Robust Image Registration via Empirical Mode Decomposition

11/12/2017
by   Reza Abbasi-Asl, et al.
0

Spatially varying intensity noise is a common source of distortion in images. Bias field noise is one example of such distortion that is often present in the magnetic resonance (MR) images. In this paper, we first show that empirical mode decomposition (EMD) can considerably reduce the bias field noise in the MR images. Then, we propose two hierarchical multi-resolution EMD-based algorithms for robust registration of images in the presence of spatially varying noise. One algorithm (LR-EMD) is based on registering EMD feature-maps of both floating and reference images in various resolution levels. In the second algorithm (AFR-EMD), we first extract an average feature-map based on EMD from both floating and reference images. Then, we use a simple hierarchical multi-resolution algorithm based on downsampling to register the average feature-maps. Both algorithms achieve lower error rate and higher convergence percentage compared to the intensity-based hierarchical registration. Specifically, using mutual information as the similarity measure, AFR-EMD achieves 42 transformation compared to intensity-based hierarchical registration. For LR-EMD, the error rate is 32 transformation.

READ FULL TEXT

page 3

page 4

page 7

page 10

page 11

page 12

research
12/12/2017

Image Registration for the Alignment of Digitized Historical Documents

In this work, we conducted a survey on different registration algorithms...
research
07/18/2009

Registration of Standardized Histological Images in Feature Space

In this paper, we propose three novel and important methods for the regi...
research
04/18/2016

Most Likely Separation of Intensity and Warping Effects in Image Registration

This paper introduces a class of mixed-effects models for joint modeling...
research
02/05/2010

The Influence of Intensity Standardization on Medical Image Registration

Acquisition-to-acquisition signal intensity variations (non-standardness...
research
07/18/2009

Fully Automatic 3D Reconstruction of Histological Images

In this paper, we propose a computational framework for 3D volume recons...
research
05/24/2012

Locally Orderless Registration

Image registration is an important tool for medical image analysis and i...
research
09/27/2022

LapGM: A Multisequence MR Bias Correction and Normalization Model

A spatially regularized Gaussian mixture model, LapGM, is proposed for t...

Please sign up or login with your details

Forgot password? Click here to reset