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Context Enhancement of Nighttime Surveillance by Image Fusion

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Context Enhancement of Nighttime Surveillance by Image Fusion Yinghao Cai Kaiqi Huang, Tieniu Tan and Yunhong Wang Center for Biometrics Research and Testing – PowerPoint PPT presentation

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Title: Context Enhancement of Nighttime Surveillance by Image Fusion


1
Context Enhancement of Nighttime Surveillance by
Image Fusion
Yinghao Cai Kaiqi Huang, Tieniu Tan and Yunhong
Wang
Center for Biometrics Research and
Testing National Laboratory of Pattern
Recognition Institute of Automation, Chinese
Academy of Sciences 2006-8-21
2
Outline
  • Motivation
  • Proposed Method
  • Conclusions

3
(a) Nighttime Image
(c) Result of context enhancement
(b) Daytime background
4
Motivation
  • Few work has been done on nighttime surveillance.
  • Difficulties
  • Low contrast
  • Low signal to noise ratio
  • Limited environmental information( context
    information)

5
Solution
  • The camera is fixed.
  • Capture scenes of day and night at the same
    viewpoint.
  • Make use of the high quality background of the
    day to help enhance the context of nighttime
    images.

6
Questions
  • What information should be preserved in the fused
    image?
  • Moving objects
  • Illumination effects
  • Daytime background

Moving objects and illumination effects preserve
the fidelity of the important information of the
nighttime video
7
Framework
Nighttime image
Enhanced image
Nighttime image
Final image
Illumination segmentation
Daytime background
8
Enhancement of nighttime video
  • A tone mapping function is employed to nighttime
    video enhancement Bennett, 2005.

Where is the pixel of the original nighttime
video, is the value of the enhanced video,
is a parameter.
9
Comparison with Gamma Correction
(a) Original video
(b) By Bennett, 2005 s method
(c) By Gamma correction
10
Motion Detection
  • Gaussian mixture models Stauffer, 99.
  • Real time motion detection.
  • Robust to variations in lighting, moving scene
    clutter, multiple moving objects.

11
(b) Enhanced video
(a) Original nighttime video
(c) Motion detection of original video
(d) Motion detection of enhanced video
C. Stauffer and W.E.L.Grimson, adaptive
background mixture models for real-time tracking
, CVPR 99
12
Estimation of illumination characteristics
  • The image I can be represented by the product of
    reflectance of
  • the scene R, and illumination coming from the
    light source L.
  • In Retinex theory, the illumination can be
    considered
  • as the low frequency of image.
  • In this paper, we represent the illumination
    characteristics of the
  • nighttime image as the smoothed version of the
    original image.


Reflectance
Image
Illumination
13
Image fusion
  • Where F is the final image, N is the nighttime
    image, D is the daytime background. W is the
    weight

Where M is the result of motion detection, L
is illumination characteristic. They are both in
the range 0,1.
14
Experimental Results
(b) Result of context enhancement
(a) Original nighttime image
15
Experimental Results
(a) Original nighttime video
(b) Result of context enhancement
16
Comparison with related work
Li , 2005s method
Our method
17
Conclusions
  • Simple but effective.
  • Provides a real time and robust solution to
    front-end image pre-processing in nighttime
    surveillance.
  • The resultant image contains a more accurate and
    comprehensive description of the scene which is
    more useful for human visual and machine
    perception, especially in surveillance.

18
Thank you -)
yhcai_at_nlpr.ia.ac.cn
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