Video fusion performance assessment based on spatial-temporal phase congruency

Abstract Most image or video fusion quality metrics are designed to evaluate different video fusion methods for spatial–temporal extraction. And there is limited research on the evaluation of spatial–temporal consistency. In this paper, a video fusion quality metric is proposed to evaluate different fusion methods for spatial–temporal consistency, where spatial–temporal phase congruency is employed as a feature to be compared and 3D zero-mean normalized cross-correlation is employed as the similarity measure. Firstly, the spatial–temporal phase congruency maps for input and fused videos are computed using a set of predefined 3D Log-Gabor filters. Then the spatial–temporal phase congruency maps are divided into many non-overlapped spatial–temporal blocks and a local block-based quality metric is defined by performing 3D zero-mean normalized cross-correlation on the relevant spatial–temporal phase congruency maps of the input and fused videos. Finally, the global quality metric is constructed as the weighted average of all the block-based quality metrics. The required local and global weights are defined by the spatial–temporal structure tensor. Several sets of experiments demonstrate the validity and feasibility of the proposed metric. Moreover, the proposed metric shows higher stability and robustness than some other metrics in a noisy environment.

[1]  Long Wang,et al.  Multimodality image fusion by using both phase and magnitude information , 2013, Pattern Recognit. Lett..

[2]  Antony J Hodgson,et al.  Bone surface localization in ultrasound using image phase-based features. , 2009, Ultrasound in medicine & biology.

[3]  Richard Baraniuk,et al.  The Dual-tree Complex Wavelet Transform , 2007 .

[4]  José Duato,et al.  Efficient 3D wavelet transform decomposition for video compression , 2001, Proceedings Second International Workshop on Digital and Computational Video.

[5]  Long Wang,et al.  A novel video fusion framework using surfacelet transform , 2012 .

[6]  Rick S. Blum,et al.  Theoretical analysis of an information-based quality measure for image fusion , 2008, Inf. Fusion.

[7]  Vladimir Petrovic,et al.  Objective image fusion performance measure , 2000 .

[8]  Robert Rohling,et al.  Bone Segmentation and Fracture Detection in Ultrasound Using 3D Local Phase Features , 2008, MICCAI.

[9]  Xiaokang Yang,et al.  Spatiotemporal Phase Congruency Based Invariant Features for Human Behavior Classification , 2009, PCM.

[10]  Zheng Liu,et al.  Objective Assessment of Multiresolution Image Fusion Algorithms for Context Enhancement in Night Vision: A Comparative Study , 2012, IEEE Transactions on Pattern Analysis and Machine Intelligence.

[11]  Timothy F. Cootes,et al.  Dynamic image fusion performance evaluation , 2007, 2007 10th International Conference on Information Fusion.

[12]  Leonard McMillan,et al.  Multispectral Bilateral Video Fusion , 2007, IEEE Transactions on Image Processing.

[13]  Wen Gao,et al.  Novel Spatio-Temporal Structural Information Based Video Quality Metric , 2012, IEEE Transactions on Circuits and Systems for Video Technology.

[14]  Peter Kovesi,et al.  Image Features from Phase Congruency , 1995 .

[15]  G. Qu,et al.  Information measure for performance of image fusion , 2002 .

[16]  David Zhang,et al.  FSIM: A Feature Similarity Index for Image Quality Assessment , 2011, IEEE Transactions on Image Processing.

[17]  Xinting Gao,et al.  Multiscale Corner Detection of Gray Level Images Based on Log-Gabor Wavelet Transform , 2007, IEEE Transactions on Circuits and Systems for Video Technology.

[18]  Gonzalo Pajares,et al.  A wavelet-based image fusion tutorial , 2004, Pattern Recognit..

[19]  Rick S. Blum,et al.  Theoretical analysis of correlation-based quality measures for weighted averaging image fusion , 2010, Inf. Fusion.

[20]  Zheng Liu,et al.  Phase congruence measurement for image similarity assessment , 2007, Pattern Recognit. Lett..

[21]  Thomas Fechner,et al.  Pixel-level image fusion: the case of image sequences , 1998, Defense, Security, and Sensing.

[22]  B. Lu,et al.  Medical Image Fusion with Adaptive Local Geometrical Structure and Wavelet Transform , 2011 .

[23]  A. Bovik,et al.  A universal image quality index , 2002, IEEE Signal Processing Letters.

[24]  Peter Kovesi,et al.  Phase Congruency Detects Corners and Edges , 2003, DICTA.

[25]  Christopher G. Harris,et al.  A Combined Corner and Edge Detector , 1988, Alvey Vision Conference.

[26]  Zheng Liu,et al.  A feature-based metric for the quantitative evaluation of pixel-level image fusion , 2008, Comput. Vis. Image Underst..

[27]  Johan Wiklund,et al.  Multidimensional Orientation Estimation with Applications to Texture Analysis and Optical Flow , 1991, IEEE Trans. Pattern Anal. Mach. Intell..

[28]  Long Wang,et al.  Video fusion performance evaluation based on structural similarity and human visual perception , 2012, Signal Process..