SOMPT22
Surveillance Oriented Multi-Pedestrian Tracking Dataset (SOMPT22)
ImagesTrackingVideosCreative Commons Attribution-NonCommercial-ShareAlike 4.0 International (CC BY-NC-SA 4.0)Introduced 2022-08-04
SOMPT22 is a multi-object tracking (MOT) benchmark focused on surveillance-style pedestrian tracking.
- 22 long video sequences (static pole-mounted cameras, 6 – 8 m height)
- ~51 k annotated frames with bounding boxes + unique track IDs
- Outdoor scenes with illumination changes, partial occlusions and appearance similarity
- Single class: person
- Split files ready for training/validation and standard MOT evaluation tools
SOMPT22 aims to complement generic MOTChallenge-style datasets by stressing long-term ID maintenance under sparse-to-medium crowd density instead of dense, short clips.
Homepage → https://sompt22.github.io
Download → Google Drive link in the homepage
Citation →
@misc{simsek2022sompt22,
author = {Simsek, Fatih Emre and Cigla, Cevahir and Kayabol, Koray},
title = {SOMPT22: A Surveillance Oriented Multi-Pedestrian Tracking Dataset},
year = {2022},
eprint = {2208.02580},
archivePrefix = {arXiv},
primaryClass = {cs.CV}
}