Color Image Enhancement with a Human Visual System Based
Adaptive Filter
Presented by K. ANURAMA12S11D6502
Abstract
Proposed method New color image enhancement algorithm
- Based on human visual system adaptive filter• Dividing three major parts
– Adaptive adjustment
– Color restoration
– Unlike traditional color image enhancement algorithms
• Use of color space conversion – Much better visibility
• Better effectiveness in reducing halo and color distortion
Introduction
Image enhancement technology– Problem of many factors
• Limited dynamic range• Lighting influences
• Display device
– Not suitable to directly use gray image enhancement technologies for color images
Color image enhancement technologiesBased on human visual characteristics Retinex– Very good enhanced result
– Color distortion
– Complex of calculation
Li Tao and VijayanK. Asari– Robust color image enhancement algorithm
Use of Gaussian filter Inaccurate estimation
Color image enhancement technologies
– New bio-inspired color image enhancement algorithm Combination of retinex and Li Tao and VijayanK. Asari algorithm
Use of bilateral filter
• New algorithm– Consideration of color information
– Use of adaptive filter to get the background image
HALO EFFECT
Halo artifacts are due to the proximity of two areas of very different intensity.
For example, if a dim area is close to a bright window, the bright pixels can influence the processing of the dim area and can cause a black halo around the bright area. Moreover, local filtering tends to make pure black and pure white low contrast areas turn gray. These phenomena are illustrated in Fig. 1. The shadow on the face is a halo artifact due to the background window. The black t-shirt looks washed out due to the local filtering
Fig. 1. Example of halo artifacts and graying-out. The shadow on the face is a halo artifact due to the background window. The black t-shirt looks washed out due to the local filtering
Color Image Enhancement algorithm Proposed method
– Framework of color enhancement algorithm
Fig. 1. The Framework of the proposed color image enhancement algorithm.
•
Fig. 2. The Example of luminance image and background image: from up to down, the original image, luminance image and background image
Image enhancement processUsing proposed algorithm
Fig. 3. Enhanced results of using the proposed algorithm. The left are original, and the right are enhanced images
Comparison with other techniques
Compared to the traditional algorithms
Fig. 4. Illustrate the difference of using different algorithm: (a) the algorithm in [4]; (b) the algorithm in [5]; (c) Retinex; (d) proposed algorithm 11
Fig. 11. Top: Gamma-encoded image. Middle: Image treated with the adaptivefilter method. Bottom: Image treated with the fast bilateral filtering method.
Conclusion
Proposed method– New color image enhancement algorithms• Considering human visual properties• Improvement of visual qualities of enhanced images
– Adaptive filter considering color information– Utilizing color space conversion to get luminance
image
Top Related