Dataset Viewer
Auto-converted to Parquet Duplicate
text
stringlengths
33
133
Unix Timestamp, Local Time yyyy-mm-dd hh:mm:ss, Activity
1771620610027, 2026-02-20 12:50:10, start walking
1771624875555, 2026-02-20 14:01:15, End walking
1771624914108, 2026-02-20 14:01:54, Start studying
1771629570213, 2026-02-20 15:19:30, End studying
1771632475571, 2026-02-20 16:07:55, Start eating
1771636613769, 2026-02-20 17:16:53, end eating
1771649712363, 2026-02-20 20:55:12, Start watching TV
1771654475168, 2026-02-20 22:14:35, End watching TV
1771803588297, 2026-02-22 15:39:48, Start sleeping
1771808614450, 2026-02-22 17:03:34, End sleeping
Unix Timestamp, Local Time yyyy-mm-dd hh:mm:ss, Activity
1773964964930, 2026-03-19 17:02:44, start walking
1773967745069, 2026-03-19 17:49:05, working on computer: start
1773972874705, 2026-03-19 19:14:34, computer work: end
1773973071252, 2026-03-19 19:17:51, walking: start
1773975146865, 2026-03-19 19:52:26, walk ended
1773975316137, 2026-03-19 19:55:16, was in a car prior to this
1773975471494, 2026-03-19 19:57:51, eating: start
1774031650110, 2026-03-20 11:34:10, walking: start
1774032069991, 2026-03-20 11:41:09, walking: end
1774032680721, 2026-03-20 11:51:20, drinking coffee: start
1774033758301, 2026-03-20 12:09:18, scooter: start
1774034032263, 2026-03-20 12:13:52, scooter: end
1774034210043, 2026-03-20 12:16:50, in the car: start
1774034495217, 2026-03-20 12:21:35, riding in car:end
1774050601146, 2026-03-20 16:50:01, scooter: start
1774051093405, 2026-03-20 16:58:13, scooter: end
1774051301256, 2026-03-20 17:01:41, cooking: start
1774118417098, 2026-03-21 11:40:17, driving: start
1774119091592, 2026-03-21 11:51:31, driving: end
1774121692471, 2026-03-21 12:34:52, driving: start
1774122670188, 2026-03-21 12:51:10, walk: start
1774136536897, 2026-03-21 16:42:16, throwing frisbee
Unix Timestamp, Local Time yyyy-mm-dd hh:mm:ss, Activity
1775868029338, 2026-04-10 17:40:29, sitting
1775868045982, 2026-04-10 17:40:45, talking
1775868790797, 2026-04-10 17:53:10, end talking
1775868945044, 2026-04-10 17:55:45, end sitting
1775869232672, 2026-04-10 18:00:32, sitting
1775869804952, 2026-04-10 18:10:04, end sitting
1775870060586, 2026-04-10 18:14:20, walking and talking
1775872507827, 2026-04-10 18:55:07, end walking
1775872857104, 2026-04-10 19:00:57, sitting and eating
1775873376172, 2026-04-10 19:09:36, end eating
1775875140724, 2026-04-10 19:39:00, chores
1775925675841, 2026-04-11 09:41:15, driving
1775928369899, 2026-04-11 10:26:09, end driving
1775931920099, 2026-04-11 11:25:20, walking
1775933570386, 2026-04-11 11:52:50, walking
1775934072347, 2026-04-11 12:01:12, end walking
1775934120497, 2026-04-11 12:02:00, sitting
1775937364918, 2026-04-11 12:56:04, end sitting 5 min ago start walking
1775937376692, 2026-04-11 12:56:16, end walking
1775937383769, 2026-04-11 12:56:23, sitting
1775937943559, 2026-04-11 13:05:43, eating hot burgers
1775938508681, 2026-04-11 13:15:08, end eating
1775939900786, 2026-04-11 13:38:20, end eating
1775941644916, 2026-04-11 14:07:24, sitting
Unix Timestamp, Local Time yyyy-mm-dd hh:mm:ss, Activity
1774378766313, 2026-03-24 11:59:26, start walking
1774378781003, 2026-03-24 11:59:41, end walking
1774379143975, 2026-03-24 12:05:43, Start walking
1774381035526, 2026-03-24 12:37:15, End walking
1774382220763, 2026-03-24 12:57:00, Start eating cold kimchi and drinking coke
1774383524850, 2026-03-24 13:18:44, End eating cold
1774383553200, 2026-03-24 13:19:13, Start Eating Buldak
1774384729140, 2026-03-24 13:38:49, End eating buldak
1774388270575, 2026-03-24 14:37:50, Start eating blueberry
1774388675513, 2026-03-24 14:44:35, End eating blueberry
1774407198514, 2026-03-24 19:53:18, Start doing housework
1774408145853, 2026-03-24 20:09:05, End housework
1774408173913, 2026-03-24 20:09:33, Start chatting
1774411030432, 2026-03-24 20:57:10, End chatting
1774415078834, 2026-03-24 22:04:38, Start walking
1774417444228, 2026-03-24 22:44:04, End walking
1774417732229, 2026-03-24 22:48:52, Start resistance training
1774420209334, 2026-03-24 23:30:09, End training
1774477398346, 2026-03-25 15:23:18, Start Browsing Rednote
1774483691062, 2026-03-25 17:08:11, End browsing
1774484110840, 2026-03-25 17:15:10, Start eating cold kimchi and drinking cold coke
1774485207026, 2026-03-25 17:33:27, End eating cold
1774485219258, 2026-03-25 17:33:39, Start eating hot noodles
1774487194615, 2026-03-25 18:06:34, End eating hot
1774488948589, 2026-03-25 18:35:48, Start doing housework
1774489371856, 2026-03-25 18:42:51, End housework
1774495508145, 2026-03-25 20:25:08, Start chatting
1774499709267, 2026-03-25 21:35:09, End chatting
1774501984914, 2026-03-25 22:13:04, Start walking
1774504851648, 2026-03-25 23:00:51, End walking
Unix Timestamp, Local Time yyyy-mm-dd hh:mm:ss, Activity
1774380595137, 2026-03-24 12:29:55, start walking
1774380605651, 2026-03-24 12:30:05, end
1774382003540, 2026-03-24 12:53:23, start eating
1774383165684, 2026-03-24 13:12:45, eating finished
1774386968639, 2026-03-24 14:16:08, start talking
1774389367263, 2026-03-24 14:56:07, end talking
1774389386055, 2026-03-24 14:56:26, start working/sitting
1774391195325, 2026-03-24 15:26:35, end working/sitting
1774391210489, 2026-03-24 15:26:50, start walking working
End of preview. Expand in Data Studio

