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+ | =Artificial Neural Networks= | ||
This page and its subtopics discusses everything about Artificial Neural Networks. | This page and its subtopics discusses everything about Artificial Neural Networks. | ||
− | Lectures discussing Artificial Neural Networks: [[Lecture | + | Lectures discussing Artificial Neural Networks: [[Lecture_13_-_Kernel_function_for_SVMs_and_ANNs_introduction_Old_Kiwi|Lecture 13]] and [[Lecture_14_-_ANNs%2C_Non-parametric_Density_Estimation_(Parzen_Window)_Old_Kiwi|Lecture 14]] |
Relevant homework: [[Homework 2_Old Kiwi]] | Relevant homework: [[Homework 2_Old Kiwi]] | ||
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== Application of Neural Networks to Color Calibration == | == Application of Neural Networks to Color Calibration == | ||
The below is a link to a paper which employs Neural Network in calibrating scanner. | The below is a link to a paper which employs Neural Network in calibrating scanner. | ||
− | * [https://ritdml.rit.edu/dspace/bitstream/1850/3035/1/PAndersonArticle04-01-1992.pdf] | + | * [https://ritdml.rit.edu/dspace/bitstream/1850/3035/1/PAndersonArticle04-01-1992.pdf https://ritdml.rit.edu/dspace/bitstream/1850/3035/1/PAndersonArticle04-01-1992.pdf] |
Summary: The sanner calibrtion has largely two procedures, gray balancing and transfrom linear RGB data to device independent XYX data. The purpose of this paper is to improve the performance of transformation from RGB to XYZ. The traditional method to transfrom linear RGB to XYZ is to find 3x3 linear transform matrix by minimizing the perceptual error. The author argue that by using Neural Network more precise transform form linear RGB to XYZ can be achieved, as expected, since Neural Network provide more complex nonlinear transformation from input and output. He measuerd the transform error in perceptually uniform domain, and prove the strength of Neural Network in scanner calibration process. | Summary: The sanner calibrtion has largely two procedures, gray balancing and transfrom linear RGB data to device independent XYX data. The purpose of this paper is to improve the performance of transformation from RGB to XYZ. The traditional method to transfrom linear RGB to XYZ is to find 3x3 linear transform matrix by minimizing the perceptual error. The author argue that by using Neural Network more precise transform form linear RGB to XYZ can be achieved, as expected, since Neural Network provide more complex nonlinear transformation from input and output. He measuerd the transform error in perceptually uniform domain, and prove the strength of Neural Network in scanner calibration process. | ||
[[Category:ECE662]] | [[Category:ECE662]] |
Latest revision as of 17:24, 22 October 2010
Artificial Neural Networks
This page and its subtopics discusses everything about Artificial Neural Networks.
Lectures discussing Artificial Neural Networks: Lecture 13 and Lecture 14
Relevant homework: Homework 2_Old Kiwi
References
- In-depth Lecture Slides
- Neural Network on Wikipedia
- Special Issue on Advances in Neural Networks Research: IJCNN’07
- Artificial Neural Network on Wikipedia
- Neural Network Tutorial
- MATLAB Neural Network Toolbox
- Probabilistic Neural Network
- An Implementation of Neural Network: Back Propagation Algorithm
Application of Neural Networks to Color Calibration
The below is a link to a paper which employs Neural Network in calibrating scanner.
Summary: The sanner calibrtion has largely two procedures, gray balancing and transfrom linear RGB data to device independent XYX data. The purpose of this paper is to improve the performance of transformation from RGB to XYZ. The traditional method to transfrom linear RGB to XYZ is to find 3x3 linear transform matrix by minimizing the perceptual error. The author argue that by using Neural Network more precise transform form linear RGB to XYZ can be achieved, as expected, since Neural Network provide more complex nonlinear transformation from input and output. He measuerd the transform error in perceptually uniform domain, and prove the strength of Neural Network in scanner calibration process.