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模板学习对中央凹和中央凹旁视觉中固定噪声和随机噪声的检测解释

Detection in fixed and random noise in foveal and parafoveal vision explained by template learning.

作者信息

Beard B L, Ahumada A J

机构信息

NASA Ames Research Center, Human Information Processing Research Branch, Moffett Field, California 94035-1000, USA.

出版信息

J Opt Soc Am A Opt Image Sci Vis. 1999 Mar;16(3):755-63. doi: 10.1364/josaa.16.000755.

Abstract

Foveal and parafoveal contrast detection thresholds for Gabor and checkerboard targets were measured in white noise by means of a two-interval forced-choice paradigm. Two white-noise conditions were used: fixed and twin. In the fixed noise condition a single noise sample was presented in both intervals of all the trials. In the twin noise condition the same noise sample was used in the two intervals of a trial, but a new sample was generated for each trial. Fixed noise conditions usually resulted in lower thresholds than twin noise. Template learning models are presented that attribute this advantage of fixed over twin noise either to fixed memory templates' reducing uncertainty by incorporation of the noise or to the introduction, by the learning process itself, of more variability in the twin noise condition. Quantitative predictions of the template learning process show that it contributes to the accelerating nonlinear increase in performance with signal amplitude at low signal-to-noise ratios.

摘要

通过双间隔强迫选择范式,在白噪声中测量了Gabor和棋盘格目标的中央凹和中央凹旁对比度检测阈值。使用了两种白噪声条件:固定噪声和孪生噪声。在固定噪声条件下,所有试验的两个间隔中都呈现单个噪声样本。在孪生噪声条件下,试验的两个间隔中使用相同的噪声样本,但每次试验都会生成一个新样本。固定噪声条件下的阈值通常低于孪生噪声条件下的阈值。提出了模板学习模型,该模型将固定噪声相对于孪生噪声的这一优势归因于固定记忆模板通过合并噪声来降低不确定性,或者归因于学习过程本身在孪生噪声条件下引入了更多变异性。模板学习过程的定量预测表明,它有助于在低信噪比下随着信号幅度的增加而加速性能的非线性增长。

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