| Literature DB >> 26697285 |
P V V Kishore1, K V V Kumar1, D Anil Kumar1, M V D Prasad1, E N D Goutham1, R Rahul1, C B S Vamsi Krishna1, Y Sandeep1.
Abstract
Ultrasound medical (US) imaging non-invasively pictures inside of a human body for disease diagnostics. Speckle noise attacks ultrasound images degrading their visual quality. A twofold processing algorithm is proposed in this work to reduce this multiplicative speckle noise. First fold used block based thresholding, both hard (BHT) and soft (BST), on pixels in wavelet domain with 8, 16, 32 and 64 non-overlapping block sizes. This first fold process is a better denoising method for reducing speckle and also inducing object of interest blurring. The second fold process initiates to restore object boundaries and texture with adaptive wavelet fusion. The degraded object restoration in block thresholded US image is carried through wavelet coefficient fusion of object in original US mage and block thresholded US image. Fusion rules and wavelet decomposition levels are made adaptive for each block using gradient histograms with normalized differential mean (NDF) to introduce highest level of contrast between the denoised pixels and the object pixels in the resultant image. Thus the proposed twofold methods are named as adaptive NDF block fusion with hard and soft thresholding (ANBF-HT and ANBF-ST). The results indicate visual quality improvement to an interesting level with the proposed twofold processing, where the first fold removes noise and second fold restores object properties. Peak signal to noise ratio (PSNR), normalized cross correlation coefficient (NCC), edge strength (ES), image quality Index (IQI) and structural similarity index (SSIM), measure the quantitative quality of the twofold processing technique. Validation of the proposed method is done by comparing with anisotropic diffusion (AD), total variational filtering (TVF) and empirical mode decomposition (EMD) for enhancement of US images. The US images are provided by AMMA hospital radiology labs at Vijayawada, India.Entities:
Keywords: Block processing in wavelet domain; Hard and soft thresholding; Medical image fusion; Speckle noise; Ultrasound medical image denoising
Year: 2015 PMID: 26697285 PMCID: PMC4678143 DOI: 10.1186/s40064-015-1566-6
Source DB: PubMed Journal: Springerplus ISSN: 2193-1801
Fig. 1Proposed fusion process for level selection and rule selection for ultrasound medical image de-noising in wavelet domain
Fig. 2a–d Fetus Ultrasound Images captured at radiology lab of AMMA hospital of various patients
Fig. 3Processed US images of original images from 2(a)–2(d) using (a–d) Block Hard Thresholding with block sizes 64,32,16 and 8, e–h Block Soft Thresholding with block sizes 64,32,16 and 8
Fig. 4Fusion algorithm for developing denoised high contrast ultrasound images
Fig. 5Comparison images of visual quality for block hard and soft thresholding and two fold processing methods for a block size of 64 a Original US image from 2(c), b BHT, c BST, d Adaptive Fusion Hard Thresholding (ANBF-HT), e Adaptive Fusion soft thresholding (ANBF-ST)
Fig. 632,16 and 8 block Comparison images having columns a BHT , b BST, c Adaptive Fusion Hard Thresholding (ANBF-HT), d Adaptive Fusion soft thresholding (ANBF-ST)
Level and Fusion rule selection based in Eqs. (11–19) for the image in Fig. 4 using ANBF-HT
| Block no |
| Level | Fusion rule |
|---|---|---|---|
| 1 | 0.181,0.102 | 5 |
|
| 2 | 0.399,0.322 | 5 |
|
| 3 | 0.229,0.213 | 5 |
|
| 4 | 0.182,0.101 | 5 |
|
| 5 | 0.976,0.979 | 1 |
|
| 6 | 0.958,0.950 | 1 |
