Litcius/Paper detail

Triple Clipped Histogram-Based Medical Image Enhancement Using Spatial Frequency

Sonu Kumar, Ashish Kumar Bhandari, Aditya Raj, Kirtika Swaraj

2021IEEE Transactions on NanoBioscience38 citationsDOI

Abstract

In this paper, a novel triple clipped histogram model-based fusion approach has been proposed to improve the basics features, brightness preservation and contrast of the medical images. This incorporates the features of the equalized image and input image together. In the initial step, the low-contrast medical image is equalized using the triple clipped dynamic histogram equalization technique for which the histogram of the input medical image is split into three sections on the basis of standard deviation with almost equal number of pixels. The clipping process of the histogram is performed on every histogram section and mapped to a new dynamic range using simple calculations. In the second step, the sub-histogram equalization process is performed separately. Approximation and detail coefficients of equalized and input images are separated using discrete wavelet transform (DWT). Thereafter, the approximation coefficients are modified using some basic calculation-based fusion which involves singular value decomposition (SVD) and its inverse. Detail coefficients are fused using spatial frequency features. This yields modified approximation and detail coefficients for an enhanced image. Finally, inverse discrete wavelet transform (IDWT) has been applied to the modified coefficients which result in an enhanced image with improved visual quality. These improvements are analyzed qualitatively and quantitatively.

Topics & Concepts

HistogramArtificial intelligenceHistogram equalizationHistogram matchingAdaptive histogram equalizationMathematicsImage histogramPixelPattern recognition (psychology)Discrete wavelet transformImage fusionComputer scienceComputer visionWaveletImage processingWavelet transformImage textureImage (mathematics)Image Enhancement TechniquesAdvanced Image Fusion TechniquesImage and Signal Denoising Methods