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A Biologically Plausible Neuromorphic System for Object Recognition and Depth Analysis

机译:一种用于物体识别和深度分析的生物合理的神经形态系统

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摘要

We present a large-scale Neuromorphic model based on integrate-and-fire (IF) neurons that analyses objects and their depth within a moving visual scene. A feature-based algorithm builds a luminosity receptor field as an artificial retina, in which the IF neurons act both as photoreceptors and processing units. We show that the IF neurons can trace an object's path and depth using an adaptive time-window and Temporally Asymmetric Hebbian (TAH) training.
机译:我们基于整合和火(IF)神经元的大规模神经形态模型分析了物体及其深度在移动的视觉场景中。一种基于特征的算法将亮度受体场构成为人工视网膜,其中IF神经元都作为光感受器和加工​​单元起作用。我们表明,如果神经元可以追踪物体的路径和深度使用自适应时间窗口和时间不对称的Hebbian(TAH)培训。

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