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[ICCV2023] Official PyTorch Implementation of "BeLFusion: Latent Diffusion for Behavior-Driven Human Motion Prediction". ICCV 2023

Home Page: https://barquerogerman.github.io/BeLFusion/

License: Other

Dockerfile 0.42% Python 99.58%
ddim ddpm deep-learning diffusion generative-models iccv2023 latent-diffusion ldm motion-forecasting motion-prediction

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belfusion's Issues

Some files are missing.

Hi, it seems like the file "segments_test.csv" and "mmapd_GT.csv" files are missing if I just want to perform direct evaluation. Can you please update these files?

GDUnet_Latent or GDUnet_Latent_vSum?

Hello,

I would like to implement Latent Diffusion for pedestrian trajectory forecasting. I am wondering which U-Net class to adapt from. Is it GDUnet_Latent or GDUnet_Latent_vSum?

Awaiting an early response.

Thanks,
Sourav

1

1

AMASS files corrupted

Dear German,

Thanks for your nice work and documentation. When following your installation, I am encountering that running...
python -m data_loader.parsers.amass --gpu

... raises lots of messages regarding files being corrupted.
1957it [01:38, 23.22it/s]WARNING: we skip 'BMLmovi/Subject_5_F_MoSh/shape.npz' because it is corrupted (no framerate)

I have tried to re-download again these tar files from AMASS, but the issue is still there.
Is that behavior expected or did you encounter also that?

Again, congratulations for your nice results

Wondering how to train baselines

could you please release codes for training baseline models like Dlow? I want to compare them with your method on a new dataset

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