "IMLE-Net: An Interpretable Multi-level Multi-channel Model for ECG Classification"

Dataset link

The results has been generated on the PTB-XL Dataset - https://physionet.org/content/ptb-xl/1.0.1/

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Comments
  • ValueError: axes don't match array

    ValueError: axes don't match array

    When use the imle_net.h5 offered by this github, and then ”python inference.py --data_dir data/ptb --model imle_net --batchsize 32“。the model.load_wight() is error:"ValueError: axes don't match array"

    opened by zhaoxiongjun 1
Owner
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