A Distance Measure and a Feature Likelihood Map Concept for Scale-Invariant Model Matching

作者:Ivan Laptev, Tony Lindeberg

摘要

This paper presents two approaches for evaluating multi-scale feature-based object models. Within the first approach, a scale-invariant distance measure is proposed for comparing two image representations in terms of multi-scale features. Based on this measure, the maximisation of the likelihood of parameterised feature models allows for simultaneous model selection and parameter estimation.

论文关键词:matching, scale-space, image features, tracking, recognition, multi-scale representations

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论文官网地址:https://doi.org/10.1023/A:1022947906601