MEVBench:一个移动计算机视觉基准测试套件

Jason Clemons, Haishan Zhu, S. Savarese, T. Austin
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引用次数: 73

摘要

移动视觉应用的增长,加上移动平台的性能限制,导致人们越来越需要了解计算机视觉应用。计算密集型移动视觉应用,如增强现实或对象识别,对现有嵌入式平台的性能和功耗要求很高,通常会导致应用质量下降。通过更好地了解这个不断增长的应用程序空间,可以更有效地优化未来的嵌入式平台。在这项工作中,我们介绍并评估了一个名为MEVBench的移动嵌入式视觉应用程序的自定义基准套件。MEVBench提供了广泛的移动视觉应用,如人脸检测,特征分类,目标跟踪和特征提取。为了更好地理解架构级别的移动视觉处理特征,我们分析了许多算法的单线程和多线程实现,以评估性能、可扩展性和内存特征。我们提供了架构可以提高嵌入式系统中这些应用程序性能的主要领域的见解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
MEVBench: A mobile computer vision benchmarking suite
The growth in mobile vision applications, coupled with the performance limitations of mobile platforms, has led to a growing need to understand computer vision applications. Computationally intensive mobile vision applications, such as augmented reality or object recognition, place significant performance and power demands on existing embedded platforms, often leading to degraded application quality. With a better understanding of this growing application space, it will be possible to more effectively optimize future embedded platforms. In this work, we introduce and evaluate a custom benchmark suite for mobile embedded vision applications named MEVBench. MEVBench provides a wide range of mobile vision applications such as face detection, feature classification, object tracking and feature extraction. To better understand mobile vision processing characteristics at the architectural level, we analyze single and multithread implementations of many algorithms to evaluate performance, scalability, and memory characteristics. We provide insights into the major areas where architecture can improve the performance of these applications in embedded systems.
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