Efficient Subpixel Refinement with Symbolic Linear Predictors

04/28/2018
by   Vincent Lui, et al.
0

We present an efficient subpixel refinement method usinga learning-based approach called Linear Predictors. Two key ideas are shown in this paper. Firstly, we present a novel technique, called Symbolic Linear Predictors, which makes the learning step efficient for subpixel refinement. This makes our approach feasible for online applications without compromising accuracy, while taking advantage of the run-time efficiency of learning based approaches. Secondly, we show how Linear Predictors can be used to predict the expected alignment error, allowing us to use only the best keypoints in resource constrained applications. We show the efficiency and accuracy of our method through extensive experiments.

READ FULL TEXT
research
03/06/2018

Learning SMaLL Predictors

We present a new machine learning technique for training small resource-...
research
07/03/2023

Multi-Predictor Fusion: Combining Learning-based and Rule-based Trajectory Predictors

Trajectory prediction modules are key enablers for safe and efficient pl...
research
09/30/2021

On simultaneous best linear unbiased prediction of future order statistics and associated properties

In this article, the joint best linear unbiased predictors (BLUPs) of tw...
research
10/15/2021

Learning the Koopman Eigendecomposition: A Diffeomorphic Approach

We present a novel data-driven approach for learning linear representati...
research
07/21/2017

SGNMT -- A Flexible NMT Decoding Platform for Quick Prototyping of New Models and Search Strategies

This paper introduces SGNMT, our experimental platform for machine trans...
research
04/13/2018

Active Learning for Efficient Testing of Student Programs

In this work, we propose an automated method to identify semantic bugs i...
research
10/19/2011

A Reliable Effective Terascale Linear Learning System

We present a system and a set of techniques for learning linear predicto...

Please sign up or login with your details

Forgot password? Click here to reset