Cogn Neurodyn. 2011 Jun;5(2):113-32. doi: 10.1007/s11571-010-9142-9. Epub 2010 Dec 10.
From a few presentations of an object, perceptual systems are able to extract invariant properties such that novel presentations are immediately recognized. This may be enabled by inferring the set of all representations equivalent under certain transformations. We implemented this principle in a neurodynamic model that stores activity patterns representing transformed versions of the same object in a distributed fashion within maps, such that translation across the map corresponds to the relevant transformation. When a pattern on the map is activated, this causes activity to spread out as a wave across the map, activating all the transformed versions represented. Computational studies illustrate the efficacy of the proposed mechanism. The model rapidly learns and successfully recognizes rotated and scaled versions of a visual representation from a few prior presentations. For topographical maps such as primary visual cortex, the mechanism simultaneously represents identity and variation of visual percepts whose features change through time.
从一些物体的呈现中,感知系统能够提取不变的属性,从而使新的呈现能够立即被识别。这可能是通过推断在某些变换下等效的所有表示集来实现的。我们在一个神经动力学模型中实现了这一原理,该模型以分布式的方式在图中存储表示同一物体的变换版本的活动模式,使得在图中的平移对应于相关的变换。当图上的模式被激活时,它会引起活动作为波在图中扩散,激活所有表示的变换版本。计算研究说明了所提出的机制的有效性。该模型可以快速学习并成功识别从几次演示中获得的视觉表示的旋转和缩放版本。对于主视觉皮层等地形地图,该机制同时表示视觉感知的身份和变化,其特征随时间而变化。