Bilateral anisotropic Gabor wavelet transformation based deep stacked auto encoding for lossesless image compression

S. Kumar, R. Sarankumar, O. Vignesh, A. Prakash
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引用次数: 2

Abstract

A highly challenging aspect of the data compression technique is maintaining the quality of data that reconstructs in high compression rates. To overcome these limitations, a bilateral anisotropic Gabor wavelet transformation with deep stacked auto encoding (BAGWT‐DSAE) technique based lossesless image compression is proposed in this article to save the storage space and processing time during transferring the images. The proposed method contains three main processes namely preprocessing, compression and decompression. Initially input aerial image and digital image are taken and these images are given bilateral filter based preprocessing for eliminates the different types of noises and also multiple artifacts. Then the preprocessed images are given to anisotropic Gabor wavelet transformation based deep stacked auto encoding to compress and decompress the wavelet transform's sensitive sub‐bands effectually. In DSAE, the decoder of the auto encoder achieves a better quality decompressed image. The proposed method is implemented in MATLAB simulations run in PC through Intel Core, 8 GB of RAM, 2.50 GHz CPU and Windows 8. Then, the simulation performance of proposed BAGWT‐DSAE‐LIC method provides 20.23%, 24.85%, and 38.56% low compression ratio and 26.48%, 21.23%, and 12.53% lower computational time, 4.56%, 7.68%, and 8.34% high space saving than the existing methods.
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基于双向各向异性Gabor小波变换的深度堆叠自编码无损图像压缩
数据压缩技术的一个极具挑战性的方面是保持以高压缩率重建的数据的质量。为了克服这些限制,本文提出了一种基于双向各向异性Gabor小波变换和深度堆叠自编码(BAGWT‐DSAE)技术的无损图像压缩方法,以节省图像传输过程中的存储空间和处理时间。该方法包括预处理、压缩和解压缩三个主要过程。首先对输入的航拍图像和数字图像进行双边滤波预处理,以消除不同类型的噪声和多重伪影。然后对预处理后的图像进行基于各向异性Gabor小波变换的深度堆叠自编码,对小波变换的敏感子带进行有效的压缩解压缩。在DSAE中,自动编码器的解码器可以获得质量更好的解压缩图像。采用Intel酷睿、8gb内存、2.50 GHz CPU和Windows 8操作系统,在PC机上进行了MATLAB仿真。结果表明,所提出的BAGWT - DSAE - LIC方法的压缩比分别降低20.23%、24.85%和38.56%,计算时间分别降低26.48%、21.23%和12.53%,空间节省率分别提高4.56%、7.68%和8.34%。
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