Visual signal detection in structured backgrounds. II. Effects of contrast gain control, background variations, and white noise.
about
Using auditory classification images for the identification of fine acoustic cues used in speech perception.Stochastic model for detection of signals in noiseObserver efficiency in discrimination tasks simulating malignant and benign breast lesions imaged with ultrasound.Sensitivity to gaze-contingent contrast increments in naturalistic movies: An exploratory report and model comparison.Characterizing perceptual performance at multiple discrimination precisions in external noiseHuman- and model-observer performance in ramp-spectrum noise: effects of regularization and object variability.Developmental mechanisms underlying improved contrast thresholds for discriminations of orientation signals embedded in noise.Task-based measures of image quality and their relation to radiation dose and patient risk.Noise provides new insights on contrast sensitivity function.Effect of slice thickness on detectability in breast CT using a prewhitened matched filter and simulated mass lesionsThe external noise normalized gain profile of spatial vision.The response of the amblyopic visual system to noiseSensitivity to Information Conveyed by Horizontal Contours is Correlated with Face Identification Accuracy.Noise and the Perceptual Filling-in effect.Classification images with uncertaintyPerceptual learning improves neural processing in myopic vision.Image quality evaluation of flat panel and image intensifier digital magnification in x-ray fluoroscopy.Contrast-detail analysis of three flat panel detectors for digital radiography.Intrinsic position uncertainty explains detection and localization performance in peripheral vision.Correlation between human detection accuracy and observer model-based image quality metrics in computed tomography.Visual detection under uncertainty operates via an early static, not late dynamic, non-linearity.Anthropomorphic model observer performance in three-dimensional detection task for low-contrast computed tomography.Information foraging for perceptual decisions.Ideal observer analysis of crowding and the reduction of crowding through learning.Retina-V1 model of detectability across the visual field.Generalization Evaluation of Machine Learning Numerical Observers for Image Quality Assessment.Evaluation of internal noise methods for Hotelling observer models.Quantitative image quality evaluation of pixel-binning in a flat-panel detector for x-ray fluoroscopy.The effect of experience on detectability in local area anatomical noise.Constrained sampling experiments reveal principles of detection in natural scenes.Identification of simulated microcalcifications in white noise and mammographic backgrounds.Correlation between human observer performance and model observer performance in differential phase contrast CT.Decision-variable correlation.
P2860
Q30445298-0D735B16-D7D2-4E13-9117-9E3A18833CB7Q30479521-41E85279-8B4C-4652-8B01-AF3AB75A4ADCQ30488076-B9BC329B-6334-4DC2-B0C1-353094FA81E4Q30653974-13FA61FF-CE6F-4637-8B6D-4FB83C5E9951Q33691791-F5B59913-E696-4F6A-955F-EDAE0D62CC5CQ34144936-15033B77-3014-4EEF-9BAF-7B96B4B8F155Q34148930-30430E23-3C5F-4358-AADE-C41468259A52Q35053235-E09EC671-6FFD-4BDD-A0D8-E23CB3BBFC93Q35120086-EB64F540-8C10-4216-8069-5B52FCC95E4BQ35863189-3961AB49-0C5E-432E-9339-418207145B83Q35926872-40EC34FD-4CD1-4CF5-A4BE-5680B584A6D6Q36176706-E1EC502C-FB71-4C37-97BD-D7F15FB4EBA3Q36632801-CA692C57-E274-45EB-9741-12E97B31CCF3Q36824004-2B297019-FF5E-42B5-8982-84E7DA2AB34CQ37350980-87AE2F4B-58E9-4D85-99C1-725AFA491106Q37362028-4613D4D3-855D-4A3F-82B9-AC443614DED8Q39609955-9B7FCC5E-5E9D-4A2F-A454-ECC3D905D1C6Q39763690-8D5751F7-66A5-41E4-A291-89DFA3FD5EE5Q39945925-FF03D3D8-BD71-4605-A28A-BEEB6A2FB4E0Q41146670-2A921E3C-02EC-4A12-A0DE-938E19E4960FQ41603366-547C43C0-C772-4C31-A725-F24759D15BB6Q42120551-CF0CF5F8-6CD9-433B-B16E-BF88941322C5Q42121843-8D007239-A046-48E5-99DB-F60893597342Q42735547-D6078788-E741-4FC6-8BB9-6979B229208CQ42953646-B9A4B005-0D9D-4A66-A899-224143E756EAQ42958077-EBD07726-EFB0-49F2-B520-4A98F38C84EDQ43903680-09D50BEE-0F60-405E-BA43-EC1FEEDF6F06Q47221288-384D65E5-18D7-4051-9B1D-40AE612D23DFQ48444443-3E809D8E-A7F2-4397-B7AD-DFB8039C050BQ49190220-EAB30FE2-82E7-4027-B5B6-CB34F4401380Q51134894-0BCD2223-0B6C-4197-AFD7-6A09E5DB013EQ51134984-F9B34952-1DA0-4DAF-B6D4-D4B2BC500585Q53419361-2429C1CE-5478-4BA0-B59C-43BC8D15DCF2
P2860
Visual signal detection in structured backgrounds. II. Effects of contrast gain control, background variations, and white noise.
description
1997 nî lūn-bûn
@nan
1997年の論文
@ja
1997年学术文章
@wuu
1997年学术文章
@zh-cn
1997年学术文章
@zh-hans
1997年学术文章
@zh-my
1997年学术文章
@zh-sg
1997年學術文章
@yue
1997年學術文章
@zh
1997年學術文章
@zh-hant
name
Visual signal detection in str ...... d variations, and white noise.
@en
Visual signal detection in str ...... d variations, and white noise.
@nl
type
label
Visual signal detection in str ...... d variations, and white noise.
@en
Visual signal detection in str ...... d variations, and white noise.
@nl
prefLabel
Visual signal detection in str ...... d variations, and white noise.
@en
Visual signal detection in str ...... d variations, and white noise.
@nl
P2093
P356
P1476
Visual signal detection in str ...... d variations, and white noise.
@en
P2093
A B Watson
A J Ahumada
M P Eckstein
P304
P356
10.1364/JOSAA.14.002406
P577
1997-09-01T00:00:00Z