Dietmar Wueller
at Image Engineering GmbH & Co KG
SPIE Involvement:
Editor | Author | Instructor
Publications (16)

Proceedings Article | 27 February 2015 Paper
Proceedings Volume 9404, 94040K (2015) https://doi.org/10.1117/12.2079936
KEYWORDS: Cameras, Image quality, Standards development, Image quality standards, Image processing, Denoising, Image resolution, Modulation transfer functions, Visualization, Optical testing

Proceedings Article | 7 March 2013 Paper
Proceedings Volume 8667, 86671H (2013) https://doi.org/10.1117/12.2003080
KEYWORDS: Cameras, Standards development, Image quality, Denoising, Sensors, Image quality standards, Image resolution, Interference (communication), Video, Signal to noise ratio

Proceedings Article | 25 January 2012 Paper
Proceedings Volume 8293, 829305 (2012) https://doi.org/10.1117/12.907303
KEYWORDS: Cameras, Image quality, Spatial frequencies, Denoising, Detection and tracking algorithms, Image analysis, Signal attenuation, Picosecond phenomena, Image resolution, Digital cameras

Proceedings Article | 19 January 2010 Paper
Proceedings Volume 7537, 75370T (2010) https://doi.org/10.1117/12.838739
KEYWORDS: Cameras, Distortion, Reflectivity, Imaging systems, Image resolution, Image quality, Visualization, Digital imaging, Color reproduction, Stars

Proceedings Article | 18 January 2010 Paper
Proceedings Volume 7529, 75290L (2010) https://doi.org/10.1117/12.838743
KEYWORDS: Denoising, Cameras, Modulation transfer functions, Spatial frequencies, Stars, Modulation, Image processing, Image quality, Signal processing, Digital cameras

Showing 5 of 16 publications
Proceedings Volume Editor (3)

SPIE Conference Volume | 16 March 2015

SPIE Conference Volume | 19 March 2014

SPIE Conference Volume | 26 March 2013

Conference Committee Involvement (10)
Digital Photography and Mobile Imaging XI
9 February 2015 | San Francisco, California, United States
Digital Photography X
3 February 2014 | San Francisco, California, United States
Mobile Imaging System Design and Image Quality
5 February 2013 | Burlingame, California, United States
Digital Photography IX
4 February 2013 | Burlingame, California, United States
Digital Photography VIII
23 January 2012 | Burlingame, California, United States
Showing 5 of 10 Conference Committees
Course Instructor
SC1058: Image Quality and Evaluation of Cameras In Mobile Devices
Digital and mobile imaging camera system performance is determined by a combination of sensor characteristics, lens characteristics, and image-processing algorithms. As pixel size decreases, sensitivity decreases and noise increases, requiring a more sophisticated noise-reduction algorithm to obtain good image quality. Furthermore, small pixels require high-resolution optics with low chromatic aberration and very small blur circles. Ultimately, there is a tradeoff between noise, resolution, sharpness, and the quality of an image. This short course provides an overview of "light in to byte out" issues associated with digital and mobile imaging cameras. The course covers, optics, sensors, image processing, and sources of noise in these cameras, algorithms to reduce it, and different methods of characterization. Although noise is typically measured as a standard deviation in a patch with uniform color, it does not always accurately represent human perception. Based on the "visual noise" algorithm described in ISO 15739, an improved approach for measuring noise as an image quality aspect will be demonstrated. The course shows a way to optimize image quality by balancing the tradeoff between noise and resolution. All methods discussed will use images as examples.
SC871: Noise, Image Processing, and their Influence on Resolution
Digital imaging system resolution is determined by a combination of sensor characteristics, lens characteristics, and image-processing algorithms. As pixel size decreases, sensitivity decreases and noise increases, requiring a more sophisticated noise-reduction algorithm to obtain good image quality. Furthermore, small pixels require high-resolution optics with low chromatic aberration and very small blur circles. Ultimately, there is a tradeoff between noise, resolution, sharpness, and the quality of an image. This short course summarizes the sources of noise, algorithms to reduce it, and different methods of characterization. Although noise is typically measured as a standard deviation in a patch with uniform color, it does not always accurately represent human perception. Based on the "visual noise" algorithm described in ISO 15739, an improved approach for measuring noise as an image quality aspect will be demonstrated. The course shows a way to optimize image quality by balancing the tradeoff between noise and resolution. All methods discussed will use images as examples.
SC753: The Image Pipeline and How It Influences Quality Measurements Based on Existing ISO Standards
When a digital image is captured using a digital still camera, DSC, it needs to be processed. For consumer cameras this processing is done within the camera and covers various steps like dark current subtraction, flare compensation, shading and color compensation, demosaicing, white balancing, tonal and color correction, sharpening, and compression. All of these steps have a significant influence on image quality so it is important to know how image quality can be measured and what standardized methods exist. The course provides the basic methods for each step of the imaging pipeline. While we run several images through a sample pipeline we will alter the algorithms to discover the visual differences and the differences in the measured values using the various test methods. This helps to understand the process and provides a lot of information on how to increase the over all image quality. The course topics include basic review of the image processing pipeline; explanation of the different steps and their basic algorithms; practical image processing using sample images and software; introduction to image quality analysis; discussion on test scenes and visual image analysis; measurement of different image quality aspects like OECF, Dynamic Range, Noise, Resolution, Color Reproduction; explanation of the available free and commercial software; and demonstration of illuminator, test chart, and software based measurements.
SC870: Color Processing and its Characterisation for Digital Photography
When an image is captured using a digital imaging device, it needs to be rendered. For consumer cameras this processing is done within the camera, and covers various steps like dark current subtraction, flare compensation, shading and color compensation, demosaicing, white balancing, tonal and color correction, sharpening, and compression. All of these steps have a significant influence on image quality, so to design and tune these algorithms it is important to know how image quality can be measured and what standardized methods exist as well as their pros and cons. The course provides the basic methods for all steps of the imaging pipeline which involve color. Participants will get to examine the basic algorithms that exist and evaluate images processed through a sample pipeline. We will see how image data influences color transforms and white balance. This helps to understand the process and provides substantial information on how to increase the overall image quality. Finally, we will look at how non-ideal hardware affects the quality of the output image. Examples include non-ideal spectral filters, sensor crosstalk, spectral responsivity mismatch, etc.
SIGN IN TO:
  • View contact details

UPDATE YOUR PROFILE
Is this your profile? Update it now.
Don’t have a profile and want one?

Advertisement
Advertisement
Back to Top