首页> 外文会议>International Conference on Futuristic trend on Computational Analysis and Knowledge Management >Proposing self mutation of hybrid wavelet transform with Cosine-Kekre, Cosine-Sine Cosine-Walsh for image compression
【24h】

Proposing self mutation of hybrid wavelet transform with Cosine-Kekre, Cosine-Sine Cosine-Walsh for image compression

机译:用余弦 - kekre,余弦和余弦 - 沃尔什进行混合小波变换的自变突变图像压缩

获取原文

摘要

As the technology is becoming highly developed in the field of multimedia and digital imaging, the storage & size of image is becoming an issue for current era. So reduction in size of image data becomes important to accommodate large number volume of image data. Here Image Compression plays main role in reducing the size of image by removing redundant pixel values from image by maintaining original quality of image. Hybrid Wavelet Transform with Row Transform & Column Transform are already proven better. This paper proposes self mutated hybrid wavelet transform generated from Cosine Transform, Sine Transform, Walsh Transform. The experimentation is done using 15 different images having size 256×256×3 with ten different compression ratios which varies from 50% to 95%. The results from the experimentation show that the proposed method of Self Mutated Hybrid Wavelet Transform (SMHWT) generated from combination of Cosine & Kekre orthogonal transforms performs better for the lower compression ratios i.e. from 50% to 70%. Also the Hybrid Wavelet Transform (HWT) generated from mixture of Cosine Transform & Kekre Transform performs better than Self Mutated Hybrid Wavelet Transform (SMHWT) for compression ratios 75% to 95%.
机译:由于该技术在多媒体和数字成像领域发展,因此图像的存储和大小正成为当前时代的问题。因此,图像数据的大小的降低变得重要,以适应大量的图像数据。这里通过维持图像的原始质量来删除图像冗余像素值,图像压缩在减少图像大小时播放主要作用。具有行变换和列变换的混合小波变换更好。本文提出了从余弦变换,正弦变换,沃尔什变换产生的自变突变混合小波变换。使用具有尺寸256×256×3的15种不同的图像进行了实验,其中十种不同的压缩比率从50%变化至95%。实验结果表明,从余弦和kekre正交变换组合产生的自突变混合小波变换(SMHWT)的提出方法对于较低的压缩比,即50%至70%,更好。此外,由余弦变换和Kekre变换的混合物产生的混合小波变换(HWT)比自突变的混合小波变换(SMHWT)更好地进行压缩比率75%至95%。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号