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Learning What to See in a Changing World

机译:学习在瞬息万变的世界中看到的东西

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摘要

Visual perception is strongly shaped by expectations, but it is poorly understood how such perceptual expectations are learned in our dynamic sensory environment. Here, we applied a Bayesian framework to investigate whether perceptual expectations are continuously updated from different aspects of ongoing experience. In two experiments, human observers performed an associative learning task in which rapidly changing expectations about the appearance of ambiguous stimuli were induced. We found that perception of ambiguous stimuli was biased by both learned associations and previous perceptual outcomes. Computational modeling revealed that perception was best explained by a model that continuously updated priors from associative learning and perceptual history and combined these priors with the current sensory information in a probabilistic manner. Our findings suggest that the construction of visual perception is a highly dynamic process that incorporates rapidly changing expectations from different sources in a manner consistent with Bayesian learning and inference.
机译:视觉强烈地受到期望的影响,但人们对如何在动态感官环境中学习这种感性期望的了解却很少。在这里,我们应用了贝叶斯框架来研究感知期望是否从持续经验的不同方面不断更新。在两个实验中,人类观察者执行了一项联想学习任务,其中引发了对模棱两可刺激出现的迅速变化的期望。我们发现,对模棱两可的刺激的感知既受学习的联想又与先前的知觉结果有偏差。计算模型表明,最好的解释是通过不断更新联想学习和感知历史的先验并以概率方式将这些先验与当前感官信息相结合的模型来解释。我们的发现表明,视觉感知的构建是一个高度动态的过程,它以与贝叶斯学习和推理相一致的方式融合了来自不同来源的快速变化的期望。

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