Compression of images represented in hexagonal lattice using wavelet and gabor filter

K. Jeevan, S. Krishnakumar
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引用次数: 12

Abstract

Hexagonal geometry has some advantageous like higher sampling efficiency, consistent connectivity and higher angular resolution. In addition to these advantages, the layout of photo-receptors in the human retina is more closely resembles to the hexagonal structure. It is due to these reasons many researchers have studied the possibility of using a hexagonal structure to represent digital images. Wavelet also have its own advantage and combining wavelet and processing of images in Hexagonal grid, that also will give better performance, because hexagonal wavelet includes the advantages of the hexagonal grid along with the wavelets. In this wok, the wavelet based image compression is performed on both square as well as hexagonal sampled images and the performance is compared using Mean Square Error (MSE) and Peak Signal to Noise Ratio (PSNR). Gabor filter is used for the interpolation of hexagonally sampled images. Compression on hexagonal domain gives better results compared to compression on rectangular domain.
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用小波和gabor滤波器对六边形格子图像进行压缩
六边形几何具有较高的采样效率、一致的连通性和较高的角分辨率等优点。除了这些优点,光感受器在人类视网膜的布局更接近于六边形结构。正是由于这些原因,许多研究人员研究了使用六边形结构来表示数字图像的可能性。小波也有自己的优点,将小波与六边形网格中的图像处理结合起来,也会有更好的表现,因为六边形小波在小波的同时也包含了六边形网格的优点。在本研究中,对方形和六边形采样图像进行了基于小波的图像压缩,并使用均方误差(MSE)和峰值信噪比(PSNR)对性能进行了比较。Gabor滤波器用于六边形采样图像的插值。六边形域上的压缩比矩形域上的压缩效果更好。
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