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Accuracy-Precision Trade-off in Human Sound Localisation

机译:人类声音定位中的精确度与精确度之间的权衡

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Sensory representations are typically endowed with intrinsic noise, leading to variability and inaccuracies in perceptual responses. The Bayesian framework accounts for an optimal strategy to deal with sensory-motor uncertainty, by combining the noisy sensory input with prior information regarding the distribution of stimulus properties. The maximum-a-posteriori (MAP) estimate selects the perceptual response from the peak (mode) of the resulting posterior distribution that ensure optimal accuracy-precision trade-off when the underlying distributions are Gaussians (minimal mean-squared error, with minimum response variability). We tested this model on human eye- movement responses toward broadband sounds, masked by various levels of background noise, and for head movements to sounds with poor spectral content. We report that the response gain (accuracy) and variability (precision) of the elevation response components changed systematically with the signal-to-noise ratio of the target sound: gains were high for high SNRs and decreased for low SNRs. In contrast, the azimuth response components maintained high gains for all conditions, as predicted by maximum-likelihood estimation. However, we found that the elevation data did not follow the MAP prediction. Instead, results were better described by an alternative decision strategy, in which the response results from taking a random sample from the posterior in each trial. We discuss two potential implementations of a simple posterior sampling scheme in the auditory system that account for the results and argue that although the observed response strategies for azimuth and elevation are sub-optimal with respect to their variability, it allows the auditory system to actively explore the environment in the absence of adequate sensory evidence.
机译:感官表征通常具有固有噪声,从而导致感知响应的变异性和不准确性。贝叶斯框架通过将嘈杂的感觉输入与有关刺激特性分布的先验信息相结合,为处理感觉运动不确定性提供了一种最佳策略。最大后验(MAP)估计从所得后验分布的峰值(众数)中选择感知响应,以确保当基础分布为高斯分布时,最佳的精度与精度之间的权衡(最小均方误差,响应最小)变化性)。我们测试了该模型在人眼对宽带声音的响应(被各种级别的背景噪音掩盖)以及头部对频谱含量较差的声音的响应方面的反应。我们报告说,仰角响应分量的响应增益(精度)和可变性(精度)随目标声音的信噪比而系统地改变:对于高SNR,增益较高,而对于低SNR,增益较低。相反,如最大似然估计所预测的,方位角响应分量在所有条件下均保持较高的增益。但是,我们发现海拔数据未遵循MAP预测。取而代之的是,结果是通过另一种决策策略更好地描述的,在该决策策略中,每次试验均从后方抽取随机样本来产生响应。我们讨论了听觉系统中简单后验采样方案的两种潜在实现方式,这些方法都可以解释结果,并认为尽管观察到的方位角和仰角响应策略在可变性方面不是最优的,但它允许听觉系统积极探索没有足够的感官证据的环境。

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