Bayesian sensor fusion with fast and low power stochastic circuits

Alexandre Coninx, P. Bessière, E. Mazer, J. Droulez, R. Laurent, Awais Aslam, J. Lobo
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引用次数: 20

Abstract

As the physical limits of Moore's law are being reached, a research effort is launched to achieve further performance improvements by exploring computation paradigms departing from standard approaches. The BAMBI project (Bottom-up Approaches to Machines dedicated to Bayesian Inference) aims at developing hardware dedicated to probabilistic computation, which extends logic computation realised by boolean gates in current computer chips. Such probabilistic computing devices would allow to solve faster and at a lower energy cost a wide range of Artificial Intelligence applications, especially when decisions need to be taken from incomplete data in an uncertain environment. This paper describes an architecture where very simple operators compute on a time coding of probability values as stochastic signals. Simulation tests and a reconfigurable logic hardware implementation demonstrated the feasibility and performances of the proposed inference machine. Hardware results show this architecture can quickly solve Bayesian sensor fusion problems and is very efficient in terms of energy consumption.
基于快速低功耗随机电路的贝叶斯传感器融合
随着摩尔定律的物理极限被达到,一项研究工作开始了,通过探索脱离标准方法的计算范式来实现进一步的性能改进。BAMBI项目(自底向上的贝叶斯推理机器方法)旨在开发专用于概率计算的硬件,扩展当前计算机芯片中由布尔门实现的逻辑计算。这种概率计算设备将允许以更低的能源成本更快地解决广泛的人工智能应用,特别是当需要在不确定环境中从不完整的数据中做出决策时。本文描述了一种结构,其中非常简单的算子计算概率值作为随机信号的时间编码。仿真测试和可重构逻辑硬件实现验证了该推理机的可行性和性能。硬件结果表明,该架构能够快速解决贝叶斯传感器融合问题,并且在能耗方面非常高效。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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