| Literature DB >> 33266659 |
Yuanyuan Li1,2, Yanjing Sun1, Mingyao Zheng2, Xinghua Huang3, Guanqiu Qi4,5, Hexu Hu2, Zhiqin Zhu2.
Abstract
Multi-exposure image fusion methods are often applied to the fusion of low-dynamic images that are taken from the same scene at different exposure levels. The fused images not only contain more color and detailed information, but also demonstrate the same real visual effects as the observation by the human eye. This paper proposes a novel multi-exposure image fusion (MEF) method based on adaptive patch structure. The proposed algorithm combines image cartoon-texture decomposition, image patch structure decomposition, and the structural similarity index to improve the local contrast of the image. Moreover, the proposed method can capture more detailed information of source images and produce more vivid high-dynamic-range (HDR) images. Specifically, image texture entropy values are used to evaluate image local information for adaptive selection of image patch size. The intermediate fused image is obtained by the proposed structure patch decomposition algorithm. Finally, the intermediate fused image is optimized by using the structural similarity index to obtain the final fused HDR image. The results of comparative experiments show that the proposed method can obtain high-quality HDR images with better visual effects and more detailed information.Entities:
Keywords: adaptive selection; multi-exposure image fusion; patch structure decomposition; texture information entropy
Year: 2018 PMID: 33266659 PMCID: PMC7512522 DOI: 10.3390/e20120935
Source DB: PubMed Journal: Entropy (Basel) ISSN: 1099-4300 Impact factor: 2.524
Figure 1(a) Over-exposure image; (b) under-exposure image.
Figure 2The proposed adaptive patch structure multi-exposure image fusion (APS-MEF) framework. SSIMc: color structural similarity.
Figure 3(a) The source image; (b) the texture component.
Figure 4(a) The texture image in gray space; (b) the differential image.
Figure 5Relationship between image texture entropy and image patch size.
The selected patch sizes of the 24 sets of multi-exposure images.
| Image Set | Patch Size | Image Set | Patch Size |
|---|---|---|---|
| Arno | 13 | Balloons | 15 |
| BelgiumHouse | 8 | Cave | 10 |
| Chinese Garden | 14 | Church | 9 |
| Farmhouse | 17 | House | 10 |
| Kluki | 12 | Lamp | 13 |
| Landscape | 12 | Laurenziana | 12 |
| Lighthouse | 12 | MadisonCapitol | 9 |
| Mask | 10 | Office | 17 |
| Ostrow | 18 | Room | 15 |
| Set | 13 | Studio | 12 |
| Tower | 15 | Venice | 10 |
| Window | 15 | Yello wHall | 18 |
Figure 6Visual comparison of the fused “Chinese Garden” between the proposed method and nine existing methods.
Figure 7Visual comparison of the fused “Yellow Hall” between the proposed method and nine existing methods.
Figure 8Visual comparison of the fused “Window” between the proposed method and nine existing methods.
Figure 9Visual comparison of the fused “Tower” between the proposed method and nine existing methods.
Figure 10Visual comparison of the fused “Farmhouse” between the proposed method and nine existing methods.
Figure 11Objective evaluations of 24 source image sets in the MEF experimentation.
Objective evaluation of the ten MEF methods.
|
| MI |
| Time | |
|---|---|---|---|---|
| Bruce13 | 0.66684 | 3.67199 | 0.57956 | 17.30 s |
| Gu12 | 0.64301 | 2.61998 | 0.50975 | 13.60 s |
| Mertens07 | 0.71941 | 3.26387 | 0.57021 | 10.20 s |
| Shen14 | 0.57109 | 2.93935 | 0.46300 | 57.27 s |
| Ma17 | 0.71470 | 3.85767 | 0.57580 | 13.64 s |
| SSIM-MEF | 0.72586 | 3.67061 | 0.57730 | 15.93 s |
| Proposed-8 | 0.65852 | 3.50575 | 0.53225 |
|
| Proposed-16 | 0.65863 | 3.53180 | 0.53234 | 14.11 s |
| Proposed-24 | 0.65814 | 3.47528 | 0.53253 | 21.13 s |
| Proposed |
|
|
| 14.12 s |