Modeling Score Distributions and Continuous Covariates: A Bayesian Approach

Mel McCurrie, Hamish Nicholson, W. Scheirer, Samuel E. Anthony
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引用次数: 1

Abstract

Computer Vision practitioners must thoroughly understand their model's performance, but conditional evaluation is complex and error-prone. In biometric verification, model performance over continuous covariates - known, real-number attributes of images that affect performance - is particularly challenging to study. We develop a generative model of the match and non-match score distributions over continuous covariates and perform inference with modern Bayesian methods. We use mixture models to capture arbitrary distributions and local basis functions to capture non-linear, multivariate trends. Three experiments demonstrate the accuracy and effectiveness of our approach. First, we study the relationship between age and face verification performance and find previous methods may overstate performance and confidence. Second, we study preprocessing for CNNs and find a highly non-linear, multivariate surface of model performance. Our method is accurate and data efficient when evaluated against previous synthetic methods. Third, we demonstrate the novel application of our method to pedestrian tracking and calculate variable thresholds and expected performance while controlling for multiple covariates.
评分分布和连续协变量建模:贝叶斯方法
计算机视觉从业者必须彻底了解他们的模型的性能,但条件评估是复杂的,容易出错。在生物识别验证中,模型性能在连续协变量(已知的,影响性能的图像的实数属性)上的研究尤其具有挑战性。我们开发了连续协变量上匹配和非匹配分数分布的生成模型,并使用现代贝叶斯方法进行推理。我们使用混合模型来捕捉任意分布,使用局部基函数来捕捉非线性、多变量趋势。三个实验验证了该方法的准确性和有效性。首先,我们研究了年龄与人脸验证性能之间的关系,发现以前的方法可能夸大了性能和信心。其次,我们研究了cnn的预处理,并找到了一个高度非线性的、多元的模型性能表面。与以往的合成方法相比,我们的方法是准确的,数据效率高。第三,我们展示了我们的方法在行人跟踪中的新应用,并在控制多个协变量的情况下计算变量阈值和预期性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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