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NIMBLE: A kernel density model of saccade-based visual memory

机译:NIMBLE:基于扫视的视觉内存的内核密度模型

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We present a Bayesian version of J. Lacroix, J. Murre, and E. Postma`s (2006) Natural Input Memory (NIM) model of saccadic visual memory. Our model, which we call NIMBLE (NIM with Bayesian Likelihood Estimation), uses a cognitively plausible image sampling technique that provides a foveated representation of image patches. We conceive of these memorized image fragments as samples from image class distributions and model the memory of these fragments using kernel density estimation. Using these models, we derive class-conditional probabilities of new image fragments and combine individual fragment probabilities to classify images. Our Bayesian formulation of the model extends easily to handle multi-class problems. We validate our model by demonstrating human levels of performance on a face recognition memory task and high accuracy on multi-category face and object identification. We also use NIMBLE to examine the change in beliefs as more fixations are taken from an image. Using fixation data collected from human subjects, we directly compare the performance of NIMBLE`s memory component to human performance, demonstrating that using human fixation locations allows NIMBLE to recognize familiar faces with only a single fixation.
机译:我们提出了J. Lacroix,J。Murre和E. Postma(2006)视觉视觉记忆的自然输入记忆(NIM)模型的贝叶斯版本。我们的模型称为NIMBLE(具有贝叶斯似然估计的NIM),它使用一种认知上合理的图像采样技术,该技术提供了图像补丁的偏心表示。我们将这些存储的图像片段视为来自图像类别分布的样本,并使用内核密度估计对这些片段的内存进行建模。使用这些模型,我们可以得出新图像片段的类条件概率,并结合各个片段概率对图像进行分类。我们对模型的贝叶斯公式很容易扩展以处理多类问题。我们通过演示人脸识别记忆任务的性能水平以及多类别人脸和物体识别的高精度来验证我们的模型。当从图像中获取更多注视时,我们还将使用NIMBLE来检查信念的变化。使用从人类对象收集的注视数据,我们将NIMBLE的记忆组件的性能与人类的性能直接进行比较,表明使用人类注视位置可使NIMBLE仅用一次注视即可识别熟悉的面孔。

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