2011
DOI: 10.1109/tmi.2010.2077308
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Using a Visual Discrimination Model for the Detection of Compression Artifacts in Virtual Pathology Images

Abstract: A major issue in telepathology is the extremely large and growing size of digitized “virtual” slides, which can require several gigabytes of storage and cause significant delays in data transmission for remote image interpretation and interactive visualization by pathologists. Compression can reduce this massive amount of virtual slide data, but reversible (lossless) methods limit data reduction to less than 50%, while lossy compression can degrade image quality and diagnostic accuracy. “Visually lossless” com… Show more

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Cited by 32 publications
(30 citation statements)
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“…For a fully automated implementation of the staining correction, automated extraction of these sample images should be considered. Also, since the determination of the maximum dye amount, c max , is sensitive to the presence of tissue artifacts, such as tissue folds which absorbed more dye than normal tissue areas, integration of methods that automatically detect the presence of tissue artifacts [29] and methods that automatically evaluate the image quality [34,35] is ideal.…”
Section: Limitations and Future Workmentioning
confidence: 99%
“…For a fully automated implementation of the staining correction, automated extraction of these sample images should be considered. Also, since the determination of the maximum dye amount, c max , is sensitive to the presence of tissue artifacts, such as tissue folds which absorbed more dye than normal tissue areas, integration of methods that automatically detect the presence of tissue artifacts [29] and methods that automatically evaluate the image quality [34,35] is ideal.…”
Section: Limitations and Future Workmentioning
confidence: 99%
“…The HVS models used in the evaluation of medical image quality [10]- [12], [26]- [28] belong to the perceptual difference model (PDM) [29]- [33] focusing on the spatial contrast detection. They are especially efficient for the detection of near-visibility-threshold distortion, suitable for the diagnostic task performance evaluation where the detection targets are not too conspicuous.…”
Section: B Existing Numerical Observersmentioning
confidence: 99%
“…The scale range of simulated lesions was [σ min , σ max ] = [1,12], and the lesion shape was fixed ( …”
Section: Pcjo's Setupmentioning
confidence: 99%
“…The results of the study suggest that with a single free parameter to account for efficiency, the model appropriately predicts mean human performance at different signal intensities. Other models have been realized to estimate the visibility of artifacts generated by compression techniques [11] or within mathematical observers to predict human performance in a discrimination task [12].…”
Section: Introductionmentioning
confidence: 99%