Estimation and correction of motion blur in digital images

Dileep Kumar Abotula, Bodasingi Nalini
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引用次数: 0

Abstract

Digital images play a very important role in developing computer-aided systems. The motion blur and blur in such types of images affect the accuracy of the system. Therefore, it is a challenging task to estimate and remove the blur in the images. In the present paper, an attempt is made to use a Convolutional Neural Network (CNN) model to estimate and remove the blur in the images. The CNN model with different functions helps to improve the accuracy of removing blur from the images. Different network functions, such as ReLU and Sigmoid, and their combinations are analyzed for the modeling of CNN. The performance of CNN is analyzed with different parameters, such as blur estimation, PSNR, RMSE, SSIM, and MSE. The performance is measured by considering different image categories, such as more blur images, less blur images, dark blur images, and biomedical images. Considering the parameters, it is observed that CNN with ReLU and Sigmoid functions is giving better performance than other network functions. It is observed that CNN models are giving successful performance to remove blur and correct the blur than any other traditional models.
数字图像运动模糊的估计与校正
数字图像在计算机辅助系统的发展中起着非常重要的作用。这类图像的运动模糊和模糊影响了系统的精度。因此,如何估计和消除图像中的模糊是一项具有挑战性的任务。本文尝试使用卷积神经网络(CNN)模型来估计和去除图像中的模糊。不同功能的CNN模型有助于提高去除图像模糊的准确性。分析了ReLU和Sigmoid等不同的网络函数及其组合,用于CNN的建模。用模糊估计、PSNR、RMSE、SSIM、MSE等参数分析了CNN的性能。性能是通过考虑不同的图像类别来衡量的,比如更多的模糊图像、更少的模糊图像、暗模糊图像和生物医学图像。考虑到这些参数,可以观察到带有ReLU和Sigmoid函数的CNN比其他网络函数的性能更好。观察到,CNN模型在去除模糊和纠正模糊方面比其他传统模型都要成功。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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