The dataset viewer is not available because its heuristics could not detect any supported data files. You can try uploading some data files, or configuring the data files location manually.

YAML Metadata Warning: empty or missing yaml metadata in repo card (https://huggingface.co/docs/hub/datasets-cards)

W-CODA2024 Track 2 Dataset

Dataset Description

This dataset contains auxiliary data files for the W-CODA (Multimodal Perception and Comprehension of Corner Cases in Autonomous Driving) Track 2 workshop at ECCV 2024. The files provide metadata about the nuScenes validation set for evaluating video generation and detection/segmentation results.

Data Files

  1. nuscenes_infos_temporal_val_3keyframes.pkl

    • Contains information about key frames from 150 scenes in the nuScenes validation set.
    • Each scene has 3 key frames extracted from the first 16 frames.
    • Used for evaluating object detection and segmentation performance on the key frames.
    • Format: Python pickle file, load with mmcv.load().
  2. nuscenes_infos_temporal_val_12hz.pkl

    • Contains metadata for 150 scenes in the nuScenes validation set.
    • Provides the first 16 frames (at 12Hz) for each scene.
    • Paths to real video frames, used to calculate Fréchet Video Distance (FVD) between generated and real videos.
    • Format: Python pickle file, load with mmcv.load().
data = mmcv.load("./data/nuscenes/nuscenes_infos_temporal_val_3keyframes.pkl")
print(data.keys())
# dict_keys(['infos', 'metadata'])

Dataset Structure

The loaded pickle files contain a list of dictionaries, one per frame, with 'scene_token', 'frame_idx', 'gt_boxes', 'gt_names', 'cams', etc. Their meanings are consistent with the original nus annotations.

Download

Download the files from Hugging Face:

Downloads last month
1