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A reformulated systematic resampling algorithm for particle filters and its parallel implementation in an application-specific instruction-set processor

机译:一种用于粒子滤波器的重新设计的系统重采样算法及其在专用指令集处理器中的并行实现

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Particle filters (PFs) are computationally intensive, which prevents them from being widely used in some real-time applications with high throughput requirements. A parallel implementation is a feasible approach to enable using PFs in these applications. However, effective resampling algorithms such as the Systematic Resampling (SR) algorithm are sequential in nature. In this paper, we propose a new form of the SR algorithm suitable for parallel implementation in an Application-Specific Instruction-set Processor (ASIP). Six custom instructions were designed for this reformulated SR algorithm. Experimental results show that the ASIP implementation of the reformulated SR algorithm, with four weights calculated in parallel, and eight categories defined by uniformly distributed numbers that are compared simultaneously to achieve a 30.6× speedup over the serial SR algorithm in a general-purpose processor. This comes at a cost of only 54K additional gates, or 68% overhead to be added to a base processor with 79K gates.
机译:粒子过滤器(PF)占用大量计算资源,这使它们无法在某些对吞吐量有较高要求的实时应用中得到广泛使用。并行实现是在这些应用程序中启用PF的可行方法。但是,有效的重采样算法(例如系统重采样(SR)算法)本质上是顺序的。在本文中,我们提出了一种新形式的SR算法,适用于在专用指令集处理器(ASIP)中并行实现。为此重新设计的SR算法设计了六个自定义指令。实验结果表明,重新设计的SR算法的ASIP实现具有四个并行计算的权重,并且由均匀分布的数字定义了八个类别,这些类别被同时比较以在通用处理器中实现比串行SR算法高30.6倍的加速比。这仅需增加54K门的成本,或将68%的开销添加到具有79K门的基本处理器上。

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