Advanced Image Enhancement Techniques for Improved Visual Quality
- Version
- Download 15
- File Size 248.63 KB
- File Count 1
- Create Date 11 March 2025
- Last Updated 11 March 2025
Advanced Image Enhancement Techniques for Improved Visual Quality
Authors:
Harini S, Manikandaprabhu T
ABSTRACT
Image enhancement improves image quality for better visualization in various fields, including medical imaging, satellite imagery, and digital photography. This study explores various enhancement techniques, including spatial and frequency domain methods, histogram equalization, contrast stretching, noise removal, and deep learning approaches. The paper provides a detailed analysis of each technique, their advantages, limitations, and applications in different fields.
The integration of artificial intelligence (AI) and deep learning is reshaping the future of image enhancement, making it more adaptive and efficient. Additionally, the study highlights key developments and the role of computational methods in advancing image enhancement, ensuring improved visual representation and automated processing across multiple industries. The growing demand for high-resolution and high-fidelity imaging, along with the rapid evolution of computational technologies, is making image enhancement a fundamental aspect of modern digital processing.
KEYWORDS
Image Enhancement, Histogram Equalization, Contrast Stretching, Noise Removal, Deep Learning, Digital Image Processing, Frequency Domain, AI in Imaging, Computational Enhancement.