Qualitative Evaluation of Detection and Tracking Performance

S. Sankaranarayanan, F. Brémond, D. Tax
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引用次数: 1

Abstract

A new evaluation approach for detection and tracking systems is presented in this work. Given an algorithm that detects people and simultaneously tracks them, we evaluate its output by considering the complexity of the input scene. Some videos used for the evaluation are recorded using the Kinect sensor which provides for an automated ground truth acquisition system. To analyze the algorithm performance, a number of reasons due to which an algorithm might fail is investigated and quantified over the entire video sequence. A set of features called Scene Complexity measures are obtained for each input frame. The variability in the algorithm performance is modeled by these complexity measures using a polynomial regression model. From the regression statistics, we show that we can compare the performance of two different algorithms and also quantify the relative influence of the scene complexity measures on a given algorithm.
检测和跟踪性能的定性评价
本文提出了一种新的检测与跟踪系统评估方法。给定一种检测人并同时跟踪他们的算法,我们通过考虑输入场景的复杂性来评估其输出。一些用于评估的视频是使用Kinect传感器录制的,该传感器提供了一个自动化的地面真相采集系统。为了分析算法的性能,研究了整个视频序列中可能导致算法失败的一些原因并对其进行了量化。为每个输入帧获得一组称为场景复杂性度量的特征。算法性能的可变性由这些复杂度度量使用多项式回归模型来建模。从回归统计中,我们可以比较两种不同算法的性能,并量化场景复杂性度量对给定算法的相对影响。
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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