利用分布式遗传算法标定运动检测系统

A. Bevilacqua
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引用次数: 1

摘要

用于视觉监视和监控目的的运动检测系统多年来引起了计算机视频界的兴趣。这些应用程序的主要任务是识别(和跟踪)移动目标。通常,这些应用程序需要调优大量参数才能正常工作。在交通监控应用中,我们开发了大约30个参数,其中检测算法被认为是最优的。遗传算法(GAs)是一种优化技术,它涉及从解的总体而不是从单个点进行搜索。尽管它们通常非常耗时,但它们具有很高的内在并行性。因此,本文展示了在工作站网络上分布式实现遗传算法如何成功地完成运动检测系统内的参数优化任务,并在较短的时间内获得优异的性能
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Calibrating a motion detection system by means of a distributed genetic algorithm
Motion detection systems for visual surveillance and monitoring purposes have aroused interest in the computer video community for many years. The main task of these applications is to identify (and track) moving targets. Usually, these applications requires that a large number of parameters is tuned in order to work properly. In the traffic monitoring application we have developed about thirty parameters concerning the detection algorithm have been considered as to be optimized. Genetic algorithms (GAs) are an optimization technique which involves a search from a population of solutions rather than from a single point. Although they usually are very time-consuming, they owe a high intrinsic parallelism. Accordingly, this paper shows how a distributed implementation of a GA over a network of workstations can successfully accomplish the parameter optimization task within a motion detection system and achieve excellent performance within a reduced amount of time
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