Dr. Peter Bajorski
at Rochester Institute of Technology
SPIE Involvement:
Author | Instructor
Publications (17)

Proceedings Article | 27 March 2018 Paper
Peter Bajorski, Lynne Irwin
Proceedings Volume 10599, 105992D (2018) https://doi.org/10.1117/12.2296762
KEYWORDS: Nondestructive evaluation, Sensors, Calibration, Statistical analysis, Data modeling, Data analysis, Measurement devices, Statistical modeling, Error analysis, Precision calibration

Proceedings Article | 17 May 2016 Paper
Grant Anderson, Jan van Aardt, Peter Bajorski, Justine Vanden Heuvel
Proceedings Volume 9866, 98660H (2016) https://doi.org/10.1117/12.2227720
KEYWORDS: Nitrogen, Potassium, Magnesium, Zinc, Boron, Spectral resolution, Visible radiation, Near infrared, Phosphorus, Reflectivity

SPIE Press Book | 25 October 2011

Proceedings Article | 20 May 2011 Paper
Proceedings Volume 8048, 804802 (2011) https://doi.org/10.1117/12.881447
KEYWORDS: Sensors, Target detection, Image segmentation, Lawrencium, Composites, Image fusion, Hyperspectral imaging, Differential equations, Solids, Taxonomy

SPIE Journal Paper | 1 January 2010
JEI, Vol. 19, Issue 01, 011013, (January 2010) https://doi.org/10.1117/12.10.1117/1.3271167
KEYWORDS: Image quality, Printing, RGB color model, CMYK color model, Modulation transfer functions, Quality measurement, Statistical analysis, Visualization, Image processing, Profiling

Showing 5 of 17 publications
Course Instructor
SC1072: Statistics for Imaging and Sensor Data
The purpose of this course is to survey fundamental statistical methods in the context of imaging and sensing applications. You will learn the tools and how to apply them correctly in a given context. The instructor will clarify many misconceptions associated with using statistical methods. The course is full of practical and useful examples of analyses of imaging data. Intuitive and geometric understanding of the introduced concepts will be emphasized. The topics covered include hypothesis testing, confidence intervals, regression methods, and statistical signal processing (and its relationship to linear models). We will also discuss outlier detection, the method of Monte Carlo simulations, and bootstrap.
SC806: Advanced Multivariate Statistics for Imaging
In this course, you will learn some of the more advanced tools for the analysis of multivariate data. The topics covered include canonical correlation analysis, discrimination and classification (supervised learning), Fisher discrimination, independent component analysis (ICA), and a new method of nonnegative PCA. These tools are being used more frequently in a wide range of imaging applications, so it is important for a user to know how and in what context they should be used. The instructor will emphasize intuitive and geometric understanding of the introduced concepts and will also explain the relationships among these methods, clarifying misconceptions about them. All methods will be discussed in the context of practical and useful examples of imaging data.
SC837: Multivariate Analysis of Imaging and Sensor Data
In this course, you will learn useful tools for the analysis of data on many variables (such as data on many spectral bands or on several responses observed in an experiment). You will identify the benefits of incorporating information from several variables as opposed to analyzing each variable separately. Through understanding the principles behind the analytical tools, you will be able to decide when these tools should or should not be used in practice. Many practical and useful examples of analyses of imaging data are included. The instructor will emphasize intuitive and geometric understanding of the introduced concepts. The topics covered include multivariate descriptive statistics, multivariate normal (Gaussian) distribution, multivariate confidence intervals, confidence regions, principal component analysis (PCA), canonical correlation analysis, discrimination and classification (supervised learning), Fisher discrimination, and independent component analysis (ICA).
SC804: Introduction to Statistics for Imaging
The purpose of this course is a survey of the fundamental statistical methods in the context of imaging applications. You will learn the tools and how to apply them correctly in a given context. The instructor will clarify many misconceptions associated with using statistical methods. The course is full of practical and useful examples of analyses of imaging data, and the instructor will emphasize intuitive and geometric understanding of the introduced concepts. The topics covered include hypothesis testing, confidence intervals, and regression methods.
SC805: Principles of Multivariate Statistics for Imaging
In this course, you will learn the basic tools for the analysis of data on many variables (such as data on many spectral bands or on several responses observed in an experiment). You will identify the benefits of incorporating information from several variables as opposed to analyzing each variable separately. Through understanding the principles behind the statistical tools, you will be able to decide when these tools should or should not be used in practice. Many practical and useful examples of analyses of imaging data are included. The instructor will emphasize intuitive and geometric understanding of the introduced concepts. The topics covered include multivariate descriptive statistics, statistical (Mahalanobis) distance, multivariate normal (Gaussian) distribution, multivariate confidence intervals, confidence regions, and principal component analysis (PCA).
SC913: Multivariate Analysis of Optical and Imaging Data
The abundance of data in optical and imaging applications requires sophisticated, often multivariate, methods of analysis. In this course, you will learn useful tools for the analysis of data on many variables (such as data on many spectral bands, or on several responses observed on the same experimental unit). You will identify the benefits of incorporating information from several variables as opposed to analyzing each variable separately. Through understanding the principles behind the analytical tools, you will be able to decide when these tools should or should not be used in practice. Many practical and useful examples of analyses of optical and imaging data are included from the areas of remote sensing, multispectral and hyperspectral imaging, signal processing, and color science. The instructor will emphasize intuitive and geometric understanding of the introduced concepts. The topics covered include multivariate descriptive statistics, multivariate normal (Gaussian) distribution, multivariate confidence intervals, confidence regions, principal component analysis (PCA), canonical correlation analysis, discrimination and classification (supervised learning), Fisher discrimination, independent component analysis (ICA), and a new method of nonnegative PCA.
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