Spatially-varying intensity noise is a common source of distortion in medical images and is often associated with reduced accuracy in medical image registration. In this paper, we propose two multi-resolution image registration algorithms based on Empirical Mode Decomposition (EMD) that are robust against additive spatially-varying noise. EMD is a multi-resolution tool that decomposes a signal into several principle patterns and residual components. Our first proposed algorithm (LR-EMD) is based on the registration of EMD feature maps from both floating and reference images in various resolutions. In the second algorithm (AFR-EMD), we first extract a single average feature map based on EMD and then use a simple hierarchical multi-resolution...
Much biomedical and medical research relies on the collection of ever-larger amounts of image data (...
We present a fast and accurate framework for registra-tion of multi-modal volumetric images based on...
Image registration is the process of estimating the optimal transformation that aligns different ima...
A multiscale image registration technique is presented for the registration of medical images that c...
International audienceRegistration of multi-modal medical images is an essential pre-processing step...
Multiscale image registration techniques are presented for the registration of medical images using ...
Images of different modality are registered using a unimodal image registration program (\u201cPatch...
Registration performance can significantly deteriorate when image regions do not comply with model a...
For the rigid registration of multi-modality medical images, mutual information (MI) technique is un...
We propose new feature-based methods for rigid and affine image registration. These are compared to ...
We present a fast and accurate framework for registration of multi-modal volumetric images based on ...
Registration is an important component of medical image analysis and for analysing large amounts of ...
Accurate inter-subject registration of magnetic resonance (MR) images of the human brain is required...
Registration performance can significantly deteriorate when image regions do not comply with model a...
Abstract. We propose a new, adaptive local measure based on gradient orientation similarity for the ...
Much biomedical and medical research relies on the collection of ever-larger amounts of image data (...
We present a fast and accurate framework for registra-tion of multi-modal volumetric images based on...
Image registration is the process of estimating the optimal transformation that aligns different ima...
A multiscale image registration technique is presented for the registration of medical images that c...
International audienceRegistration of multi-modal medical images is an essential pre-processing step...
Multiscale image registration techniques are presented for the registration of medical images using ...
Images of different modality are registered using a unimodal image registration program (\u201cPatch...
Registration performance can significantly deteriorate when image regions do not comply with model a...
For the rigid registration of multi-modality medical images, mutual information (MI) technique is un...
We propose new feature-based methods for rigid and affine image registration. These are compared to ...
We present a fast and accurate framework for registration of multi-modal volumetric images based on ...
Registration is an important component of medical image analysis and for analysing large amounts of ...
Accurate inter-subject registration of magnetic resonance (MR) images of the human brain is required...
Registration performance can significantly deteriorate when image regions do not comply with model a...
Abstract. We propose a new, adaptive local measure based on gradient orientation similarity for the ...
Much biomedical and medical research relies on the collection of ever-larger amounts of image data (...
We present a fast and accurate framework for registra-tion of multi-modal volumetric images based on...
Image registration is the process of estimating the optimal transformation that aligns different ima...