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Spatiotemporal features for asynchronous event-based data

机译:基于异步事件的数据的时空特征

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摘要

Bio-inspired asynchronous event-based vision sensors are currently introducing a paradigm shift in visual information processing. These new sensors rely on a stimulus-driven principle of light acquisition similar to biological retinas. They are event-driven and fully asynchronous, thereby reducing redundancy and encoding exact times of input signal changes, leading to a very precise temporal resolution. Approaches for higher-level computer vision often rely on the reliable detection of features in visual frames, but similar definitions of features for the novel dynamic and event-based visual input representation of silicon retinas have so far been lacking. This article addresses the problem of learning and recognizing features for event-based vision sensors, which capture properties of truly spatiotemporal volumes of sparse visual event information. A novel computational architecture for learning and encoding spatiotemporal features is introduced based on a set of predictive recurrent reservoir networks, competing via winner-take-all selection. Features are learned in an unsupervised manner from real-world input recorded with event-based vision sensors. It is shown that the networks in the architecture learn distinct and task-specific dynamic visual features, and can predict their trajectories over time.
机译:受生物启发的基于异步事件的视觉传感器当前在视觉信息处理中引入了范式转变。这些新传感器依赖于类似于生物视网膜的光驱动刺激原理。它们是事件驱动的且完全异步的,从而减少了冗余并编码了输入信号变化的准确时间,从而获得了非常精确的时间分辨率。用于高级计算机视觉的方法通常依赖于视觉帧中特征的可靠检测,但是到目前为止,对于硅视网膜的新颖的基于动态和基于事件的视觉输入表示,缺乏相似的特征定义。本文解决了基于事件的视觉传感器的学习和识别功能的问题,该功能捕获了稀疏视觉事件信息的真正时空量的属性。基于一组预测性递归储层网络,引入了一种新颖的计算架构,用于学习和编码时空特征,并通过“赢家通吃”的选择进行竞争。从基于事件的视觉传感器记录的真实输入中以无监督的方式学习功能。结果表明,体系结构中的网络学习独特的和特定于任务的动态视觉特征,并可以预测其随时间变化的轨迹。

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