Modeling Score Distributions and Continuous Covariates: A Bayesian
Approach
- URL: http://arxiv.org/abs/2009.09583v1
- Date: Mon, 21 Sep 2020 02:41:20 GMT
- Title: Modeling Score Distributions and Continuous Covariates: A Bayesian
Approach
- Authors: Mel McCurrie, Hamish Nicholson, Walter J. Scheirer, Samuel Anthony
- Abstract summary: We develop a generative model of the match and non-match score distributions over continuous covariates.
We use mixture models to capture arbitrary distributions and local basis functions.
Three experiments demonstrate the accuracy and effectiveness of our approach.
- Score: 8.772459063453285
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- 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---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.
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