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TrajReasoner

TrajReasoner is a visual navigation dataset for fine-tuning vision-language models to reason about terrain traversability and output robot trajectories directly from camera observations.

Each example contains an RGB camera frame, projected future trajectory supervision, and robot pose metadata. The trajectory masks provide visual supervision, while uv_center_json provides the projected trajectory centerline as image coordinates.

Dataset Structure

Each row represents one processed camera frame.

Column Type Description
id string Stable row id in the format <bag>_<frame_idx>
bag string Source ROS bag stem
frame_idx int32 Frame index within the processed bag
image Image RGB camera frame resized to 320x240
trajectory_mask Image Binary filled trajectory ribbon mask
centerline_mask Image Binary center-line trajectory mask
depth_image Image Normalized depth visualization when available
position list[float32] Robot world-frame XY position
yaw float32 Robot heading in radians
uv_center_json string JSON-encoded projected center trajectory points

Usage

from datasets import load_dataset

ds = load_dataset("gianluca-capezzuto/trajreasoner", split="train")
sample = ds[0]

image = sample["image"]
trajectory_points = sample["uv_center_json"]
trajectory_mask = sample["trajectory_mask"]

Notes

  • RGB frames and masks are stored at 320x240.
  • Mask images use 255 for trajectory pixels and 0 for background.
  • Invalid or missing depth pixels are black in depth_image.
  • uv_center_json may be an empty list for frames with no valid projected future trajectory.
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