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This repository has been archived by the owner on Jun 12, 2024. It is now read-only.
I'm very interested in this dataset so I did some experiments with SMPL backbone. But the result turns out quite surprising, so I further analyzed the dataset. My approach is to use run_vis.py to re-run unreasonable videos on my model. And here are my results:
gBR_sFM_c09_d04_mBR4_ch07
with the setting
flags.DEFINE_string(
'video_name',
'gBR_sFM_c09_d04_mBR4_ch07',
'input video name to be visualized.')
flags.DEFINE_enum(
'mode', 'SMPL', ['2D', '3D', 'SMPL', 'SMPLMesh'],
'visualize 3D or 2D keypoints, or SMPL joints on image plane.')
gBR_sBM_c05_d04_mBR0_ch08
with the setting
flags.DEFINE_string(
'video_name',
'gBR_sBM_c05_d04_mBR0_ch08',
'input video name to be visualized.')
flags.DEFINE_enum(
'mode', 'SMPL', ['2D', '3D', 'SMPL', 'SMPLMesh'],
'visualize 3D or 2D keypoints, or SMPL joints on image plane.')
gJB_sBM_c06_d07_mJB3_ch05
with the setting
flags.DEFINE_string(
'video_name',
'gJB_sBM_c06_d07_mJB3_ch05',
'input video name to be visualized.')
flags.DEFINE_enum(
'mode', 'SMPLMesh', ['2D', '3D', 'SMPL', 'SMPLMesh'],
'visualize 3D or 2D keypoints, or SMPL joints on image plane.')
I'm wondering if anyone else has similar results? Or did I make a mistake on the code running? Cause I found hundreds of videos like above.
The text was updated successfully, but these errors were encountered:
There are a few sequences in the dataset that are poorly reconstructed. So we provide a filter list through manual check. The three examples you posted here are all included in that filter list. Please check for the file ignore_list.txt, and the descriptions in the end of this page: https://google.github.io/aistplusplus_dataset/download.html
I'm very interested in this dataset so I did some experiments with SMPL backbone. But the result turns out quite surprising, so I further analyzed the dataset. My approach is to use run_vis.py to re-run unreasonable videos on my model. And here are my results:
with the setting
with the setting
with the setting
I'm wondering if anyone else has similar results? Or did I make a mistake on the code running? Cause I found hundreds of videos like above.
The text was updated successfully, but these errors were encountered: