Fast-Match: Fast Affine Template Matching |
| |
Authors: | Simon Korman Daniel Reichman Gilad Tsur Shai Avidan |
| |
Affiliation: | 1.Computer Science Department,University of California,Los Angeles,USA;2.Tel Aviv University,Tel Aviv,Israel;3.Institute of Cognitive and Brain Sciences,University of California,Berkeley,USA;4.Weizmann Institute,Rehovot,Israel;5.Yahoo Research Labs,Haifa,Israel;6.School of Electrical Engineering,Tel Aviv University,Tel Aviv,Israel |
| |
Abstract: | Fast-Match is a fast algorithm for approximate template matching under 2D affine transformations that minimizes the Sum-of-Absolute-Differences (SAD) error measure. There is a huge number of transformations to consider but we prove that they can be sampled using a density that depends on the smoothness of the image. For each potential transformation, we approximate the SAD error using a sublinear algorithm that randomly examines only a small number of pixels. We further accelerate the algorithm using a branch-and-bound-like scheme. As images are known to be piecewise smooth, the result is a practical affine template matching algorithm with approximation guarantees, that takes a few seconds to run on a standard machine. We perform several experiments on three different datasets, and report very good results. |
| |
Keywords: | |
本文献已被 SpringerLink 等数据库收录! |
|