An Efficient Steganalysis of Medical Images by Using Deep Learning Based Discrete Scalable Alex Net Convolutionary Neural Networks Classifier

J. Hemalatha, S. Geetha, S. Mohan, S Roselin Nivetha
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引用次数: 1

Abstract

Steganalysis is the technique that tries to beat steganography by detecting and removing secret information. Steganalysis involves the detection of a message embedded in a picture. Deep Learning (DL) advances have offered alternative approaches to many difficult issues, including the field of image steganalysis using deep-learning architecture based on convolutionary neural networks (CNN). In recent years, many CNN architectures have been established that have enhanced the exact identification of steganographic images. This work presents a novel architecture which involves a preprocessing stage using histogram equalization and adaptive recursive median filter banks to reduce image noise, a feature extraction stage using shearlet multilinear local embedding methods and then finally the classification can be done by using the discrete scalable Alex NET CNN classifier. Performance was evaluated on the RGB-BMP Steganalysis Dataset with different experimental setups. To prove the effectiveness of the suggested algorithm it can be compared with the other existing methodologies. This work improves classification accuracies on all other existing algorithms over test data.
基于深度学习的离散可扩展Alex网络卷积神经网络分类器对医学图像的有效隐写
隐写分析是一种试图通过检测和删除机密信息来击败隐写术的技术。隐写分析包括检测嵌入在图片中的信息。深度学习(DL)的进步为许多难题提供了替代方法,包括使用基于卷积神经网络(CNN)的深度学习架构进行图像隐写分析。近年来,已经建立了许多CNN架构,提高了对隐写图像的准确识别。这项工作提出了一种新的架构,其中包括使用直方图均衡化和自适应递归中值滤波器组来降低图像噪声的预处理阶段,使用shearlet多线性局部嵌入方法的特征提取阶段,然后使用离散可扩展Alex NET CNN分类器进行分类。通过不同的实验设置对RGB-BMP隐写分析数据集的性能进行了评估。为了证明该算法的有效性,可以将其与其他现有方法进行比较。这项工作提高了所有其他现有算法在测试数据上的分类准确性。
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