Comparison of contrast enhancement techniques for medical image

Randeep Kaur, Sandeep Kaur
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引用次数: 31

Abstract

The main goal of this paper is to process a medical image. For a medical diagnosis, the result is more suitable. Contrast enhancement is used to improve the contrast of an image. Contrast enhancement of images is used for a different variety of applications such as in the medical field. Most of the images like medical images, remote sensing, aerial images and real life photographs suffer from poor contrast. The main goal of image enhancement is to improve the quality or clarity of images or to increase the interpretability in images for human viewing. In medical images detection and analysis, contrast enhancement techniques are one of the most significant stages. We are used contrast enhancement techniques to achieve contrast enhancement of images. The type of techniques includes neighborhood operation, average filter, bilateral ratinex, imadjust and sigmoid function. All these techniques are comparing with each other to achieve which enhancement techniques have produced a better contrast of an image. The four separate parameters are used. These parameters are such as peak signal to noise ratio (PSNR), mean square error (MSE), normalization coefficient (NC) and root mean square error (RMSE). In image research, this is one of the most important and difficult technique.
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医学图像对比度增强技术的比较
本文的主要目标是对医学图像进行处理。对于医学诊断来说,这个结果更合适。对比度增强是用来提高图像的对比度。图像的对比度增强用于各种不同的应用,例如在医疗领域。大多数图像,如医学图像、遥感图像、航空图像和现实生活中的照片,对比度都很差。图像增强的主要目标是提高图像的质量或清晰度,或增加图像的可解释性供人类观看。在医学图像检测和分析中,对比度增强技术是一个重要的阶段。我们使用对比度增强技术来实现图像的对比度增强。技术类型包括邻域运算、平均滤波、双侧系数、不调整和s型函数。所有这些技术相互比较,以确定哪种增强技术产生了更好的图像对比度。使用四个单独的参数。这些参数包括峰值信噪比(PSNR)、均方误差(MSE)、归一化系数(NC)和均方根误差(RMSE)。在图像研究中,这是最重要也是最困难的技术之一。
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