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PISCES: Power-Aware Implementation of SLAM by Customizing Efficient Sparse Algebra

机译:双鱼:通过自定义高效的稀疏代数实现SLAM的功耗感知实现

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A key real-time task in autonomous systems is simultaneous localization and mapping (SLAM). Although prior work has proposed hardware accelerators to process SLAM in real time, they paid less attention to power consumption. To be more power-efficient, we propose Pisces, which co-optimizes power consumption and latency by exploiting sparsity, a key characteristic of SLAM missed in prior work. By orchestrating sparse data, Pisces aligns correlated data and enables deterministic, one-time, and parallel accesses to the on-chip memory. Therefore, Pisces (i) eliminates unnecessary memory accesses and (ii) enables pipelined and parallel processing. Our FPGA implementation shows that Pisces consumes 2.5× less power and executes SLAM 7.4× faster than the state of the art.
机译:自治系统中的一项关键实时任务是同时定位和映射(SLAM)。尽管先前的工作已经提出了硬件加速器来实时处理SLAM,但他们对功耗的关注较少。为了提高电源效率,我们建议使用双鱼座(Pisces),该双鱼座通过利用稀疏性来共同优化功耗和延迟,稀疏性是先前工作中缺少的SLAM的关键特征。通过编排稀疏数据,双鱼座可以对齐相关数据并实现对片上存储器的确定性,一次性和并行访问。因此,双鱼座(i)消除了不必要的内存访问,并且(ii)启用了流水线和并行处理。我们的FPGA实现表明,双鱼座比现有技术少功耗2.5倍,执行SLAM 7.4倍的速度更快。

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