Anil Swathi, Goodman Dan F M, Ghosh Marcus
Department of Electrical and Electronic Engineering, Imperial College London, London, United Kingdom.
Department of Neuroanatomy, Institute of Anatomy and Cell Biology, Faculty of Medicine, University of Freiburg, Freiburg, Germany.
PLoS Comput Biol. 2025 Jun 6;21(6):e1013125. doi: 10.1371/journal.pcbi.1013125. eCollection 2025 Jun.
Animals continuously combine information across sensory modalities and time, and use these combined signals to guide their behaviour. Picture a predator watching their prey sprint and screech through a field. To date, a range of multisensory algorithms have been proposed to model this process including linear and nonlinear fusion, which combine the inputs from multiple sensory channels via either a sum or nonlinear function. However, many multisensory algorithms treat successive observations independently, and so cannot leverage the temporal structure inherent to naturalistic stimuli. To investigate this, we introduce a novel multisensory task in which we provide the same number of task-relevant signals per trial but vary how this information is presented: from many short bursts to a few long sequences. We demonstrate that multisensory algorithms that treat different time steps as independent, perform sub-optimally on this task. However, simply augmenting these algorithms to integrate across sensory channels and short temporal windows allows them to perform surprisingly well, and comparably to fully recurrent neural networks. Overall, our work: highlights the benefits of fusing multisensory information across channels and time, shows that small increases in circuit/model complexity can lead to significant gains in performance, and provides a novel multisensory task for testing the relevance of this in biological systems.
动物不断整合来自不同感官模态和不同时间的信息,并利用这些组合信号来指导它们的行为。想象一下,一只捕食者看着它的猎物在田野里飞奔并尖叫。迄今为止,已经提出了一系列多感官算法来模拟这个过程,包括线性和非线性融合,它们通过求和或非线性函数来组合来自多个感官通道的输入。然而,许多多感官算法独立地处理连续的观察结果,因此无法利用自然主义刺激中固有的时间结构。为了研究这一点,我们引入了一项新颖的多感官任务,在每次试验中我们提供相同数量的与任务相关的信号,但改变这些信息的呈现方式:从许多短脉冲到少数长序列。我们证明,将不同时间步视为独立的多感官算法在这项任务上表现欠佳。然而,简单地增强这些算法以在感官通道和短时间窗口上进行整合,能使它们表现得惊人地好,并且与完全循环神经网络相当。总体而言,我们的工作:突出了跨通道和时间融合多感官信息的好处,表明电路/模型复杂性的小幅增加可以导致性能上的显著提升,并提供了一项新颖的多感官任务来测试这在生物系统中的相关性。