用永久神经网络预测紧凑离散余弦变换系数的图像压缩

IF 1.3 Q3 ENGINEERING, MULTIDISCIPLINARY
S. Alshehri
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引用次数: 0

摘要

该研究提出了一种新的图像压缩技术,该技术产生高压缩比,但消耗低执行时间。由于当前的许多图像压缩算法消耗高执行时间,因此该技术加快了图像压缩的执行时间。该技术基于永久神经网络来预测离散余弦变换的部分系数。这可以消除每次压缩图像时生成离散余弦变换的需要。压缩率达到94%,而平均解压缩图像峰值信噪比和结构相似性图像度量分别为22.25和0.65。与其他报道的技术相比,压缩时间可以忽略,因为压缩阶段唯一需要的过程是使用生成的神经网络模型来预测少数离散余弦变换系数。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Image Compression Using Permanent Neural Networks for Predicting Compact Discrete Cosine Transform Coefficients
This study proposes a new image compression technique that produces a high compression ratio yet consumes low execution times. Since many of the current image compression algorithms consume high execution times, this technique speeds up the execution time of image compression. The technique is based on permanent neural networks to predict the discrete cosine transform partial coefficients. This can eliminate the need to generate the discrete cosine transformation every time an image is compressed. A compression ratio of 94% is achieved while the average decompressed image peak signal to noise ratio and structure similarity image measure are 22.25 and 0.65 respectively. The compression time can be neglected when compared to other reported techniques because the only needed process in the compression stage is to use the generated neural network model to predict the few discrete cosine transform coefficients.
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来源期刊
CiteScore
2.80
自引率
0.00%
发文量
18
审稿时长
12 weeks
期刊介绍: The IJETI journal focus on the field of engineering and technology Innovation. And it publishes original papers including but not limited to the following fields: Automation Engineering Civil Engineering Control Engineering Electric Engineering Electronic Engineering Green Technology Information Engineering Mechanical Engineering Material Engineering Mechatronics and Robotics Engineering Nanotechnology Optic Engineering Sport Science and Technology Innovation Management Other Engineering and Technology Related Topics.
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