Abstract:In order to take into account the transparency and antigeometric transformation ability of the watermarking system, a robust image watermarking algorithm based on visual saliency and quantization index modulation is proposed in this paper. Firstly, the Ripplet transform is used to process the host image for getting the feature map. Then, the Gaussian probability density model is used to calculate the visual saliency mapping corresponding to the feature map, and divide it into a series of nonoverlapping subblocks for calculating the saliency mean of each subblock. The nondown sampling Contourlet transform is introduced to decompose the host image for outputing the corresponding lowpass subbands and bandpass directional subbands. Subsequently, the low pass subband is divided into smaller nonoverlapping subbands and the energy of each subband is calculated. The saliency mean and energy are jointed to calculate the quantization step corresponding to the embedded subblock, which treat it as a key. The singular value decomposition is used to process each subblock of low pass subband for obtaining the corresponding diagonal matrix, and the maximum singular value is found out. A watermarking embedding method is designed based on the mean of the maximum singular value corresponding to all subblocks, and according to the quantization step corresponding to each subblock, the watermarking data is hidden into the carrier to get the watermarking image. Finally, according to the received key, the watermarking extraction mechanism is defined to detect the watermarking data in the watermarking image. The experimental data show that this algorithm has higher transparency than the current blockbased watermarking technology, and under the conventional geometric content operation, it shows stronger robustness, and the restoration of watermarking distortion is the smallest.