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SignIQ · curated sampleInteractive viewerEgocentricShort-horizon

SignIQ Egocentric Human — Fold Laundry (quick session)

Egocentric human capture (head-mounted camera + 150-D hand pose + IMU) · Egocentric human task footage for robot learning

Episode Summary

InstructionHuman fold laundry (egocentric capture, hands visible).

540
Frames
18.0s
Duration
30 Hz
Control
1
Cameras
190
State dim
190
Action dim
5
Subtasks
success
Outcome
CamerasEgocentric (head-mounted)
Modalitiesvideo × 1 (head-mounted, 1080p source) · 150-D hand pose · 40-D finger angles · 26-D gesture probabilities · 6-DoF IMU · task instruction
Format exportsLeRobot · MP4 + JSON · Parquet
LicenseDemo data licensed for inspection; production deliveries are SignIQ commercial.

QA Health

9of 10 checks pass
1 warn
  • Schema parsedPASS
  • Timestamps monotonicPASS
  • Video ↔ pose frame countPASS
  • No NaN/Inf in posePASS
  • Consent for model trainingPASS
  • Face blur / PII reviewPASS
Download health.json →

Camera previews

Schema preview

observation.state
shape [190]
  • [0]hand_joint_000
  • [1]hand_joint_001
  • [2]hand_joint_002
  • [3]hand_joint_003
  • [4]hand_joint_004
  • [5]hand_joint_005
  • …and 184 more
action
shape [190]
kind:human pose (mirrors state for export consistency)
control_hz:30 Hz

Interactive inspector

Synchronized cameras, action vs. observed state, joint-space trajectory, and dataset health — driven by the live bundle.

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Why look at this

Compact 18-second laundry-folding clip — useful for quick subtask-boundary tests and short-horizon affordance experiments where the long-form sample would be too dense.

Best for

  • Short-horizon affordance learning
  • Subtask boundary detection
  • Hand-pose pretraining

Capture & license

CaptureSignIQ curated sample

LicenseCommercial — sample for inspection (consent + face blur)

See full dataset details →

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