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Learning a Fast Emulator of a Binary Decision Process

机译:学习二进制决策过程的快速仿真器

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摘要

Computation time is an important performance characteristic of computer vision algorithms. This paper shows how existing (slow) binary-valued decision algorithms can be approximated by a trained WaldBoost classifier, which minimises the decision time while guaranteeing predefined approximation precision. The core idea is to take an existing algorithm as a black box performing some useful binary decision task and to train the WaldBoost classifier as its emulator. Two interest point detectors, Hessian-Laplace and Kadir-Brady saliency detector, are emulated to demonstrate the approach. The experiments show similar repeatability and matching score of the original and emulated algorithms while achieving a 70-fold speed-up for Kadir-Brady detector.
机译:计算时间是计算机视觉算法的重要性能特征。本文展示了如何通过训练有素的WaldBoost分类器对现有(慢速)二进制值决策算法进行近似,该分类器可以在确保预定义近似精度的同时,将决策时间降至最短。核心思想是将现有算法作为执行某些有用的二进制决策任务的黑匣子,并将WaldBoost分类器训练为仿真器。仿真了两个兴趣点检测器,Hessian-Laplace和Kadir-Brady显着性检测器,以演示该方法。实验表明,与原始算法和仿真算法相似的可重复性和匹配分数,同时使Kadir-Brady检测器的速度提高了70倍。

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