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58,255 Images Object Detection Data in Construction Site Scenes
Multiple devices
Multiple lighting conditions
Multiple scenes
Multiple collection time periods
Safety helmet
Reflective vest
Human body detection
58,255 Images Object Detection Data in Construction Site Scenes. The collection scenes include indoor and outdoor scenes. The data includes Asians. The data includes multiple devices, multiple lighting conditions, multiple scenes and multiple collection time periods. The data can be used for tasks such as safety helmet, reflective vest and human body detection.
This is a paid datasets for commercial use, research purpose and more. Licensed ready made datasets help jump-start AI projects.
Specifications
Data size
58,255 images, 605,645 bounding boxes
Race distribution
Asians
Collecting environment
2,762 images of indoor scenes, 55,493 images of outdoor scenes
Collecting time
57,811 images of day, 444 images of night
Data diversity
multiple devices, multiple lighting conditions, multiple scenes and multiple collection time periods
Device
cellphone, surveillance camera
Collecting angle
looking down angle
Data format
the image data format is .jpg, the annotation file format is .json
Annotation content
rectangular bounding boxes of human body, safety helmets and other hats, safety vests
Accuracy
the accuracy of rectangular bounding boxes is not less than 97%
Sample
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