Deblurring of Images using Novel Deconvolutional Neural Network (DNN) Algorithm to Enhance the Accuracy and Comparing with Richardson-Lucy Deconvolution Algorithm (RLD)

Sai Dinesh K
2021 Revista GEINTEC  
Aim-Machine learning techniques are rapidly used in the area of digital image processing research due to its impressive results in deconvolution and deblurring of images. The objective of this study is to evaluate the performance of Novel DNN algorithm in deblurring of images by comparing it with the RLD algorithm. Materials and Methods -Novel Deconvolutional Neural Network (DNN) and Richardson-Lucy Deconvolution (RLD) algorithms were implemented to deblur the input images upto 256 pixels
more » ... These algorithms were implemented to enhance the accuracy rate of deblurred images using MATLAB Software and analyzed by collecting the dataset of 40 samples with 80% of pretest power. Results -From the MATLAB simulation result, DNN achieves image deblurring rate with 98% accuracy and RLD method achieves image deblurring rate with 92% accuracy. The significance value obtained as (P < 0.002). Conclusion -Novel DNN classifier appears to have better accuracy compared to RLD Classifier. The proposed work is implemented for image restoration from the degraded image to enhance the accuracy. Novel DNN algorithm enhances the accuracy rate of deblurring images that appears to be 98%. The accuracy rate of the RLD method is 92%. Image deblurring can be done using the deconvolution method of DNN algorithm in machine learning approach. It concludes that DNN algorithm accuracy appears to be significantly better when compared with RLD.
doi:10.47059/revistageintec.v11i4.2178 fatcat:66xzjmbknze5dbhpzgodwix6gm