Tradeoffs between quality of results and resource consumption in a recognition system

M. DeVore, R. Chamberlain, G. Engel, J. O’Sullivan, M. Franklin
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引用次数: 4

Abstract

The implementation of computational systems to perform challenging operations often involves balancing the performance specification, system throughput, and available system resources. For problems of automatic target recognition (ATR), these three quantities of interest are the probability of classification error, the rate at which regions of interest are processed, and the capabilities of the underlying hardware (which is a function of the available computational resources and available power). An understanding of the inter-relationships between these factors can be an aid in making informed choices while exploring competing design possibilities. Combining characterizations of ATR performance, which yield probability of classification error as a function of target model complexity, with analytical models of computational performance, which yield throughput as a function of target model complexity and available resources, we can form a set of parametric curves which relate the quality of the results to the resources consumed.
识别系统中结果质量与资源消耗之间的权衡
执行具有挑战性的操作的计算系统的实现通常涉及到平衡性能规范、系统吞吐量和可用的系统资源。对于自动目标识别(ATR)问题,这三个感兴趣的量是分类错误的概率、感兴趣区域的处理速率和底层硬件的能力(这是可用计算资源和可用功率的函数)。了解这些因素之间的相互关系有助于在探索相互竞争的设计可能性时做出明智的选择。将ATR性能的特征(分类错误概率作为目标模型复杂性的函数)与计算性能的分析模型(吞吐量作为目标模型复杂性和可用资源的函数)结合起来,我们可以形成一组将结果质量与消耗的资源联系起来的参数曲线。
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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