Mutual information (MI) is one of the most popular and widely used similarity measures in image registration. In traditional registration processes, MI is computed in each optimization step to measure the similarity between the reference image and the moving image. The presumption is that whenever MI reaches its highest value, this corresponds to the best match. This paper shows that this presumption is not always valid and this leads to registration error. To overcome this problem, we propose to use point similarity measures (PSM) which in contrast to MI allows constant intensity dependence estimates called point similarity functions (PSF). We compare MI and PSM similarity measures in terms of registration misalignment errors. The result o...
Abstract. Mutual information has been widely used in image registration as an effective similarity m...
The maximization of mutual information has been very successful at the registration of images. Unfor...
Incorporating spatial features with mutual information (MI) has demonstrated superior image registra...
Mutual information (MI) is one of the most popular and widely used similarity measures in image regi...
Measures of image similarity that inspect the intensity probability distribution of the images have ...
High-dimensional non-rigid registration of multi-modal data requires similarity measures with two im...
In this paper, we propose a novel approach for estimating image similarity. This measure is of impor...
Mutual information (MI) is a popular entropy-based similarity measure used in the medical imaging fi...
Image registration is an important topic for many imaging systems and computer vision applications. ...
Almost all imaging systems require some form of registration. A few examples are aligning medical im...
In image-guided intervention, 2D/3D medical image registration is crucial to supply the clinician sp...
Nowadays, information-theoretic similarity measures, especially the mutual information and its deriv...
Abstract. Mutual Information (MI) and Normalised Mutual Information (NMI) have enjoyed success as im...
We propose a similarity measure for comparing digital images. The technique is based on mutual info...
Image registration is widely used in different areas, including medical image analysis and image pro...
Abstract. Mutual information has been widely used in image registration as an effective similarity m...
The maximization of mutual information has been very successful at the registration of images. Unfor...
Incorporating spatial features with mutual information (MI) has demonstrated superior image registra...
Mutual information (MI) is one of the most popular and widely used similarity measures in image regi...
Measures of image similarity that inspect the intensity probability distribution of the images have ...
High-dimensional non-rigid registration of multi-modal data requires similarity measures with two im...
In this paper, we propose a novel approach for estimating image similarity. This measure is of impor...
Mutual information (MI) is a popular entropy-based similarity measure used in the medical imaging fi...
Image registration is an important topic for many imaging systems and computer vision applications. ...
Almost all imaging systems require some form of registration. A few examples are aligning medical im...
In image-guided intervention, 2D/3D medical image registration is crucial to supply the clinician sp...
Nowadays, information-theoretic similarity measures, especially the mutual information and its deriv...
Abstract. Mutual Information (MI) and Normalised Mutual Information (NMI) have enjoyed success as im...
We propose a similarity measure for comparing digital images. The technique is based on mutual info...
Image registration is widely used in different areas, including medical image analysis and image pro...
Abstract. Mutual information has been widely used in image registration as an effective similarity m...
The maximization of mutual information has been very successful at the registration of images. Unfor...
Incorporating spatial features with mutual information (MI) has demonstrated superior image registra...