专题讨论:多少质量才算足够的质量?近似设计的可接受性

Isaías B. Felzmann, João Fabrício Filho, Juliane Regina de Oliveira, L. Wanner
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引用次数: 1

摘要

近似系统旨在提高效率,但可能会降低结果的质量。这些系统中的输出质量通常是通过使用RMSE、MAE、PSNR等指标或特定于应用程序的指标(如图像的结构相似性(SSIM))与精确结果相比较来量化的。此外,系统通常被设计为在给定的最低质量要求下实现效率最大化。通常很难确定应用程序的质量需求应该是什么,更不用说系统了。因此,固定的质量需求可能会过于保守,并留下优化机会。在这项工作中,我们提出了一种基于结果的有用性而不是质量来评估近似系统的不同方法。我们的方法定性地决定了近似结果在不同处理管道中的可接受性。为了演示该方法,我们实现了三个图像和信号处理应用,包括图像分类、图像识别和频率估计。我们的研究结果表明,设计近似系统以保证可接受性可以产生比文献中通常采用的保守质量阈值多20%的有效结果,允许更高的错误率,从而降低能源成本。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Special Session: How much quality is enough quality? A case for acceptability in approximate designs
Approximate systems are designed to offer improved efficiency with potentially reduced quality of results. Quality of output in these systems is typically quantified in comparison to a precise result using metrics such as RMSE, MAE, PSNR, or application-specific metrics such as structural similarity of images (SSIM). Furthermore, systems are typically designed to maximize efficiency for a given minimum quality requirement. It is often difficult to determine what this quality requirement should be for an application, let alone a system. Thus, a fixed quality requirement may be overly conservative, and leave optimization opportunities on the table. In this work, we present a different approach to evaluate approximate systems based on the usefulness of results instead of quality. Our method qualitatively determines the acceptability of approximate results within different processing pipelines. To demonstrate the method, we implement three image and signal processing applications featuring scenarios of image classification, image recognition, and frequency estimation. Our results show that designing approximate systems to guarantee acceptability can produce up to 20% more valid results than the conservative quality thresholds commonly adopted in the literature, allowing for higher error rates and, consequently, lower energy cost.
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