Personnel attribute recognition

By obtaining surveillance videos through front-end cameras, calibrating them through frames, and triggering attribute recognition when pedestrians enter the area, it can be used for various purposes such as crowd classification statistics or abnormal alarms. It can recognize 14 common attribute categories, including gender, age group, top with logo, top type, top color, bottom type, bottom color, body orientation, wearing masks, hats, wearing glasses, backpack type, hair length, and whether to hold items.

  • Strict selection algorithm
  • Human related
  • Large property management

Product Description

Algorithm details

Application Scenario (Major)Major Property
Sub-scenario
Applicable PlatformsSE5 Micro Server
Specifications and ChannelsSE5: 8/16
Maximum Channels16
Target ImageHuman Shape
Recommended Resolutions1080P
Camera Pixels2 million and above
Camera Installation Angle15°~30°
Camera Installation Height4 meters
NoteNA

Deployment mode