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Implementation of Bayesian Fly Tracking Model using Analog Neuromorphic Circuits

机译:利用模拟神经形态电路实现贝叶斯飞行跟踪模型

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There is a growing body of evidence that suggests that the neurons in the brain calculate the posterior probability of states and events based on observations provided by the sensory neurons. Based on this hypothesis, a neuromorphic framework is proposed, where the sensory neurons of the dragonfly make noisy observations of the fruit fly and uses the underlying Hidden Markov Model (HMM) to track the fruit fly in two dimensional space. The dragonfly estimates the target position by solving the Bayesian recursive equations online. This work presents a novel approach for implementing probabilistic networks using sub-threshold analog neuromorphic circuits, with the ability to perform the computation in real-time. This framework will pave the way to build complex probabilistic algorithms based on HMMs for low power real-time applications.
机译:越来越多的证据表明,大脑中的神经元根据感觉神经元提供的观察结果来计算状态和事件的后验概率。基于此假设,提出了一种神经形态框架,其中蜻蜓的感觉神经元对果蝇进行嘈杂的观察,并使用基础的隐马尔可夫模型(HMM)在二维空间中追踪果蝇。蜻蜓通过在线求解贝叶斯递归方程来估计目标位置。这项工作提出了一种使用亚阈值模拟神经形态电路实现概率网络的新颖方法,并具有实时执行计算的能力。该框架将为基于低功耗实时应用的HMM构建复杂的概率算法铺平道路。

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