Multisite PPG Dataset

A multisite photoplethysmography (PPG) dataset: long-duration recordings from four body locations, synchronized activity logs, and ECG-derived heart-rate ground truth. It supports PPG-based HR estimation, signal-quality assessment, motion-artifact handling, and cross-site generalization research.

For data preprocessing and baseline training code, see our GitHub repository: anonymous-ppg/wearable-ppg-dataset.

Submission note: This is the anonymized submission release of the dataset.


At a glance

Approx. size ~18.6 GB
Participants 20 (P1P20)
Setting Multi-day, free-living
Wearable sites Earring, Necklace, Ring, Watch
Wearable modalities Green PPG, IR PPG, 3-axis accelerometer, skin temperature
References Polar H10 ECG + 3-axis accelerometer
HR ground truth From synchronized Polar ECG (Pan–Tompkins + additional cleaning)

Sampling rates

Source Signals Rate
Wearable PPG, accelerometer, temperature 100 Hz
Polar ECG 130 Hz
Polar Accelerometer 25 Hz

Repository layout

Three main components ship in this repo:

Path Role
raw_data/ Raw wearable streams, Polar references, activity logs
ppg_windowed_data/ 8 s windows aligned with ECG-derived HR labels
sample_data/ Tiny subset for format checks / tutorials

Top-level tree:

multisite-ppg-submission/
├── raw_data/
├── ppg_windowed_data/
├── sample_data/
├── .gitattributes
└── croissant.json          # ML Croissant metadata

raw_data/

One folder per participant: wearable files at four sites, Polar references, and an activity log.

Wearable: P<N>_<Site>_raw.npz

<Site> ∈ {Earring, Necklace, Ring, Watch}.

