ShuttleNet: Position-aware Fusion of Rally Progress and Player Styles for Stroke Forecasting in Badminton (AAAI'22)

Overview

ShuttleNet: Position-aware Rally Progress and Player Styles Fusion for Stroke Forecasting in Badminton (AAAI 2022)

Official code of the paper ShuttleNet: Position-aware Rally Progress and Player Styles Fusion for Stroke Forecasting in Badminton.

Overview

ShuttleNet contains two encoder-decoder modified Transformer as extractors, and a position-aware gated fusion network for fusing these contexts to tackle stroke forecasting in badminton.

Setup

  • Build environment
    conda env create -f environment.yml
    
  • Put data in data/dataset.csv

Run script

  • To run all the cases, run the script script_all.sh:
    ./script_all.sh {model_type} {sample_num}
    
  • To run the case with different seeds, run the script script_seed.sh:
    ./script_all.sh {model_type} {encode_length} {sample_num}
    
  • To run the case with the specific seed and default samples, run the script script_single.sh:
    ./script_single.sh {model_type} {encode_length} {seed_value}
    
  • You may need to modify model_type in train.py choices.

Output files

  • Trained models will be saved in the folder model/{datetime}_{model_type}/
    • Details of performance will also be contained in folder named result.log
  • The performance will be saved in corresponding log file named {model_type}_result_{encode_length}

Code structure

Training

python train.py {model_type}

Evaluate

python evaluate.py {model_path}

Generate

python generator.py {model_path}
Owner
Wei-Yao Wang
MS Student in NYCU
Wei-Yao Wang
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