|
| 7 | 0.949,0.922 | 2 |
|
| 8 | 0.637,0.620 | 3 |
|
| 9 | 0.425,0.433 | 5 |
|
| 10 | 0.543,0.521 | 4 |
|
| 11 | 0.523,0.532 | 4 |
|
| 12 | 0.282,0.221 | 5 |
|
| 13 | 0.388,0.342 | 5 |
|
| 14 | 0.422,0.431 | 5 |
|
| 15 | 0.412,0.412 | 5 |
|
| 16 | 0.199,0.195 | 5 |
|
Quality metrics for test images in Fig. 2 for two fold techniques for various block
| US TEST IMAGES Fig. | PSNR | NCC | ES | IQI | SSIM |
|---|---|---|---|---|---|
| SOFT 81(S81) | 25.7301 | 0.9604 | 0.5286 | 0.8303 | 0.7421 |
| SOFT 82(S82) | 33.6710 | 0.9335 | 0.5342 | 0.8287 | 0.7550 |
| SOFT 83(S83) | 28.0827 | 0.9186 | 0.8909 | 0.7659 | 0.6957 |
| SOFT 84(S84) | 23.2421 | 0.9526 | 0.5447 | 0.8615 | 0.7734 |
| SOFT 161(S161) | 31.5440 | 0.9638 | 0.6297 | 0.7742 | 0.7449 |
| SOFT 162(S162) | 32.5186 | 0.9406 | 0.6301 | 0.7822 | 0.7666 |
| SOFT 163(S163) | 40.1493 | 0.9302 | 0.9992 | 0.8414 | 0.8938 |
| SOFT 164(S164) | 22.7073 | 0.9535 | 0.6405 | 0.8022 | 0.7587 |
| SOFT 321(S321) | 25.4860 | 0.9734 | 0.8221 | 0.7058 | 0.7948 |
| SOFT 322(S322) | 31.3533 | 0.9578 | 0.8110 | 0.7113 | 0.8135 |
| SOFT 323(S323) | 33.1039 | 0.9476 | 0.9825 | 0.7177 | 0.7343 |
| SOFT 324(S324) | 25.2114 | 0.9605 | 0.8035 | 0.7157 | 0.7791 |
| SOFT 641(S641) | 30.3625 | 0.9788 | 0.9604 | 0.6544 | 0.7988 |
| SOFT 642(S642) | 39.5023 | 0.9814 | 0.8568 | 0.7480 | 0.9029 |
| SOFT 643(S643) | 30.1731 | 0.9489 | 0.9717 | 0.7089 | 0.7249 |
| SOFT 644(S644) | 38.5144 | 0.9742 | 0.8212 | 0.7365 | 0.8299 |
| HARD 81(S81) | 39.2534 | 0.9702 | 0.5146 | 0.8841 | 0.7983 |
| HARD 82(S82) | 30.4953 | 0.9452 | 0.5210 | 0.8811 | 0.8054 |
| HARD 83(S83) | 27.0829 | 0.9394 | 0.8403 | 0.8655 | 0.7741 |
| HARD 84(S84) | 29.9035 | 0.9604 | 0.5338 | 0.9164 | 0.8263 |
| HARD 161(S161) | 40.2058 | 0.9726 | 0.6144 | 0.8048 | 0.7962 |
| HARD 162(S162) | 30.6303 | 0.9520 | 0.6286 | 0.7955 | 0.7996 |
| HARD 163(S163) | 28.7951 | 0.9431 | 0.9561 | 0.8211 | 0.7722 |
| HARD 164(S164) | 34.4221 | 0.9665 | 0.6422 | 0.8422 | 0.8188 |
| HARD 321(S321) | 32.8812 | 0.9713 | 0.8286 | 0.6834 | 0.7855 |
| HARD 322(S323) | 28.8381 | 0.9510 | 0.8284 | 0.6810 | 0.7973 |
| HARD 323(S324) | 37.5740 | 0.9434 | 0.9934 | 0.7719 | 0.7752 |
| HARD 324(S324) | 33.4592 | 0.9658 | 0.8034 | 0.7441 | 0.8179 |
| HARD 641(S641) | 43.0055 | 0.9711 | 0.9187 | 0.6183 | 0.7809 |
| HARD 642(S642) | 28.5056 | 0.9566 | 0.9219 | 0.8497 | 0.9388 |
| HARD 643(S643) | 29.7116 | 0.9514 | 0.9383 | 0.8129 | 0.8125 |
| HARD 644(S644) | 29.7116 | 0.9616 | 0.9419 | 0.6863 | 0.8091 |
Fig. 7PSNR in db for the test images from Fig. 2 using two fold methods i.e. ANBF-HT and ANBF-ST for block sizes 8, 16, 32 and 64
Fig. 8Plots of NCC, ES, IQI and SSIM for Test images in Fig. 2
Fig. 9Test image from Fig. 2a denoised using a Anisotropic Diffusion with 40 iterations, b Total variational Filtering (TVF) with 50 iterations, c Empirical Mode Decomposition (EMD) with 5 Modes, d Adaptive Normalized Diffusion Mean Block Fusion-HT (ANBF-HT) with block size 16, e Adaptive Normalized Diffusion Mean Block Fusion-ST (ANBF-ST) with block size 8
Fig. 10Test image from Fig. 2c denoised using a Anisotropic Diffusion with 44 iterations, b Total variational Filtering (TVF) with 65 iterations, c Empirical Mode Decomposition (EMD) with 5 Modes, d Adaptive Normalized Diffusion Mean Block Fusion-HT (ANBF-HT) with block size 32, e Adaptive Normalized Diffusion Mean Block Fusion-ST (ANBF-ST) with block size 16
Fig. 11Comparative Quality metrics for various denoising algorithms a PSNR in db, b NCC, c ES, d IQI and e SSIM
Fig. 12Execution times of denoising methods