The GFR (Gabor Filter Residual) features, built as histograms of quantized residuals obtained with 2D Gabor filters, can achieve competitive detection performance against adaptive JPEG steganography. In this paper, an improved version of the GFR is proposed. First, a novel histogram merging method is proposed according to the symmetries between different Gabor filters, thus making the features more compact and robust. Second, a new weighted histogram method is proposed by considering the position of the residual value in a quantization interval, making the features more sensitive to the slight changes in residual values. The experiments are given to demonstrate the effectiveness of our proposed methods. Finally, we design a CNN to duplicate the detector with the improved GFR features and the ensemble classifier, thus optimizing the design of the filters used to form residuals in JPEG-phase-aware features.
翻译:GFR(Gabor过滤器残余物)特征是2D Gabor过滤器获得的量化残渣的直方图,可以针对适应性 JPEG 色谱学取得有竞争力的检测性能。本文提出了GFR的改良版本。首先,根据不同加博过滤器之间的对称提出了一种新的直方图合并方法,从而使这些特征更加紧凑和坚固。其次,建议采用一种新的加权直方图方法,即考虑残余值在定量间隔的位置,使这些特征对残余值的微小变化更加敏感。这些实验是为了展示我们拟议方法的有效性。最后,我们设计了CNN,以便与改良的GFR特性和共性分类器重复探测器,从而优化用于形成JPEG-相位特征中残留物的过滤器的设计。