#!/usr/bin/env bash # generate prediction results for submission on sintel and kitti online servers # GMFlow without refinement # submission to sintel CUDA_VISIBLE_DEVICES=0 python main.py \ --submission \ --output_path submission/sintel-gmflow-norefine \ --val_dataset sintel \ --resume pretrained/gmflow_sintel-0c07dcb3.pth # submission to kitti CUDA_VISIBLE_DEVICES=0 python main.py \ --submission \ --output_path submission/kitti-gmflow-norefine \ --val_dataset kitti \ --resume pretrained/gmflow_kitti-285701a8.pth # you can also visualize the predictions before submission # CUDA_VISIBLE_DEVICES=0 python main.py \ # --submission \ # --output_path submission/sintel-gmflow-norefine-vis \ # --save_vis_flow \ # --no_save_flo \ # --val_dataset sintel \ # --resume pretrained/gmflow_sintel.pth # GMFlow with refinement # submission to sintel CUDA_VISIBLE_DEVICES=0 python main.py \ --submission \ --output_path submission/sintel-gmflow-withrefine \ --val_dataset sintel \ --resume pretrained/gmflow_with_refine_sintel-3ed1cf48.pth \ --padding_factor 32 \ --upsample_factor 4 \ --num_scales 2 \ --attn_splits_list 2 8 \ --corr_radius_list -1 4 \ --prop_radius_list -1 1 # submission to kitti CUDA_VISIBLE_DEVICES=0 python main.py \ --submission \ --output_path submission/kitti-gmflow-withrefine \ --val_dataset kitti \ --resume pretrained/gmflow_with_refine_kitti-8d3b9786.pth \ --padding_factor 32 \ --upsample_factor 4 \ --num_scales 2 \ --attn_splits_list 2 8 \ --corr_radius_list -1 4 \ --prop_radius_list -1 1