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首页> 外文期刊>Neural computation >What Can Neuromorphic Event-Driven Precise Timing Add to Spike-Based Pattern Recognition?
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What Can Neuromorphic Event-Driven Precise Timing Add to Spike-Based Pattern Recognition?

机译:神经形态事件驱动的精确定时可以为基于峰值的模式识别增加什么?

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This letter introduces a study to precisely measure what an increase in spike timing precision can add to spike-driven pattern recognition algorithms. The concept of generating spikes from images by converting gray levels into spike timings is currently at the basis of almost every spike-based modeling of biological visual systems. The use of images naturally leads to generating incorrect artificial and redundant spike timings and, more important, also contradicts biological findings indicating that visual processing is massively parallel, asynchronous with high temporal resolution. A new concept for acquiring visual information through pixel-individual asynchronous level-crossing sampling has been proposed in a recent generation of asynchronous neuromorphic visual sensors. Unlike conventional cameras, these sensors acquire data not at fixed points in time for the entire array but at fixed amplitude changes of their input, resulting optimally sparse in space and time—pixel individually and precisely timed only if new, (previously unknown) information is available (event based). This letter uses the high temporal resolution spiking output of neuromorphic event-based visual sensors to show that lowering time precision degrades performance on several recognition tasks specifically when reaching the conventional range of machine vision acquisition frequencies (30–60 Hz). The use of information theory to characterize separability between classes for each temporal resolution shows that high temporal acquisition provides up to 70% more information that conventional spikes generated from frame-based acquisition as used in standard artificial vision, thus drastically increasing the separability between classes of objects. Experiments on real data show that the amount of information loss is correlated with temporal precision. Our information-theoretic study highlights the potentials of neuromorphic asynchronous visual sensors for both practical appl- cations and theoretical investigations. Moreover, it suggests that representing visual information as a precise sequence of spike times as reported in the retina offers considerable advantages for neuro-inspired visual computations.
机译:这封信介绍了一项研究,以精确测量尖峰定时精度的提高可为尖峰驱动的模式识别算法带来什么。通过将灰度级转换为尖峰定时从图像生成尖峰的概念目前是几乎所有基于尖峰的生物视觉系统建模的基础。图像的使用自然会导致生成不正确的人工和冗余尖峰定时,更重要的是,还与生物学发现相矛盾,生物学发现表明视觉处理是大规模并行的,并且具有高时间分辨率。在最近的异步神经形态视觉传感器中,已经提出了一种通过像素个体异步水平交叉采样来获取视觉信息的新概念。与传统相机不同,这些传感器不是在整个阵列的固定时间点而是在其输入的固定幅度变化时获取数据,从而导致空间和时间的最佳稀疏-仅当有新的(以前未知的)信息存在时,像素才单独且精确地计时可用(基于事件)。这封信使用基于神经形态事件的视觉传感器的高时间分辨率峰值输出来显示,降低时间精度会降低某些识别任务的性能,特别是在达到机器视觉采集频率的常规范围(30–60 Hz)时。使用信息论表征每种时间分辨率的类之间的可分离性表明,高时间采集提供的信息比标准人工视觉中使用的基于帧的采集所产生的常规尖峰要多出70%,从而大大提高了不同类别之间的可分离性。对象。对真实数据的实验表明,信息丢失的数量与时间精度相关。我们的信息理论研究强调了神经形态异步视觉传感器在实际应用和理论研究中的潜力。此外,这表明将视觉信息表示为视网膜中报告的精确的尖峰时间序列对于神经启发的视觉计算提供了相当大的优势。

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