The intensity image is consistent with human vision, but sometimes the target cannot be completely distinguished from the background. Polarization image can distinguish the target more effectively and highlight the contour and texture details, although it does not conform to human visual perception. By employing image fusion techniques, these two types of images can be combined to effectively reveal multi-dimensional features. This fusion process compensates for the limitations of information obtained from a single image sensor, providing more reliable and accurate target information.
Researchers led by Prof. Ming Zhao at Huazhong University of Science and Technology (HUST), China, are interested in image fusion algorithm, which is to fuse two images with different information dimensions into one image. Their idea is to preprocess the polarization image and visible image, decompose the image into high frequency sub-bands and low frequency sub-bands by the nonsubsampled contourlet transform (NSCT), fuse the sub-bands according to the fusion rules of the designed preserved edges, and finally obtain the fusion image by NSCT inverse transformation. The researchers predict potential applications, such as using fused images for electrical grid video surveillance, that could allow targets in some complex environments to be highlighted. The work entitled “Research on a multi-dimensional image information fusion algorithm based on NSCT transform” was published on Frontiers of Optoelectronics (published on Jan. 23, 2024).
Journal
Frontiers of Optoelectronics
Method of Research
Experimental study
Subject of Research
Not applicable
Article Title
Research on a multi-dimensional image information fusion algorithm based on NSCT transform
Article Publication Date
23-Jan-2024