INCA:嵌入式机器人多任务的可中断CNN加速器

Jincheng Yu, Zhilin Xu, Shulin Zeng, Chao Yu, Jiantao Qiu, Chaoyang Shen, Yuanfan Xu, Guohao Dai, Yu Wang, Huazhong Yang
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引用次数: 5

摘要

近年来,卷积神经网络(CNN)在机器人领域得到了广泛的应用,极大地提高了机器人的感知和决策能力。为了在嵌入式系统上实现高能效的CNN,设计了一系列CNN加速器。然而,尽管CNN加速器的能量效率很高,但机器人开发人员很难使用它。由于机器人上的各种功能通常由不同的开发人员独立实现,这多个独立进程同时访问CNN加速器会导致硬件资源冲突。为了解决上述问题,我们提出了一种可中断CNN加速器(INCA)来实现CNN加速器上的多任务处理。在INCA中,我们提出了一种基于虚拟指令的中断方法(VI方法)来支持CNN加速器上的多任务。基于INCA,我们在嵌入式FPGA平台上部署了分布式同步定位与映射(DSLAM)。我们使用CNN实现了DSLAM中的两个关键组件,Feature-point Extraction (FE)和Place Recognition (PR),这样它们就可以在同一个CNN加速器上进行加速。实验结果表明,与逐层中断方法相比,我们的方法将中断响应延迟降低到1%。
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INCA: INterruptible CNN Accelerator for Multi-tasking in Embedded Robots
In recent years, Convolutional Neural Network (CNN) has been widely used in robotics, which has dramatically improved the perception and decision-making ability of robots. A series of CNN accelerators have been designed to implement energy-efficient CNN on embedded systems. However, despite the high energy efficiency on CNN accelerators, it is difficult for robotics developers to use it. Since the various functions on the robot are usually implemented independently by different developers, simultaneous access to the CNN accelerator by these multiple independent processes will result in hardware resources conflicts.To handle the above problem, we propose an INterruptible CNN Accelerator (INCA) to enable multi-tasking on CNN accelerators. In INCA, we propose a Virtual-Instruction-based interrupt method (VI method) to support multi-task on CNN accelerators. Based on INCA, we deploy the Distributed Simultaneously Localization and Mapping (DSLAM) on an embedded FPGA platform. We use CNN to implement two key components in DSLAM, Feature-point Extraction (FE) and Place Recognition (PR), so that they can both be accelerated on the same CNN accelerator. Experimental results show that, compared to the layer-by-layer interrupt method, our VI method reduces the interrupt respond latency to 1%.
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