Abstract
Abstract The image restoration (IR) technique is a part of image processing to improve the quality of an image that is affected by noise and blur. Thus, IR is required to attain a better quality of image. In this paper, IR is performed using linear regression-based support vector machine (LR-SVM). This LR-SVM has two steps: training and testing. The training and testing stages have a distinct windowing process for extracting blocks from the images. The LR-SVM is trained through a block-by-block training sequence. The extracted block-by-block values of images are used to enhance the classification process of IR. In training, the imperfections on the image are easily identified by setting the target vectors as the original images. Then, the noisy image is given at LR-SVM testing, based on the original image restored from the dictionary. Finally, the image block from the testing stage is enhanced using the hybrid Laplacian of Gaussian (HLOG) filter. The denoising of the HLOG filter provides enhanced results by using block-by-block values. This proposed approach is named as LR-SVM-HLOG. A dataset used in this LR-SVM-HLOG method is the Berkeley Segmentation Database. The performance of LR-SVM-HLOG was analyzed as peak signal-to-noise ratio (PSNR) and structural similarity index. The PSNR values of the house and pepper image (color image) are 40.82 and 36.56 dB, respectively, which are higher compared to the inter- and intra-block sparse estimation method and block matching and three-dimensional filtering for color images at 20% noise.
Highlights
Recorded images generally degrade due to environmental effects and imperfections in the imaging system [22]
The performance of the linear regression-based support vector machine (LR-support vector machine (SVM))-hybrid Laplacian of Gaussian (HLOG) method is analyzed in terms of peak signal to-noise ratio (PSNR) and structural similarity index (SSIM)
The linear regression-based (LR)-SVM-HLOG method is introduced for restoring the quality of corrupted images
Summary
Recorded images generally degrade due to environmental effects and imperfections in the imaging system [22]. Image restoration (IR) plays a major role in digital image processing, and it aims to reconstruct the highfrequency details or eliminate noises from the image [2]. This IR process takes place in deblurring, denoising, and medical applications [3, 8, 16, 24]. Passive millimeter wave images (PMMWs) become affected by the high reflectivity of metal objects, and these PMMWs are used in aviation, security, and environmental monitoring [20]. The super-resolution reconstruction uses in IR-based image processing technique. Some of the filtering techniques include Wiener filtering and wave atom transform used in degraded images and those affected by noise, blur, etc. Some of the filtering techniques include Wiener filtering and wave atom transform used in degraded images and those affected by noise, blur, etc. [4, 23]
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