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Optimal models of sound localization by barn owls

机译:仓bar声音定位的最佳模型

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Sound localization by barn owls is commonly modeled as a matching procedure where localization cues derived from auditory inputs are compared to stored templates. While the matching models can explain properties of neural responses, no model explains how the owl resolves spatial ambiguity in the localization cues to produce accurate localization for sources near the center of gaze. Here, I examine two models for the barn owl's sound localization behavior. First, I consider a maximum likelihood estimator in order to further evaluate the cue matching model. Second, I consider a maximum a posteriori estimator to test whether a Bayesian model with a prior that emphasizes directions near the center of gaze can reproduce the owl's localization behavior. I show that the maximum likelihood estimator can not reproduce the owl's behavior, while the maximum a posteriori estimator is able to match the behavior. This result suggests that the standard cue matching model will not be sufficient to explain sound localization behavior in the barn owl. The Bayesian model provides a new framework for analyzing sound localization in the barn owl and leads to predictions about the owl's localization behavior.
机译:谷仓猫头鹰的声音本地化通常被建模为匹配过程,在该过程中,将从听觉输入中得出的本地化线索与存储的模板进行比较。尽管匹配模型可以解释神经反应的特性,但没有模型可以解释猫头鹰如何解决定位提示中的空间歧义以为凝视中心附近的源产生准确的定位。在这里,我研究了两种关于n的声音定位行为的模型。首先,我考虑一个最大似然估计器,以便进一步评估提示匹配模型。其次,我考虑了一个最大后验估计量,以检验具有先验的贝叶斯模型(强调视线中心附近的方向)是否可以重现猫头鹰的定位行为。我表明最大似然估计器无法重现猫头鹰的行为,而最大后验估计器能够匹配该行为。该结果表明标准提示匹配模型将不足以解释谷仓猫头鹰中的声音定位行为。贝叶斯模型为分析仓中的声音定位提供了一个新的框架,并导致对猫头鹰的定位行为的预测。

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