Each file holds timestamped green + IR PPG, 3-axis accelerometer, skin temperature, and alignment metadata for Polar.

Polar references

File Content
P<N>_polar_ecg_raw.npz Polar H10 ECG
P<N>_polar_accl_raw.npz Polar H10 3-axis accelerometer

Activity log

P<N>_activity_log.txt — timestamped labels as start <label> / end <label> pairs.


ppg_windowed_data/

Pre-windowed segments per participant and site, aligned with ECG-derived HR.

ppg_windowed_data/
├── P1/
│   ├── alignment_windows_P1_Earring.npz
│   ├── alignment_windows_P1_Necklace.npz
│   ├── alignment_windows_P1_Ring.npz
│   └── alignment_windows_P1_Watch.npz
├── P2/
│   └── ...
└── P<N>/
    └── ...

Each alignment_windows_*.npz includes: 8 s wearable PPG windows, motion channels, aligned ECG reference, ECG valid length, and HR labels.

Parameter Value
Window length 8 s
Stride 1 s

sample_data/

Same layout as ppg_windowed_data/, but small enough for quick inspection without pulling the full release. Details in its own readme.


Quick start

Install

pip install huggingface_hub numpy

Download dataset

Sample only (~1.4 GB):

from huggingface_hub import snapshot_download
 
snapshot_download(
    repo_id="anonymous-ppg-dataset/multisite-ppg-submission",
    repo_type="dataset",
    local_dir="multisite-ppg-submission",
    allow_patterns="sample_data/*",
)

Full dataset (~18.6 GB):

from huggingface_hub import snapshot_download
 
snapshot_download(
    repo_id="anonymous-ppg-dataset/multisite-ppg-submission",
    repo_type="dataset",
    local_dir="multisite-ppg-submission",
)

Loading in Python

from pathlib import Path
import numpy as np

# Example file:
# multisite-ppg-submission/ppg_windowed_data/P1/alignment_windows_P1_Earring.npz
npz_path = Path("multisite-ppg-submission/ppg_windowed_data/P1/alignment_windows_P1_Earring.npz")

with np.load(npz_path) as z:  # allow_pickle=False by default
    ppg_green = z["ppg_green"]      # (N, T)
    ppg_ir = z["ppg_ir"]            # (N, T)
    hr_gt = z["hr_gt"]              # (N,)
    t0_ms = z["t0_ms"]              # (N,)
    t1_ms = z["t1_ms"]              # (N,)
    ppg_fs = float(z["ppg_fs"])     # scalar, typically 100.0
    ecg = z["ecg"]                  # (N, Lmax), zero-padded
    ecg_valid_len = z["ecg_valid_len"]  # (N,), valid ECG samples per window
    accel_x = z["accel_x"]          # (N, T)
    accel_y = z["accel_y"]          # (N, T)
    accel_z = z["accel_z"]          # (N, T)

print("ppg_green:", ppg_green.shape, "hr_gt:", hr_gt.shape, "ppg_fs:", ppg_fs)

# Example: recover valid (unpadded) ECG for one window
i = 0
ecg_i = ecg[i, : int(ecg_valid_len[i])]
  • Use ppg_green or ppg_ir as model input windows.
  • Use hr_gt as the heart-rate label aligned to each window.
  • Use ecg_valid_len to remove right-side zero padding from ecg.

Intended uses

  • PPG-based heart-rate estimation under motion
  • Signal-quality assessment and artifact detection
  • Cross-site generalization and multisite wearable modeling
  • Benchmarking preprocessing and representation learning on biosignals

Limitations

  • Free-living recordings: not strictly gap-free continuous sessions.
  • Motion artifacts and low-quality segments occur naturally.
  • Activity labels are user-logged and sparse, not exhaustive.
  • Not validated for clinical decision support.

Ethics and anonymization

Participant IDs are replaced with codes (P1P20). This release does not include personally identifying information.


License

Released under CC BY-NC 4.0 (Attribution–NonCommercial).

Allowed: non-commercial research and education; derivative preprocessing with attribution.

Not allowed without separate permission: commercial use; re-identification attempts; clinical deployment without independent validation.

Full legal text: Creative Commons BY-NC 4.0.


Extra metadata

Machine-readable dataset description: see croissant.json at the repository root.


Downloads last month
165