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3D-image restoration technique using Genetic Algorithm to solve blurring problems of images

机译:使用遗传算法解决图像模糊问题的3D图像恢复技术

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摘要

Most images may not be sharp and clear due to various reasons like noise interference and is said to be in a blurred condition. Image de-blurring is fundamental in making pictures sharp and useful. Normally, along with the input blurred image, Point Spread Function (PSF) of the original image is required for the process of restoration and de-blurring. In this paper, we introduce a technique for image restoration by Richardson-Lucy algorithm where the optimised PSF is generated by the use of Genetic Algorithm (GA). Use of optimised PSF ensures that our proposed technique does not need the original image for the de-blurring purpose and can be greatly beneficial in the real time scenario cases. The dataset used for the evaluation of the proposed technique are real 3D images and the evaluation metrics used are peak signal-to-noise ratio (PSNR), Second-Derivative like Measure of Enhancement (SDME) and mean squared error (MSE). The technique is compared with existing techniques such as de-convolution method, regularisation filter, Wiener filter and Richardson-Lucy algorithm. From the results, we can observe that our proposed technique has achieved higher PSNR and SDME values and lower MSE values when compared with other techniques. We have achieved average PSNR of 70·94, SDME of 71·46 and MSE of 0·0063. The values obtained show the superior performance of the proposed technique.
机译:由于诸如噪声干扰等各种原因,大多数图像可能不清晰和清晰,并且据说处于模糊状态。图像去模糊是使图片清晰和有用的基础。通常,与输入的模糊图像一起,原始图像的点扩展功能(PSF)对于恢复和去模糊处理是必需的。在本文中,我们介绍了一种通过Richardson-Lucy算法进行图像恢复的技术,其中通过使用遗传算法(GA)生成优化的PSF。使用优化的PSF可以确保我们提出的技术不需要原始图像用于去模糊目的,并且在实时情况下可以极大地受益。用于评估所提出的技术的数据集是真实的3D图像,并且所使用的评估指标是峰值信噪比(PSNR),二阶导数增强措施(SDME)和均方误差(MSE)。将该技术与现有技术进行了比较,例如反卷积方法,正则化滤波器,Wiener滤波器和Richardson-Lucy算法。从结果可以看出,与其他技术相比,我们提出的技术具有更高的PSNR和SDME值以及更低的MSE值。我们已实现平均PSNR为70·94,SDME为71·46和MSE为0·0063。获得的值显示了所提出技术的优越性能。

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