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https://www.nexdata.ai/shujutang/static/image/index/datatang_tuxiang_default.webp
[]
13,259 Images – Luggage, Baby Carriage & Wheelchair Dataset in Surveillance Scenes
luggage detection dataset
stroller detection dataset
wheelchair detection dataset
surveillance object detection dataset
indoor outdoor surveillance data
multi-condition object detection dataset
annotated luggage stroller wheelchair images
AI object detection training data
pedestrian and object detection dataset
realistic surveillance scenes dataset
This dataset includes indoor and outdoor scenes. The data diversity includes different light conditions, different collecting environment, different types of luggage cases, different types of baby carriages, different types of wheelchairs. In terms of annotation,rectangular bounding boxes were adopted for luggage case, baby carriage and wheelchair. The data can be used for object detection, AI model training, and computer vision research in real-world surveillance scenarios.
This is a paid datasets for commercial use, research purpose and more. Licensed ready made datasets help jump-start AI projects.
![Specifications]()
Specifications
Data size
13,259 images, one image has only one object, one rectangular bounding box
Collecting environment
surveillance scenes
Data diversity
different light conditions, different collecting environment, different types of luggage cases, different types of baby carriages, different types of wheelchairs
Device
surveillance cameras with resolution of 1,920*1,080
Annotation content
rectangular bounding boxes of luggage case, baby carriage, wheelchair
Annotation accuracy
the annotation accuracy of rectangular bounding boxes is over 97%
![Sample]()
Sample
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