An Efficient Analog Convolutional Neural Network Hardware Accelerator Enabled by a Novel Memoryless Architecture for Insect-Sized Robots

Iman Dadras, Mohammad Hasan Ahmadilivani, Saoni Banerji, J. Raik, Alvo Abloo
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引用次数: 1

Abstract

For decades, miniaturization of robots has gained considerable attention due to the exciting applications of insect-sized robots, such as ambient monitoring. However, scaling down the robots’ dimensions reduces energy availability drastically for sensors and controllers. It has prohibited many successful technologies tested in larger-scale robots from application in insect-sized ones. As a result, insect-sized robots’ power and sensor/control autonomy is an open field of research. One of these technologies is Convolutional Neural Networks (CNN). This paper presents novelty in different levels of abstraction from architectural to transistor-level that drastically reduces the CNN power to comply with the low power budget of insect-sized robots. Analog computation is utilized for its compactness, and an architecture is devised to simplify the analog circuitry. Proposed convolutional filters, showing four orders of magnitude higher efficiency with respect to the state-of-the-art, consume merely 1.5 nW/image with 92% accuracy and promise application of CNN-based controllers in insect-sized robots.
基于新型无记忆结构的高效模拟卷积神经网络硬件加速器
几十年来,由于昆虫大小的机器人在环境监测等领域的令人兴奋的应用,机器人的小型化得到了相当大的关注。然而,缩小机器人的尺寸会大大降低传感器和控制器的能量可用性。它禁止许多在大型机器人上测试成功的技术在昆虫大小的机器人上应用。因此,昆虫大小的机器人的动力和传感器/控制自主性是一个开放的研究领域。其中一项技术是卷积神经网络(CNN)。本文提出了从架构到晶体管的不同抽象层次的新颖性,从而大大降低了CNN的功率,以满足昆虫大小的机器人的低功耗预算。利用模拟计算的紧凑性,设计了一种结构来简化模拟电路。与最先进的卷积滤波器相比,所提出的卷积滤波器的效率提高了四个数量级,仅消耗1.5 nW/图像,准确率为92%,并有望在昆虫大小的机器人中应用基于cnn的控制器。
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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