Mechanical and Materials Engineering, University of Cincinnati, Cincinnati, Ohio, United States of America.
Department of Engineering Management, University of Antwerp, Antwerp, Belgium.
PLoS Comput Biol. 2021 Jun 28;17(6):e1009052. doi: 10.1371/journal.pcbi.1009052. eCollection 2021 Jun.
In most animals, natural stimuli are characterized by a high degree of redundancy, limiting the ensemble of ecologically valid stimuli to a significantly reduced subspace of the representation space. Neural encodings can exploit this redundancy and increase sensing efficiency by generating low-dimensional representations that retain all information essential to support behavior. In this study, we investigate whether such an efficient encoding can be found to support a broad range of echolocation tasks in bats. Starting from an ensemble of echo signals collected with a biomimetic sonar system in natural indoor and outdoor environments, we use independent component analysis to derive a low-dimensional encoding of the output of a cochlear model. We show that this compressive encoding retains all essential information. To this end, we simulate a range of psycho-acoustic experiments with bats. In these simulations, we train a set of neural networks to use the encoded echoes as input while performing the experiments. The results show that the neural networks' performance is at least as good as that of the bats. We conclude that our results indicate that efficient encoding of echo information is feasible and, given its many advantages, very likely to be employed by bats. Previous studies have demonstrated that low-dimensional encodings allow for task resolution at a relatively high level. In contrast to previous work in this area, we show that high performance can also be achieved when low-dimensional filters are derived from a data set of realistic echo signals, not tailored to specific experimental conditions.
在大多数动物中,自然刺激具有高度的冗余性,这将生态有效刺激的集合限制在表示空间的一个显著缩小的子空间内。神经编码可以利用这种冗余性,通过生成保留所有支持行为所需信息的低维表示来提高传感效率。在这项研究中,我们研究了在蝙蝠中是否可以找到这种有效的编码来支持广泛的回声定位任务。从在自然室内和室外环境中使用仿生声纳系统收集的回声信号集合开始,我们使用独立成分分析来推导出耳蜗模型输出的低维编码。我们表明,这种压缩编码保留了所有必要的信息。为此,我们模拟了一系列蝙蝠的心理声学实验。在这些模拟中,我们训练一组神经网络使用编码后的回声作为输入,同时执行实验。结果表明,神经网络的性能至少与蝙蝠一样好。我们得出结论,我们的结果表明,回声信息的有效编码是可行的,并且鉴于其许多优点,很可能被蝙蝠采用。以前的研究表明,低维编码允许在相对较高的水平上解决任务。与该领域以前的工作不同,我们表明,当从真实回声信号的数据集而不是针对特定实验条件定制的数据集导出低维滤波器时,也可以实现高性能。