Image Quality Assessment of Computer-generated Images Based on Machine Learning and Soft Computing için kapak resmi
Image Quality Assessment of Computer-generated Images Based on Machine Learning and Soft Computing
Başlık:
Image Quality Assessment of Computer-generated Images Based on Machine Learning and Soft Computing
Yazar:
Bigand, André. author.
ISBN:
9783319735436
Edisyon:
1st ed. 2018.
Fiziksel Niteleme:
XIV, 88 p. 45 illus., 38 illus. in color. online resource.
Seri:
SpringerBriefs in Computer Science,
İçindekiler:
Introduction -- Monte-Carlo Methods for Image Synthesis -- Visual Impact of Rendering on Image Quality -- Full-reference Methods and Machine Learning -- No-reference Methods and Fuzzy Sets -- Reduced-reference Methods -- Conclusion.
Özet:
Image Quality Assessment is well-known for measuring the perceived image degradation of natural scene images but is still an emerging topic for computer-generated images. This book addresses this problem and presents recent advances based on soft computing. It is aimed at students, practitioners and researchers in the field of image processing and related areas such as computer graphics and visualization. In this book, we first clarify the differences between natural scene images and computer-generated images, and address the problem of Image Quality Assessment (IQA) by focusing on the visual perception of noise. Rather than using known perceptual models, we first investigate the use of soft computing approaches, classically used in Artificial Intelligence, as full-reference and reduced-reference metrics. Thus, by creating Learning Machines, such as SVMs and RVMs, we can assess the perceptual quality of a computer-generated image. We also investigate the use of interval-valued fuzzy sets as a no-reference metric. These approaches are treated both theoretically and practically, for the complete process of IQA. The learning step is performed using a database built from experiments with human users and the resulting models can be used for any image computed with a stochastic rendering algorithm. This can be useful for detecting the visual convergence of the different parts of an image during the rendering process, and thus to optimize the computation. These models can also be extended to other applications that handle complex models, in the fields of signal processing and image processing.