An Empirical Study on Software Aging of Long-Running Object Detection Algorithms

R. Pietrantuono, Domenico Cotroneo, E. Andrade, F. Machida
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引用次数: 1

Abstract

Efficient and effective object detection is a key problem in Computer Vision. Numerous object detection algorithms have been developed, whose aim is to achieve two conflicting goals, namely accuracy and efficiency, while being executed in real-time with high robustness. Many of these algorithms must run for an extended period of time, i.e., in video surveillance or in self-driving cars – a working condition that make them subject to the risk of software aging.In this work, we focus on evaluating several object detection algorithms to understand if and to what extent they are affected by software aging. A measurement-based aging approach was adopted, with a series of long-running tests and subsequent data analysis. The results report significant trends of performance degradation, sometimes leading to aging-related failures, as well as memory consumption trends, which turned out to be the main issue across all the experiments.
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长时间目标检测算法的软件老化实证研究
高效的目标检测是计算机视觉中的一个关键问题。目前已经开发了许多目标检测算法,其目的是在实现精度和效率两个相互冲突的目标的同时,具有高鲁棒性和实时性。其中许多算法必须长时间运行,例如在视频监控或自动驾驶汽车中,这种工作条件使它们面临软件老化的风险。在这项工作中,我们专注于评估几种目标检测算法,以了解它们是否以及在多大程度上受到软件老化的影响。采用了基于测量的老化方法,并进行了一系列长期运行的测试和随后的数据分析。结果报告了性能下降的显著趋势,有时会导致与老化相关的故障,以及内存消耗趋势,这是所有实验中的主要问题。
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