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DBPNet

Code for paper: DBPNet: Dual-Branch Parallel Network with Temporal-Frequency Fusion for Auditory Attention Detection

This paper introduces DBPNet, a novel AAD network that integrates temporal and frequency domains to enhance EEG signal decoding.

Qinke Ni, Hongyu Zhang, Shengbing Pei, Chang Zhou, Zhao Lv, Cunhang Fan. DBPNet: Dual-Branch Parallel Network with Temporal-Frequency Fusion for Auditory Attention Detection. In Ijcai 2024.

Preprocess

  • Please download the AAD dataset for training.
  • The public KUL dataset, DTU dataset and MM-AAD(not yet open) are used in this paper.

Requirements

  • Python3.11.4
    pip install -r requirements.txt

Run

  • Modify the args.* variable in model.py to match the dataset
  • Using model.py to train and test the model
  • Using multi_processing.py to train and test the model in parallel

The First Chinese Auditory Attention Decoding Challenge (ISCSLP 2024)

The First Chinese Auditory Attention Decoding Challenge organized by us at ISCSLP 2024 is now open for registration. The baseline code and data are all public. Everyone is welcome to sign up and participate.

Challenge Website: http://www.iscslp2024.com/ChineseAAD

Timeline of the Chinese AAD Challenge:

21 May 2024: Release of the baseline system, Train and Eval data.

20 Jun 2024: Registration deadline, the due date for participants to join the challenge.

4 Jul 2024: Release of the Test data.

6 Jul 2024: Final submission deadline.

8 Jul 2024: Release of the results and rankings.

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dbpnet's Issues

About the paper and dataset

Hi @fchest , thanks for opening the excellent work!

Since the paper is currently accepted, could you share the paper on arxiv?
and what is the full name of the dataset used in this work (AAD, KUL, DTU dataset)?, pls fix the dataset link in readme.

Norman.

About the format of the "data" and "target" in function "read_prepared_data"

Hello,

To run the model and verify the results, could you please describe the detail format of the variables "data" and "target" in the function "read_prepared_data" ?
I think this is a key part of reproduction, but unfortunately, without specific parameters, I don't think most people will be able to reproduce the results in your paper.

image

Best wishes,
OrangeGe

How are the labels made?

Hi @fchest , thank you so much for open-source the code!

I would like to know how to do the labelled csv file. For example, is it feasible to download the pre-processed mat format DTU data set from the official website and convert it directly into csv format? Or do you need to do something else?

Harvey

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