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Modified Histogram based contrast enhancement using Homomorphic Filtering for medical images

机译:使用同态滤波的基于改进直方图的对比度增强医学图像

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In medical image processing, low contrast image analysis is a challenging problem. Low contrast digital images reduce the ability of observer in analyzing the image. Histogram based techniques are used to enhance contrast of all type of medical images. They are mainly used for all type of medical images such as for Mias-mammogram images, these methods are used to find exact locations of cancerous regions and for low-dose CT images, these methods are used to intensify tiny anatomies like vessels, lungs nodules, airways and pulmonary fissures. The most effective method used for contrast enhancement is Histogram Equalization (HE). Here we propose a new method named “Modified Histogram Based Contrast Enhancement using Homomorphic Filtering” (MH-FIL) for medical images. This method uses two step processing, in first step global contrast of image is enhanced using histogram modification followed by histogram equalization and then in second step homomorphic filtering is used for image sharpening, this filtering if followed by image normalization. To evaluate the effectiveness of our method we choose two widely used metrics Absolute Mean Brightness Error (AMBE) and Entropy. Based on results of these two metrics this algorithm is proved as a flexible and effective way for medical image enhancement and can be used as a pre-processing step for medical image understanding and analysis.
机译:在医学图像处理中,低对比度图像分析是一个具有挑战性的问题。低对比度的数字图像会降低观察者分析图像的能力。基于直方图的技术用于增强所有类型医学图像的对比度。它们主要用于所有类型的医学图像,例如Mias乳房X射线照片,这些方法用于查找癌变区域的精确位置,而小剂量CT图像则用于增强血管,肺结节等微小解剖结构,气道和肺裂。用于增强对比度的最有效方法是直方图均衡(HE)。在这里,我们为医学图像提出了一种名为“使用同态滤波的基于改进直方图的对比度增强”(MH-FIL)的新方法。此方法使用两步处理,第一步是使用直方图修改和直方图均衡化来增强图像的全局对比度,然后在第二步中使用同态滤波来锐化图像,如果滤波后进行了图像归一化,则进行滤波​​。为了评估我们方法的有效性,我们选择了两个广泛使用的度量标准:绝对平均亮度误差(AMBE)和熵。基于这两个指标的结果,该算法被证明是一种灵活有效的医学图像增强方法,可以用作医学图像理解和分析的预处理步骤。

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