Suppr超能文献

具有尖峰时间依赖性可塑性的分层神经网络的各层会自发且无需监督地产生预测性视觉运动外推。

Predictive Visual Motion Extrapolation Emerges Spontaneously and without Supervision at Each Layer of a Hierarchical Neural Network with Spike-Timing-Dependent Plasticity.

机构信息

Department of Biomedical Engineering, The University of Melbourne, Melbourne, Victoria 3010, Australia

Melbourne School of Psychological Sciences, The University of Melbourne, Melbourne, Victoria 3010, Australia.

出版信息

J Neurosci. 2021 May 19;41(20):4428-4438. doi: 10.1523/JNEUROSCI.2017-20.2021. Epub 2021 Apr 22.

Abstract

The fact that the transmission and processing of visual information in the brain takes time presents a problem for the accurate real-time localization of a moving object. One way this problem might be solved is extrapolation: using an object's past trajectory to predict its location in the present moment. Here, we investigate how a simulated layered neural network might implement such extrapolation mechanisms, and how the necessary neural circuits might develop. We allowed an unsupervised hierarchical network of velocity-tuned neurons to learn its connectivity through spike-timing-dependent plasticity (STDP). We show that the temporal contingencies between the different neural populations that are activated by an object as it moves causes the receptive fields of higher-level neurons to shift in the direction opposite to their preferred direction of motion. The result is that neural populations spontaneously start to represent moving objects as being further along their trajectory than where they were physically detected. Because of the inherent delays of neural transmission, this effectively compensates for (part of) those delays by bringing the represented position of a moving object closer to its instantaneous position in the world. Finally, we show that this model accurately predicts the pattern of perceptual mislocalization that arises when human observers are required to localize a moving object relative to a flashed static object (the flash-lag effect; FLE). Our ability to track and respond to rapidly changing visual stimuli, such as a fast-moving tennis ball, indicates that the brain is capable of extrapolating the trajectory of a moving object to predict its current position, despite the delays that result from neural transmission. Here, we show how the neural circuits underlying this ability can be learned through spike-timing-dependent synaptic plasticity and that these circuits emerge spontaneously and without supervision. This demonstrates how the neural transmission delays can, in part, be compensated to implement the extrapolation mechanisms required to predict where a moving object is at the present moment.

摘要

视觉信息在大脑中的传输和处理需要时间,这给准确实时定位移动物体带来了问题。解决这个问题的一种方法是外推法:利用物体的过去轨迹来预测其当前位置。在这里,我们研究了模拟的分层神经网络如何实现这种外推机制,以及必要的神经回路如何发展。我们允许一个无监督的速度调谐神经元层次网络通过尖峰时间依赖可塑性(STDP)学习其连接。我们表明,当物体移动时,不同神经元群体被激活的时间顺序会导致高级神经元的感受野朝着与它们运动的首选方向相反的方向移动。结果是,神经元群体自发地开始将移动的物体表示为沿着它们的轨迹进一步移动,而不是在它们被物理检测到的地方。由于神经传递的固有延迟,这通过将移动物体的表示位置更接近其在世界上的即时位置,有效地补偿了(部分)这些延迟。最后,我们表明,该模型准确地预测了人类观察者需要相对于闪烁的静态物体(闪烁滞后效应;FLE)来定位移动物体时出现的感知定位错误的模式。我们能够跟踪和响应快速变化的视觉刺激,例如快速移动的网球,这表明大脑能够外推移动物体的轨迹,以预测其当前位置,尽管这会导致神经传递的延迟。在这里,我们展示了如何通过尖峰时间依赖的突触可塑性来学习这种能力的神经回路,以及这些回路如何自发地和无监督地出现。这表明,神经传递延迟可以在一定程度上得到补偿,以实现预测当前移动物体位置所需的外推机制。

文献AI研究员

20分钟写一篇综述,助力文献阅读效率提升50倍。

立即体验

用中文搜PubMed

大模型驱动的PubMed中文搜索引擎

马上搜索

文档翻译

学术文献翻译模型,支持多种主流文档格式。

立即体验