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The following table contains the requirements for cameras used by the queue detection tool:

Camera

  • Resolution: 720 х 576 (CIF4), 360 х 288 (CIF1)
to 720 х 576 (CIF4) pixels; lager images are scaled down to CIF4.
  • is also allowed to use. Increasing the resolution above CIF4 does not improve the operating quality of the recognition algorithm
  • Frames per second: 6 or more
  • Color: color or greyscale
.
  • No camera jitter is allowed
.

Illumination

:

  • Best recognition results are achieved under moderate illumination. If the scene is under- or over-illuminated, the recognition accuracy may drop down
.
  • Sharp changes in illumination may lead to improper operation of analytics
.

Scene and

viewing

camera angle

:

  • Vertically downward position of the camera is the best for the purpose.
 
  • The closer to vertical, the more accurate
counting.
  • the estimation
  • Camera FOV dimensions:
min. 3 x 3m (6 x 6
  • minimum 3x3 m (6x6 humans), optimal
4 x 4m (8 x 8x
  • 4x4 m (8x8 humans),
max. 8 x 8m (16 x 16
  • maximum 8x8 m (16x16 humans)
.
  • The background
must
  • should be primarily static and should not undergo sudden changes
.
  • Reflective surfaces and harsh shadows from moving objects can affect the quality of analytics
.Leafage, TV screens or any periodic object movement in the background may cause analytics glitches.
  • Analytics may not work correctly if there are periodic movements of the background objects in the camera FOV (leafage, TV screens, etc.)

Images of objects

within the scene:

  • Image quality: the image
must
  • should be clear
and sharp
  • , with no visible compression artifacts
.
  • Dimensions of a human in scene: bounding rectangle has to occupy from 0.
25
  • 25% to
10 percent
  • 10% of the frame area
.