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A self-similarity based adaptive steganography for 3D point cloud models

机译:用于3D点云模型的自相似性自适应隐写

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This paper presents a new adaptive, high-capacity steganography for 3D point cloud models using self-similarity segmentation. Every embedding vertex of the model can adaptively embed variable σ (σ ≥4) bits using an adaptive self-similarity position matching procedure with low distortion which uses normal direction of vertexes to estimate the embedding capacity of every vertex with respect to human visual system. The new scheme segments the 3D point cloud model to patches using self-similarity measures, every message point in the similar message patches which has the point-to-point correspondence with a certain reference point in the reference patch can adaptively embed at least four bits by shifting the message point from current point to the corresponding embedding position using space subdivision. Experimental results show that the proposed scheme is adaptive, has high capacity and low distortion.
机译:本文介绍了一种新的自适应,高容量的隐写,用于3D点云模型使用自相似分割。 模型的每个嵌入顶点都可以自适应地嵌入变量σ (σࣙ 4)使用具有低失真的自适应自相似位置匹配过程,它使用正常的顶点方向来估计与人类视觉系统相对于人类视觉系统的每个顶点的嵌入容量。 新的方案将3D点云模型使用自相似度测量段进行修补,其类似消息补丁中的每个消息点,其具有与参考补丁中的某个参考点的点对点对应,可以自适应地嵌入至少四个比特 通过使用空间细分将消息点从当前点转移到相应的嵌入位置。 实验结果表明,该方案是适应性的,具有高容量和低畸变。

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