Towards causal physical error discovery in video analytics systems

Ted Shaowang, Jinjin Zhao, Stavros Sintos, S. Krishnan
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Abstract

Video analytics systems based on deep learning models are often opaque and brittle and require explanation systems to help users debug. Current model explanation system are very good at giving literal explanations of behavior in terms of pixel contributions but cannot integrate information about the physical or systems processes that might influence a prediction. This paper introduces the idea that a simple form of causal reasoning, called a regression discontinuity design, can be used to associate changes in multiple key performance indicators to physical real world phenomena to give users a more actionable set of video analytics explanations. We overview the system architecture and describe a vision of the impact that such a system might have.
视频分析系统中的因果物理错误发现
基于深度学习模型的视频分析系统通常是不透明和脆弱的,需要解释系统来帮助用户调试。目前的模型解释系统非常擅长根据像素贡献给出行为的字面解释,但不能整合可能影响预测的物理或系统过程的信息。本文介绍了一种简单形式的因果推理,称为回归不连续设计,可用于将多个关键性能指标的变化与物理现实世界的现象联系起来,从而为用户提供一套更可操作的视频分析解释。我们概述了系统架构,并描述了这样一个系统可能产生的影响。
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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