一个评估光流性能的信度框架

Q4 Computer Science
Patricia Márquez-Valle
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引用次数: 0

摘要

光流(OF)是广泛的决策支持系统的输入,如汽车驾驶辅助,无人机引导或医疗诊断。在这些实际情况下,缺乏地面真值迫使使用从序列或计算光流本身计算的数量来评估of质量。这些数量通常被称为信心度量(Confidence Measures, CM)。即使我们有适当的置信度度量,我们仍然需要一种方法来评估其丢弃像素的能力,因为OF容易产生较大的误差。目前的方法仅提供对CM性能的描述性评估,但这些方法不能公平地比较不同的置信度和光流算法。因此,定义一个框架和光流性能评估的总体路线图是至关重要的。本文提供了一个框架,能够在决策支持系统确定的置信水平下,决定哪对“光流-置信测度”(OF-CM)最适合于光流误差边界。为了设计这个框架,我们涵盖了以下几点:1)描述性分数。作为第一步,我们总结并分析了光流算法输出不准确的来源。其次,我们提出了几个描述性图,直观地评估CM对OF误差边界的能力。除了描述性图之外,给定一个表示OF-CM约束错误能力的图,我们提供了一个数字分数,根据其递减的轮廓对图进行分类,即评估CM性能的分数。2)统计框架。我们提供了一个比较框架,评估最适合的OF-CM对使用两阶段级联过程的错误边界。首先,我们用描述图的方法来评估置信测度的预测值。然后,对于在训练帧上计算的描述性图的样本,我们获得了一个通用曲线,该曲线将用于没有基础真值的序列。作为第二步,我们通过方差分析评估获得的一般曲线及其真正反映置信度量的预测值的能力,使用跨列车框架的可变性。所提出的框架已显示其在临床决策支持系统的应用潜力。特别地,我们分析了不同的图像伪影,如噪声和衰减对心脏诊断系统光流输出的影响,并改进了支气管树内导航对支气管镜检查的影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A confidence framework for the assessment of optical flow performance
Optical Flow (OF) is the input of a wide range of decision support systems such as car driver assistance, UAV guiding or medical diagnose. In these real situations, the absence of ground truth forces to assess OF quality using quantities computed from either sequences or the computed optical flow itself. These quantities are generally known as Confidence Measures, CM. Even if we have a proper confidence measure we still need a way to evaluate its ability to discard pixels with an OF prone to have a large error. Current approaches only provide a descriptive evaluation of the CM performance but such approaches are not capable to fairly compare different confidence measures and optical flow algorithms. Thus, it is of prime importance to define a framework and a general road map for the evaluation of optical flow performance.  This thesis provides a framework able to decide which pairs ”optical flow - confidence measure” (OF-CM) are best suited for optical flow error bounding given a confidence level determined by a decision support system. To design this framework we cover the following points: 1) Descriptive scores. As a first step, we summarize and analyze the sources of inaccuracies in the output of optical flow algorithms. Second, we present several descriptive plots that visually assess CM capabilities for OF error bounding. In addition to the descriptive plots, given a plot representing OF-CM capabilities to bound the error, we provide a numeric score that categorizes the plot according to its decreasing profile, that is, a score assessing CM performance. 2) Statistical framework. We provide a comparison framework that assesses the best suited OF-CM pair for error bounding that uses a two stage cascade process. First of all we assess the predictive value of the confidence measures by means of a descriptive plot. Then, for a sample of descriptive plots computed over training frames, we obtain a generic curve that will be used for sequences with no ground truth. As a second step, we evaluate the obtained general curve and its capabilities to really reflect the predictive value of a confidence measure using the variability across train frames by means of ANOVA. The presented framework has shown its potential in the application on clinical decision support systems. In particular, we have analyzed the impact of the different image artifacts such as noise and decay to the output of optical flow in a cardiac diagnose system and we have improved the navigation inside the bronchial tree on bronchoscopy.
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来源期刊
Electronic Letters on Computer Vision and Image Analysis
Electronic Letters on Computer Vision and Image Analysis Computer Science-Computer Vision and Pattern Recognition
CiteScore
2.50
自引率
0.00%
发文量
19
审稿时长
12 weeks
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