SCIMITAR:基于事件的相机随机计算内存原位跟踪架构

IF 2.7 3区 计算机科学 Q2 COMPUTER SCIENCE, HARDWARE & ARCHITECTURE IEEE Transactions on Computer-Aided Design of Integrated Circuits and Systems Pub Date : 2024-08-27 DOI:10.1109/TCAD.2024.3448227
Wojciech Romaszkan;Jiyue Yang;Alexander Graening;Vinod K. Jacob;Jishnu Sen;Sudhakar Pamarti;Puneet Gupta
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引用次数: 0

摘要

基于事件的相机提供低延迟、高动态范围的稀疏格式成像数据,非常适合高速物体跟踪。用处理传统相机数据的方法处理这种稀疏数据需要大量不必要的计算,因此很难利用高有效帧频进行实时处理。在这项工作中,我们提出了一种基于事件的摄像机数据高速物体跟踪加速器。SCIMITAR 结合了数字内存随机计算、原位随机流生成以及利用输入稀疏性的多重优化。SCIMITAR 提供了无与伦比的性能,其延迟和能耗随稀疏性而缩减。我们通过对定制设计的内存计算(CIM)宏和数字电路进行电路级仿真,展示了 SCIMITAR 在物体跟踪应用中的性能。我们实现了 26k 帧/秒的帧处理速度,每帧有 100 个兴趣区域,跟踪精度相当于或优于最先进的水平。该加速器在一系列基于事件的视觉数据集上实现了 71 TOP/S 的峰值吞吐量和 733 至 1702 TOP/S/W 的能效,比其他 CIM 解决方案高出 5 美元/次。
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SCIMITAR: Stochastic Computing In-Memory In-Situ Tracking ARchitecture for Event-Based Cameras
Event-based cameras offer low latency and high-dynamic range imaging data in a sparse format that is well-suited for high-speed object tracking. Processing this sparse data in the same way as traditional camera data requires a great deal of unnecessary computation, making it difficult to take advantage of the high-effective frame rate for real-time processing. In this work, we propose an accelerator for high-speed object tracking on event-based camera data. SCIMITAR combines digital in-memory stochastic computing, in-situ stochastic stream generation, and multiple optimizations for utilizing input sparsity. SCIMITAR provides unparalleled performance with latency and energy that scale with sparsity. We demonstrate SCIMITAR performance on an object tracking application using circuit-level simulations of custom-designed compute-in-memory (CIM) macros and digital circuits. We achieve a frame processing rate of 26k frames/s with 100 regions-of-interest per frame and equivalent or better than state-of-the-art tracking accuracy. The accelerator achieves a peak throughput of 71 TOP/S and energy efficiency of 733 to 1702 TOP/S/W demonstrated on a range of event-based vision datasets, which is $5\times $ higher than other CIM solutions.
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来源期刊
CiteScore
5.60
自引率
13.80%
发文量
500
审稿时长
7 months
期刊介绍: The purpose of this Transactions is to publish papers of interest to individuals in the area of computer-aided design of integrated circuits and systems composed of analog, digital, mixed-signal, optical, or microwave components. The aids include methods, models, algorithms, and man-machine interfaces for system-level, physical and logical design including: planning, synthesis, partitioning, modeling, simulation, layout, verification, testing, hardware-software co-design and documentation of integrated circuit and system designs of all complexities. Design tools and techniques for evaluating and designing integrated circuits and systems for metrics such as performance, power, reliability, testability, and security are a focus.
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