Comments (3)
14parts training data need around 160G
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you can use 1 parts for a demo
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Thanks for your information!
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Related Issues (20)
- classeme features HOT 4
- Classification stage and grounding stage HOT 2
- Negative coordinates in the proposal bounding boxes list HOT 1
- About classme feature HOT 5
- DEBUG model HOT 3
- About inference results HOT 2
- About the pre-prepared cache data for VidOR HOT 5
- About the pre-prepared cache data for VidOR HOT 1
- About the prepared data HOT 13
- The generation of .npy in prepared_data folder HOT 9
- About the prepared data for Vidor HOT 3
- Tracklet Data of VidVRD HOT 2
- Mis-matching between Trajectory and gt_graph HOT 5
- Box shifting: some boxes may appear as background after tracking (when using dataloader_vidor.py)
- tracklets with features link expired HOT 4
- 请问,可以提供一下用于提取I3D特征的I3D模型吗 HOT 2
- Make the qualitative results HOT 4
- Pre-prepared cache data for VidOR HOT 3
- 轨迹提取的模型和细节 HOT 2
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