RAODAT: An Energy-Efficient Reconfigurable AI-based Object Detection and Tracking Processor with Online Learning

Yuchuan Gong, Qingsong Liu, Luying Que, Conghan Jia, Jiahui Huang, Ye Liu, Jiayan Gan, Yuxiang Xie, Yong Zhou, Lili Liu, Xiaoqiang Xiang, L. Chang, Jun Zhou
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引用次数: 3

Abstract

Smart robots (e.g. drones) for object detection & tracking demand for embedded intelligent processors. Neural network (NN) processors have been designed to accelerate NN for pattern recognition [1] [2]. However, these designs lack special processing engines for object detection & tracking such as bounding box (bbox) calculation and selection. Also, their architectures are designed for general AI tasks resulting in redundancy/inefficiency in performing object detection & tracking. An object detection processor has been proposed previously [3], but it only supports specific detection NN and does not support object tracking. Object tracking processors have also been proposed [4] [5], but these designs do not support object detection and thus cannot be used for object search. This paper presents RAODAT, which to the best of our knowledge is the first reconfigurable AI-based object detection and tracking processor with online learning. It has three key features: 1) An object detection & tracking architecture with reconfigurable NN and detection/tracking engines for programmable object detection & tracking tasks, 2) An object learning architecture with shared NN inference/learning engine and automatic label generation engine to support object tracking with online learning, 3) Layer- & stride-aware computing techniques to improve the NN computation efficiency.
RAODAT:一种具有在线学习功能的高能效可重构人工智能目标检测与跟踪处理器
智能机器人(如无人机)对嵌入式智能处理器的目标检测和跟踪需求。神经网络处理器被设计用来加速神经网络模式识别[1]b[2]。然而,这些设计缺乏用于目标检测和跟踪的特殊处理引擎,如边界框(bounding box, bbox)的计算和选择。此外,它们的架构是为通用人工智能任务设计的,导致在执行对象检测和跟踪时冗余/效率低下。先前已经提出了一种目标检测处理器[3],但它只支持特定的检测神经网络,不支持目标跟踪。目标跟踪处理器也被提出[4][5],但这些设计不支持目标检测,因此不能用于目标搜索。本文提出了RAODAT,据我们所知,它是第一个可重构的基于人工智能的目标检测和跟踪处理器,具有在线学习功能。它有三个关键特征:1)具有可重构神经网络和可编程对象检测和跟踪任务的检测/跟踪引擎的对象检测和跟踪架构;2)具有共享神经网络推理/学习引擎和自动标签生成引擎的对象学习架构,以支持在线学习的对象跟踪;3)层感知和跨距感知计算技术,以提高神经网络的计算效率。
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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