Datasets:
InterPet4D (v1)
Authors: Yichen Peng*, Jyun-Ting Song*, Chen-Chieh Liao*, Kris Kitani, Hideki Koike, Erwin Wu *Equal contribution.
InterPet4D is a multimodal, ego-centric dataset of natural human–pet (dog) interactions. Each clip provides time-synchronized audio, SMPL human body motion, MANO hand motion, pet skeletal motion, and SMAL pet body parameters, enabling research on cross-species interaction, multimodal motion generation, audio-conditioned animation, and animal behavior understanding.
Highlights
- 113 interaction sessions across 13 dogs (
dog00–dog12) and ~23 participants (p01–p23). - 227 ego-centric clips (~17–20 s each) captured with head-mounted glasses (Project Aria–style).
- Time-aligned modalities per clip: raw audio, MERT audio embeddings, SMPL body, MANO hands, pet skeleton, and SMAL pet body fits.
Dataset Structure
interpet4d_ver1/
├── interpet_audio/ # Raw audio (.mp3)
├── interpet_mert/ # MERT pre-extracted audio embeddings (.npy)
├── smpl_npy/ # SMPL human body parameters (.npy, dict)
├── mano_npy/ # MANO left/right hand parameters (.npy, dict)
├── pet_npy/ # Pet (dog) 3D keypoint trajectories (.npy)
└── smal_npy/ # SMAL pet body fits (.npz, stacked per-frame)
File Naming Convention
interpet_dog{DD}_p{PP}_take{TT}_ego_{NNN}.{mp3|npy}
│ │ │ └── clip index within the take
│ │ └────────── take number
│ └────────────────── participant ID
└───────────────────────── dog ID
The basename (without extension) is the clip ID, shared across all directories — use it as the join key.
Modality Specifications
| Folder | Format | Shape / Schema | Notes |
|---|---|---|---|
interpet_audio/ |
MP3 | 48 kHz, stereo | Ego-microphone audio. |
interpet_mert/ |
.npy |
(T_a, 1024) float32 |
MERT features at ~75 Hz. |
smpl_npy/ |
.npy (dict) |
see below | Per-subject SMPL parameters. |
mano_npy/ |
.npy (dict) |
see below | {'left': {...}, 'right': {...}}. |
pet_npy/ |
.npy |
(T_p, 20, 4) float32 |
20-joint pet skeleton; last axis is (x, y, z, score). |
smal_npy/ |
.npz |
see below | SMAL pet body fits, per-frame parameters stacked over time. |
SMPL dict schema (key = subject id, e.g. aria01):
{
'global_orient': (T, 3) # axis-angle root orientation
'transl': (T, 3) # root translation (meters)
'body_pose': (T, 69) # 23 joints × 3 (axis-angle)
'betas': (T, 10) # SMPL shape coefficients
'joints': (T, 45, 3) # 3D joint positions
'vertices': (T, 6890, 3) # SMPL mesh vertices
'epoch_loss': (T,) # optimization residual
}
MANO dict schema ('left' / 'right', each):
{
'joints': (T, 1, 21, 3) # 21 hand keypoints (3D)
'pose': (T, 16, 3, 3) # rotation matrices for 16 joints
'transl': (T, 3) # wrist translation
}
SMAL (smal_npy/) schema — per-clip .npz with all frames stacked:
{
'pose_rotmat': (T, 35, 3, 3) # SMAL joint rotations (rotation matrices)
'betas': (T, 30) # SMAL shape coefficients
'betas_limbs': (T, 7) # limb-specific shape coefficients
'R_world': (T, 3, 3) # global rotation in world frame
't_world': (T, 3) # global translation in world frame (meters)
's_world': (T,) # global scale
'kp_world': (T, 24, 3) # 24 keypoints in world coordinates
'kp_weight': (T, 24) # per-keypoint confidence weight
'frame_idx': (T,) int32 # original frame index (sparse / non-contiguous)
}
SMAL fits cover 226 of 227 clips (one clip lacks fits). Frame indices in
frame_idxare not necessarily contiguous — use them to align with the raw video frame rate.
Note on temporal alignment. All modalities are aligned by clip ID. Body / hand / pet motion are sampled at the same frame rate
T; MERT features are at a higher rateT_a. Resample with the clip duration when fusing.
Loading Example
import numpy as np
import librosa
clip_id = "interpet_dog01_p01_take01_ego_001"
audio, sr = librosa.load(f"interpet_audio/{clip_id}.mp3", sr=None)
mert = np.load(f"interpet_mert/{clip_id}.npy") # (T_a, 1024)
pet = np.load(f"pet_npy/{clip_id}.npy") # (T, 20, 4)
mano = np.load(f"mano_npy/{clip_id}.npy", allow_pickle=True).item()
smpl = np.load(f"smpl_npy/{clip_id}.npy", allow_pickle=True).item()
smal = np.load(f"smal_npy/{clip_id}.npz") # dict-like
print(audio.shape, sr)
print(smpl['aria01']['body_pose'].shape)
print(mano['right']['joints'].shape)
print(smal['pose_rotmat'].shape, smal['frame_idx'][:5])
Or via the datasets library:
from datasets import load_dataset
ds = load_dataset("<your-username>/interpet4d_ver1")
Release Plan
The current smal_npy/ contains raw SMAL fits directly from our automated pipeline. A refined / cleaned-up version of the SMAL parameters will be released in a future update.
Intended Uses
- Cross-species (human ↔ dog) interaction modeling
- Audio-conditioned motion synthesis / vocal-to-motion translation
- Multimodal representation learning for animal behavior
- 4D scene understanding from ego-centric recordings
Ethical Considerations
- All participants provided informed consent for data release.
- No personally identifying information (faces / voices of bystanders) is included.
- Pet welfare: all interactions were supervised and non-coercive.
License
Released under CC BY-NC 4.0 — research and non-commercial use only. Commercial use requires explicit permission from the authors.
Citation
If you use InterPet4D in your research, please cite:
@dataset{interpet4d_2026,
title = {InterPet4D: A Multimodal Ego-Centric Dataset of Human--Pet Interactions},
author = {Peng, Yichen and Song, Jyun-Ting and Liao, Chen-Chieh and Kitani, Kris and Koike, Hideki and Wu, Erwin},
year = {2026},
url = {https://huggingface.co/datasets/ohicarip/interpet4d},
note = {Version 1}
}
Changelog
- v1 (2026-06) — Initial release: 227 clips, 13 dogs, ~23 participants, four time-aligned modalities.
Contact
For questions or commercial-use inquiries, please open a discussion on the Hugging Face repo or contact the authors directly.
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