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Metric learning for image steganalysis

机译:度量学习用于图像隐写分析

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摘要

Image steganalysis based on supervised distance metric learning is to find an appropriate measure of similarity between image features where the distribution discrepancy between cover-images and stego-images are analyzed in the reduced dimensional space. Our approach is novel in that it combines the merits of weight metric learning and image distribution analysis in reduced dimension space. By this learning metrics, we exploit a new steganalysis metric to discriminate stego-images from clean images. The experiment results show the effectiveness of the propose approach for some data hiding method.
机译:基于监督距离度量学习的图像隐写分析是一种图像特征之间相似度的合适度量,其中在降维空间中分析了封面图像和隐秘图像之间的分布差异。我们的方法是新颖的,因为它结合了重量度量学习和图像分布分析在缩小维度空间中的优点。通过这种学习指标,我们利用一种新的隐写分析指标来将隐秘图像与干净图像区分开。实验结果证明了该方法对某些数据隐藏方法的有效性。

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