| Literature DB >> 28740092 |
Chao Zhou1,2,3,4, Xinting Yang5,6,7, Baihai Zhang4, Kai Lin1,2,3, Daming Xu1,2,3, Qiang Guo1,2,3, Chuanheng Sun8,9,10.
Abstract
Due to the low and uneven illumination that is typical of a recirculating aquaculture system (RAS), visible and near infrared (NIR) images collected from RASs always have low brightness and contrast. To resolve this issue, this paper proposes an image enhancement method based on the Multi-Scale Retinex (MSR) algorithm and a greyscale nonlinear transformation. First, the images are processed using the MSR algorithm to eliminate the influence of low and uneven illumination. Then, the normalized incomplete Beta function is used to perform a greyscale nonlinear transformation. The function's optimal parameters (α and β) are automatically selected by the particle swarm optimization (PSO) algorithm based on an image contrast measurement function. This adaptive image enhancement method is compared with other classic enhancement methods. The results show that the proposed method greatly improves the image contrast and highlights dark areas, which is helpful during further analysis of these images.Entities:
Year: 2017 PMID: 28740092 PMCID: PMC5524723 DOI: 10.1038/s41598-017-06538-9
Source DB: PubMed Journal: Sci Rep ISSN: 2045-2322 Impact factor: 4.379
Figure 1The experimental system.
Figure 2Four types of nonlinear transformation for greyscale image enhancement: (a) a transform stretching dark regions; (b) a transform stretching lighter regions; (c) a transform stretching the middle and compressing the two ends; (d) a transform compressing the middle and stretching the two ends.
Figure 3Image enhancement effect: (a) original image; (b) nonlinear transformation of Fig. 3a; (c) the original image enhanced by the MSR algorithm; (d) proposed method; (e) histogram of Fig. 3a; (f) histogram of Fig. 3b; (g) histogram of Fig. 3c;(h) histogram of Fig. 3d.
Figure 4PSO algorithm optimization process.
Figure 5Transformation function curve.
Quality evaluation of MSR and the nonlinear transform.
| Contrast | PSNR | MSE | Information entropy | |
|---|---|---|---|---|
| Original image | 2807 | 5.3364 | ||
| MSR | 3642 | 27.2926 | 121.2890 | 6.0822 |
| PSO | 4590 | 24.7255 | 219.0436 | 5.4549 |
| MSRPSO | 10867 | 38.3670 | 54.7059 | 6.5552 |
Figure 6Results of other enhancement methods: (a) LE; (b) WT; (c) HE; (d)CLAHE; (e)GA-based;(f)histogram of Fig. 6a; (g) histogram of Fig. 6b; (h) histogram of Fig. 6c; (i) histogram of Fig. 6d; (j) histogram of Fig. 6e.
Quality Evaluation Index.
| Contrast | PSNR | MSE | Information entropy | ||
|---|---|---|---|---|---|
|
|
| 2807 | 5.3364 | ||
|
| 5776 | 28.2126 | 98.1340 | 6.0573 | |
|
| 2885 | 24.6684 | 221.9430 | 5.9144 | |
|
| 5586 | 29.8839 | 66.7870 | 6.1327 | |
|
| 4086 | 44.0190 | 62.5774 | 7.4554 | |
|
| 5595 | 27.1226 | 126.1293 | 5.8317 | |
|
| 10867 | 38.3670 | 54.7059 | 6.5552 | |
|
|
| 3263 | 5.4176 | ||
|
| 5963 | 32.2271 | 91.9378 | 6.3668 | |
|
| 3313 | 24.2247 | 245.8159 | 5.7637 | |
|
| 5769 | 28.5214 | 67.3982 | 6.2149 | |
|
| 4034 | 29.5656 | 71.8654 | 7.0822 | |
|
| 3422 | 35.4719 | 58.4457 | 5.9113 | |
|
| 11529 | 39.8506 | 38.3008 | 6.6063 |
Figure 7Image enhancement results of carp: (a) original image of carp; (b) enhancement results; (c) histogram of Fig. 7a;(d) histogram of Fig. 7b.
Figure 8Image contrast of the two species.
Figure 9Recognition rates of carp and sturgeon.