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Predicting bias in perceived position using attention field models

机译:使用注意力场模型预测感知位置的偏差

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Attention is the mechanism through which we select relevant information from our visual environment. We have recently demonstrated that attention attracts receptive fields across the visual hierarchy (Klein, Harvey, & Dumoulin, reveal-id="i1534-7362-16-7-15-klein1" class="revealLink refLink">2014). We captured this receptive field attraction using an attention field model. Here, we apply this model to human perception: We predict that receptive field attraction results in a bias in perceived position, which depends on the size of the underlying receptive fields. We instructed participants to compare the relative position of Gabor stimuli, while we manipulated the focus of attention using exogenous cueing. We varied the eccentric position and spatial frequency of the Gabor stimuli to vary underlying receptive field size. The positional biases as a function of eccentricity matched the predictions by an attention field model, whereas the bias as a function of spatial frequency did not. As spatial frequency and eccentricity are encoded differently across the visual hierarchy, we speculate that they might interact differently with the attention field that is spatially defined.
机译:注意是我们从视觉环境中选择相关信息的机制。我们最近证明,注意力吸引了整个视觉层次的接受领域(Klein,Harvey和Dumoulin, 2014 )。我们使用注意力场模型捕获了这种感受力场吸引。在这里,我们将此模型应用于人类感知:我们预测,感受野的吸引会导致感知位置产生偏差,这取决于基础感受野的大小。我们指导参与者比较Gabor刺激的相对位置,同时我们使用外在提示来操纵注意力的焦点。我们改变了Gabor刺激的偏心位置和空间频率,以改变潜在的感受野大小。作为偏心率函数的位置偏差与注意力场模型的预测相匹配,而作为空间频率函数的偏差却没有。由于空间频率和偏心率在整个视觉层次结构中的编码方式不同,因此我们推测它们可能与空间定义的注意力场发生不同的相互作用。

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