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Enhancing retinal image by the Contourlet transform

机译:通过Contourlet变换增强视网膜图像

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The evaluation of retinal images is widely used to help doctors diagnose many diseases, such as diabetes or hypertension. Due to the acquisition process, retinal images often have low grey level contrast and dynamic range. This problem may seriously affect the diagnostic procedure and its results. Here we present a new multi-scale method for retinal image contrast enhancement based on the Contourlet transform. The Contourlet transform has better performance in representing edges than wavelets for its anisotropy and directionality, and is therefore well-suited for multi-scale edge enhancement. We modify the Contourlet coefficients in corresponding subbands via a nonlinear function and take the noise into account for more precise reconstruction and better visualization. We compare this approach with enhancement based on the Wavelet transform, Histogram Equalization, Local Normalization and Linear Unsharp Masking. The application of this method on images from the DRIVE database showed that the proposed approach outperforms other enhancement methods on low contrast and dynamic range images, with an encouraging improvement, and might be helpful for vessel segmentation.
机译:视网膜图像的评估被广泛用于帮助医生诊断许多疾病,例如糖尿病或高血压。由于采集过程,视网膜图像通常具有较低的灰度对比度和动态范围。此问题可能会严重影响诊断过程及其结果。在这里,我们提出了一种新的基于Contourlet变换的多尺度视网膜图像对比度增强方法。 Contourlet变换的各向异性和方向性比小波具有更好的表示边缘性能,因此非常适合多尺度边缘增强。我们通过非线性函数修改相应子带中的Contourlet系数,并考虑了噪声,以实现更精确的重构和更好的可视化效果。我们将这种方法与基于小波变换,直方图均衡化,局部归一化和线性模糊锐化的增强功能进行了比较。该方法在DRIVE数据库中的图像上的应用表明,该方法在低对比度和动态范围图像上优于其他增强方法,具有令人鼓舞的改进,可能有助于血管分割。

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