Super-Resolution Imaging (Digital Imaging and Computer Vision) - Hardcover

Book 3 of 11: Digital Imaging and Computer Vision
 
9781439819302: Super-Resolution Imaging (Digital Imaging and Computer Vision)

Synopsis

With the exponential increase in computing power and broad proliferation of digital cameras, super-resolution imaging is poised to become the next "killer app." The growing interest in this technology has manifested itself in an explosion of literature on the subject. Super-Resolution Imaging consolidates key recent research contributions from eminent scholars and practitioners in this area and serves as a starting point for exploration into the state of the art in the field. It describes the latest in both theoretical and practical aspects of direct relevance to academia and industry, providing a base of understanding for future progress.

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Recent advances in camera sensor technology have led to an increasingly larger number of pixels being crammed into ever-smaller spaces. This has resulted in an overall decline in the visual quality of recorded content, necessitating improvement of images through the use of post-processing. Providing a snapshot of the cutting edge in super-resolution imaging, this book focuses on methods and techniques to improve images and video beyond the capabilities of the sensors that acquired them. It covers:

  • History and future directions of super-resolution imaging
  • Locally adaptive processing methods versus globally optimal methods
  • Modern techniques for motion estimation
  • How to integrate robustness
  • Bayesian statistical approaches
  • Learning-based methods
  • Applications in remote sensing and medicine
  • Practical implementations and commercial products based on super-resolution

The book concludes by concentrating on multidisciplinary applications of super-resolution for a variety of fields. It covers a wide range of super-resolution imaging implementation techniques, including variational, feature-based, multi-channel, learning-based, locally adaptive, and nonparametric methods. This versatile book can be used as the basis for short courses for engineers and scientists, or as part of graduate-level courses in image processing.

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About the Author

Peyman Milanfar is Professor of Electrical Engineering at the University of California, Santa Cruz. He received a B.S. degree in Electrical Engineering/Mathematics from the University of California, Berkeley, and a Ph.D. degree in Electrical Engineering from the Massachusetts Institute of Technology. Prior to coming to UCSC, he was at SRI (formerly Stanford Research Institute) and a Consulting Professor of computer science at Stanford. In 2005 he founded MotionDSP Inc., to bring state-of-art video enhancement technology to consumer and forensic markets. His technical expertise are in statistical signal, image and video processing, and computational vision. He is a Fellow of the IEEE, for contributions to inverse problems and super-resolution in imaging.

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