A Region-based Histogram and Fusion Technique for Enhancing Backlit Images for Cell Phone Applications
Abstract
Many cell phone cameras perform poorly in backlighting situations due to
low dynamic range, which then leads to the creation of low-quality pictures
known as backlit images. Conventional image enhancement algorithms are not
well suited to improve the quality of backlit images. Over-saturation or a loss
of contrast are typical outcomes when these methods are applied. In this thesis,
a novel image enhancement algorithm is presented for improving the visual
perception of a single backlit image. The algorithm uses a region-based
histogram specification scheme in combination with the discrete wavelet
transform image fusion to correct exposure disparities between foreground and
background scenes. Computer simulations in MATLAB R2018a and on a
dataset of 162 backlit images revealed that the proposed algorithm significantly
improves the backlit image's visual perception without distorting colours or
adding artefacts. The Peak Signal-to-Noise Ratio, Structural Similarity Index
Measure, and Naturalness Image Quality Evaluator metrics objectively
validated these results. The algorithm produced PSNR values ranging from 19
dB to 30 dB for images with low backlit degradation while retaining more than
(60-70) % structural similarity to the inputs. Lower PSNR and SSIM values
were consistent with severely degraded images. These findings agreed with the
outcomes of the subjective evaluations. However, multiple iterations of the
proposed algorithm increased the PSNR quality by up to 12 dB after the first
three iterations. By comparison, the proposed algorithm significantly
outperformed existing image enhancement techniques such as Histogram
Equalization, Multiscale Retinex, and Low-light Image Enhancement via
Illumination Map Estimation.
Publisher
University of Nairobi
Rights
Attribution-NonCommercial-NoDerivs 3.0 United StatesUsage Rights
http://creativecommons.org/licenses/by-nc-nd/3.0/us/Collections
- Faculty of Agriculture [225]
The following license files are associated with this item: