首页> 外文会议>ICCCI 2010;International conference on computational collective intelligence-Technologies and applications >Geometrically Invariant Image Watermarking Using Scale-Invariant Feature Transform and K-Means Clustering
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Geometrically Invariant Image Watermarking Using Scale-Invariant Feature Transform and K-Means Clustering

机译:使用尺度不变特征变换和K均值聚类的几何不变图像水印

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In the traditional feature-base robust image watermarking, all bits of watermark message are bound with the feature point. If a few of points are attacked badly or lost, the performance of the watermarking scheme will decline or fail. In this paper, we present a robust image watermarking scheme by the use of k-means clustering, scale-invariant feature transform (SIFT) which is invariant to rotation, scaling, translation, partial affine distortion and addition of noise. SIFT features are clustered into clusters by k-means clustering. Watermark message is embedded bit by bit in each cluster. Because one cluster contains only one watermark bit but one cluster contains many feature points, the robustness of watermarking is not lean upon individual feature point. We use twice voting strategy to keep the robustness of watermarking in watermark detecting process. Experimental results show that the scheme is robust against various geometric transformation and common image processing operations, including scaling, rotation, affine transforms, cropping, JPEG compression, image filtering, and so on.
机译:在传统的基于特征的鲁棒图像水印中,水印消息的所有位都与特征点绑定。如果一些点受到严重攻击或丢失,则水印方案的性能将下降或失败。在本文中,我们通过使用k均值聚类,尺度不变特征变换(SIFT)提出了一种鲁棒的图像水印方案,该尺度不变特征变换对于旋转,缩放,平移,部分仿射失真和噪声添加都是不变的。 SIFT功能通过k均值聚类被聚类为聚类。水印消息一点一点地嵌入到每个群集中。因为一个簇仅包含一个水印位,但是一个簇包含许多特征点,所以水印的鲁棒性并不取决于单个特征点。我们使用两次投票策略来保持水印检测过程中水印的鲁棒性。实验结果表明,该方案对各种几何变换和常见的图像处理操作具有鲁棒性,包括缩放,旋转,仿射变换,裁剪,JPEG压缩,图像过滤等。

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