图像处理的进化算法和高效数据分析

F. Mohammadi, Farzan Shenavarmasouleh, M. Amini, H. Arabnia
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引用次数: 8

摘要

隐写算法以一种秘密的方式促进了源和目标之间的通信。这是通过将消息/文本/数据嵌入图像而不影响图像/视频的外观来实现的。图像分析是一门确定图像中是否嵌入或隐藏了秘密信息的科学。由于有许多隐写算法,并且由于每种隐写算法都需要不同类型的隐写分析,因此隐写分析过程极具挑战性。因此,研究人员的目标是开发一种通用的隐写分析来检测所有的隐写算法。通用隐写分析提取大量的特征来区分隐写图像和封面图像。然而,这导致了维度诅咒(CoD)的问题,这被认为是一个np困难问题。生成基于机器学习的模型也需要很长时间,这使得实时处理在任何时间密集型领域(如视觉计算)的优化中都显得不可能。在本研究中,我们研究了先前开发的用于增强实时图像处理的进化算法,并认为它们为CoD问题提供了最有希望的解决方案。
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Evolutionary Algorithms and Efficient Data Analytics for Image Processing
Steganography algorithms facilitate communication between a source and a destination in a secret manner. This is done by embedding messages/text/data into images without impacting the appearance of the resultant images/videos. Ste-ganalysis is the science of determining if an image has secret messages embedded/hidden in it. Because there are numerous steganography algorithms, and since each one of them requires a different type of steganalysis, the steganalysis process is extremely challenging. Thus, researchers aim to develop one universal steganalysis to detect all steganography algorithms. Universal steganalysis extracts a large number of features to distinguish stego images from cover images. However, this leads to the problem of the curse of dimensionality (CoD), which is considered to be an NP-hard problem. Generating a machine learning based model also takes a long time which makes real-time processing appear impossible in any optimization for time-intensive fields such as visual computing. In this study, we investigate previously developed evolutionary algorithms for boosting real-time image processing and argue that they provide the most promising solutions for the CoD problem.
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