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ORCHARD: Visual object recognition accelerator based on approximate in-memory processing

机译:ORCHARD:基于近似内存处理的视觉对象识别加速器

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In recent years, machine learning for visual object recognition has been applied to various domains, e.g., autonomous vehicle, heath diagnose, and home automation. However, the recognition procedures still consume a lot of processing energy and incur a high cost of data movement for memory accesses. In this paper, we propose a novel hardware accelerator design, called ORCHARD, which processes the object recognition tasks inside memory. The proposed design accelerates both the image feature extraction and boosting-based learning algorithm, which are key subtasks of the state-of-the-art image recognition approaches. We optimize the recognition procedures by leveraging approximate computing and emerging non-volatile memory (NVM) technology. The NVM-based in-memory processing allows the proposed design to mitigate the CMOS-based computation overhead, highly improving the system efficiency. In our evaluation conducted on circuit- and device-level simulations, we show that ORCHARD successfully performs practical image recognition tasks, including text, face, pedestrian, and vehicle recognition with 0.3% of accuracy loss made by computation approximation. In addition, our design significantly improves the performance and energy efficiency by up to 376x and 1896x, respectively, compared to the existing processor-based implementation.
机译:近年来,用于视觉对象识别的机器学习已应用于各种领域,例如,自动驾驶汽车,健康诊断和家庭自动化。然而,识别过程仍然消耗大量的处理能量,并且导致用于存储器访问的数据移动的高成本。在本文中,我们提出了一种新颖的硬件加速器设计,称为ORCHARD,它可以处理内存中的对象识别任务。提出的设计加速了图像特征提取和基于Boosting的学习算法,这是最新图像识别方法的关键子任务。我们通过利用近似计算和新兴的非易失性存储器(NVM)技术来优化识别程序。基于NVM的内存中处理允许所提出的设计减轻基于CMOS的计算开销,从而大大提高了系统效率。在电路和设备级仿真上进行的评估中,我们表明ORCHARD成功执行了实际的图像识别任务,包括文本,面部,行人和车辆识别,而计算近似导致的精度损失为0.3%。此外,与现有的基于处理器的实现相比,我们的设计分别将性能和能源效率分别提高了376倍和1896倍。

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