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Improved BTC Algorithm for Gray Scale Images Using K-Means Quad Clustering

机译:使用K-均值四元聚类的灰度图像改进BTC算法

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With images replacing textual and audio in most technologies, the volume of image data used in everyday life is very large. It is thus important to make the image file sizes smaller, both for storage and file transfer. Block Truncation Coding (BTC) is a lossy moment preserving quantization method for compressing digital gray level images. Even though this method retains the visual quality of the reconstructed image it shows some artifacts like staircase effect, etc. near the edges. A set of advanced BTC variants reported in literature were analyzed and it was found that though the compression efficiency is increased, the quality of the image has to be improved. An Improved Block Truncation Coding using k-means Quad Clustering (IBTC-KQ) is proposed in this paper to overcome the above mentioned drawbacks. A new approach of BTC to preserve the first order moments of homogeneous pixels in a block is presented. Each block of the input image is segmented into quad-clusters using k-means clustering algorithm so that homogeneous pixels are grouped into the same cluster. The block is then encoded by means of the pixel values in each cluster. Experimental analysis shows an improvement in the visual quality of the reconstructed image with high Peak Signal-to-Noise Ratio (PSNR) values compared to the conventional BTC and other modified BTC methods.
机译:在大多数技术中,随着图像代替文本和音频,日常生活中使用的图像数据量非常大。因此,对于存储和文件传输,减小图像文件的大小非常重要。块截断编码(BTC)是一种有损矩保留量化方法,用于压缩数字灰度级图像。即使此方法保留了重建图像的视觉质量,它在边缘附近仍显示出一些伪影,例如阶梯效应等。对文献中报道的一组高级BTC变体进行了分析,发现虽然压缩效率有所提高,但图像质量必须提高。为了克服上述缺点,本文提出了一种改进的使用k-均值四聚类(IBTC-KQ)的块截断编码。提出了一种新的BTC方法来保存块中同类像素的一阶矩。使用k均值聚类算法将输入图像的每个块分割为四类,以便将均匀像素分组到同一聚类中。然后,借助于每个簇中的像素值对该块进行编码。实验分析表明,与传统的BTC和其他改进的BTC方法相比,具有高峰值信噪比(PSNR)值的重建图像的视觉质量有所提高。

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