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Extraction of temporally correlated features from dynamic vision sensors with spike-timing-dependent plasticity

机译:从动态视觉传感器中提取与时间相关的可塑性的时间相关特征

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摘要

A biologically inspired approach to learning temporally correlated patterns from a spiking silicon retina is presented. Spikes are generated from the retina in response to relative changes in illumination at the pixel level and transmitted to a feed-forward spiking neural network. Neurons become sensitive to patterns of pixels with correlated activation times, in a fully unsupervised scheme. This is achieved using a special form of Spike-Timing-Dependent Plasticity which depresses synapses that did not recently contribute to the post-synaptic spike activation, regardless of their activation time. Competitive learning is implemented with lateral inhibition. When tested with real-life data, the system is able to extract complex and overlapping temporally correlated features such as car trajectories on a freeway, after only 10 min of traffic learning. Complete trajectories can be learned with a 98% detection rate using a second layer, still with unsupervised learning, and the system may be used as a car counter. The proposed neural network is extremely robust to noise and it can tolerate a high degree of synaptic and neuronal variability with little impact on performance. Such results show that a simple biologically inspired unsupervised learning scheme is capable of generating selectivity to complex meaningful events on the basis of relatively little sensory experience.
机译:提出了一种从生物学上启发的方法来从尖刺的硅视网膜中学习时间相关的模式。响应于像素级别照明的相对变化,从视网膜生成尖峰,并将其传输到前馈尖峰神经网络。在完全不受监督的方案中,神经元对具有相关激活时间的像素模式变得敏感。这是通过使用一种特殊形式的依赖于尖峰时间的可塑性来实现的,该可抑制突触的新近发生的突触,无论它们的激活时间如何,这些突触最近都没有对突触后的突触做出贡献。竞争性学习通过横向抑制来实现。当使用实际数据进行测试时,该系统仅需学习10分钟的交通信息便能够提取复杂且重叠的时间相关特征,例如高速公路上的汽车轨迹。可以使用第二层以98%的检测率来学习完整的轨迹,但仍需进行无监督学习,并且该系统可用作汽车计数器。所提出的神经网络对噪声具有极强的鲁棒性,并且可以耐受高度的突触和神经元变异,而对性能的影响很小。这样的结果表明,简单的生物学启发的无监督学习方案能够基于相对较少的感官经验而产生对复杂的有意义事件的选择性。

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