Xilai LiXiaosong LiWuyang LiuXiaosong LiWuyang Liu
Infrared (IR) and visible image fusion is an important data fusion and image processing technique that can accurately and comprehensively integrate the thermal radiation and texture details of source images. However, existing methods neglect the high-contrast fusion problem, leading to suboptimal fusion performance when thermal radiation target information in IR images is replaced by high-contrast information in visible images. To address this limitation, we propose a contrast-balanced framework for IR and visible image fusion. Specifically, a novel contrast balance strategy is proposed to process visible images and reduce energy while allowing for detailed compensation of overexposed areas. Moreover, a contrast-preserving guided filter is proposed to decompose the image into energy-detail layers to reduce high contrast and filter information. To effectively extract the active information in the detail layer and the brightness information in the energy layer, we proposed a new weighted energy-of-Laplacian operator and a Gaussian distribution of the image entropy scheme to fuse the detail and energy layers, respectively. The fused result was obtained by adding the detail and energy layers. Extensive experimental results demonstrate that the proposed method can effectively reduce the high contrast and highlighted target information in an image while simultaneously preserving details. In addition, the proposed method exhibited superior performance compared to the state-of-the-art methods in both qualitative and quantitative assessments.
Bozhi ZhangMeijing GaoPan ChenYucheng ShangShiyu LiYang BaiHongping LiaoZehao LiuZhilong Li
Long RenZhibin PanJianzhong CaoJiawen LiaoYang Wang
Xue WangZheng GuanWenhua QianJinde CaoChengchao WangChao Yang
Long RenZhibin PanJianzhong CaoHui ZhangHao Wang
M. V. SrikanthTanmayi Sai JakkampudiNikhil Chowdary AravapalliRam Charan JannuSai Krishna Bathina