Performance Analysis of Adaptive Unsharp Masking Filter Techniques for Image Contrast Enhancement

Suit Mun Ng, H. Yazid, S. A. Rahim, N. Mustafa
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Abstract

Image contrast enhancement is known as one of the important techniques applied in the field of image processing. In order to improve the contrast of the captured image, different adaptive Unsharp Masking Filter (UMF) techniques were proposed by the researchers. In this paper, the main contribution is the implementation of three algorithms namely adaptive gain adjustment approach using an UMF (ASAUMF), design of UMF kernel and gain using Particle Swarm Optimization (UMFKG) and lastly, intensity and edge-based adaptive UMF (IntEdgUMF) which is denoted as Algorithm 1, 2 and 3 respectively. These algorithms were tested on the standard and biometric images like face images. This is because these adaptive UMF were mainly applied to natural scenery, but the importance of high image quality is not limited to the environment but also to the other fields such as biometric identification. Based on the results, Algorithm 1 is able to achieve the highest average PSNR values of 31.6079 dB and 35.8052 dB when applied on Set14 and LFW databases respectively. Although Algorithm 1 needs a longer running time in producing the output images, this algorithm can emphasize the details or information from the input image by enhancing the contrast of the image. Thus, Algorithm 1 can be concluded as the best adaptive UMF techniques among the three algorithms tested. For future work, the use of these adaptive UMF can be implemented onto various images, for instance gray scale images or other biometric images in order to test the effectiveness of the algorithms in different applications.
用于图像对比度增强的自适应非锐利掩蔽滤波技术的性能分析
图像对比度增强是图像处理领域的重要技术之一。为了提高捕获图像的对比度,研究人员提出了不同的自适应非锐化掩蔽滤波(UMF)技术。本文的主要贡献是实现了三种算法,即使用UMF的自适应增益调整方法(ASAUMF),使用粒子群优化(UMFKG)设计UMF核和增益,最后是基于强度和边缘的自适应UMF (IntEdgUMF),分别表示为算法1,2和3。这些算法在标准和生物特征图像(如人脸图像)上进行了测试。这是因为这些自适应UMF主要应用于自然风景,但高图像质量的重要性不仅限于环境,还包括其他领域,如生物特征识别。结果表明,算法1在Set14和LFW数据库上的平均PSNR值最高,分别为31.6079 dB和35.8052 dB。虽然算法1在生成输出图像时需要较长的运行时间,但该算法可以通过增强图像的对比度来强调输入图像的细节或信息。因此,算法1可以被认为是三种算法中最好的自适应UMF技术。对于未来的工作,这些自适应UMF的使用可以实现到各种图像上,例如灰度图像或其他生物特征图像,以测试算法在不同应用中的有效性。
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