Knüsel Philipp, Wyss Reto, König Peter, Verschure Paul F M J
Institute of Neuroinformatics, University/ETH Zürich, Zürich, Switzerland.
Neural Comput. 2004 Oct;16(10):2079-100. doi: 10.1162/0899766041732459.
Encoding of sensory events in internal states of the brain requires that this information can be decoded by other neural structures. The encoding of sensory events can involve both the spatial organization of neuronal activity and its temporal dynamics. Here we investigate the issue of decoding in the context of a recently proposed encoding scheme: the temporal population code. In this code, the geometric properties of visual stimuli become encoded into the temporal response characteristics of the summed activities of a population of cortical neurons. For its decoding, we evaluate a model based on the structure and dynamics of cortical microcircuits that is proposed for computations on continuous temporal streams: the liquid state machine. Employing the original proposal of the decoding network results in a moderate performance. Our analysis shows that the temporal mixing of subsequent stimuli results in a joint representation that compromises their classification. To overcome this problem, we investigate a number of initialization strategies. Whereas we observe that a deterministically initialized network results in the best performance, we find that in case the network is never reset, that is, it continuously processes the sequence of stimuli, the classification performance is greatly hampered by the mixing of information from past and present stimuli. We conclude that this problem of the mixing of temporally segregated information is not specific to this particular decoding model but relates to a general problem that any circuit that processes continuous streams of temporal information needs to solve. Furthermore, as both the encoding and decoding components of our network have been independently proposed as models of the cerebral cortex, our results suggest that the brain could solve the problem of temporal mixing by applying reset signals at stimulus onset, leading to a temporal segmentation of a continuous input stream.
大脑内部状态中感觉事件的编码要求该信息能够被其他神经结构解码。感觉事件的编码既可以涉及神经元活动的空间组织,也可以涉及其时间动态。在这里,我们在最近提出的一种编码方案——时间群体编码的背景下研究解码问题。在这种编码中,视觉刺激的几何特性被编码到一群皮层神经元总和活动的时间响应特征中。对于其解码,我们评估了一个基于皮层微电路结构和动态的模型,该模型是为连续时间流的计算而提出的:液态机器。采用原始的解码网络方案会导致中等性能。我们的分析表明,后续刺激的时间混合会导致一种联合表示,从而损害它们的分类。为了克服这个问题,我们研究了一些初始化策略。虽然我们观察到确定性初始化的网络性能最佳,但我们发现,如果网络从不重置,即它持续处理刺激序列,那么过去和当前刺激信息的混合会极大地阻碍分类性能。我们得出结论,时间上分离的信息混合这个问题并非特定于这个特定的解码模型,而是与任何处理连续时间信息流的电路都需要解决的一个普遍问题相关。此外,由于我们网络的编码和解码组件都已被独立地提出作为大脑皮层的模型,我们的结果表明,大脑可以通过在刺激开始时应用重置信号来解决时间混合问题,从而导致连续输入流的时间分割。