The Effect of 3D Image Virtual Reconstruction Based on Visual Communication

Li Xu, Ling Bai, Lei Li
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Abstract

Considering the problems of poor effect, long reconstruction time, large mean square error (MSE), low signal-to-noise ratio (SNR), and structural similarity index (SSIM) of traditional methods in three-dimensional (3D) image virtual reconstruction, the effect of 3D image virtual reconstruction based on visual communication is proposed. Using the distribution set of 3D image visual communication feature points, the feature point components of 3D image virtual reconstruction are obtained. By iterating the 3D image visual communication information, the features of 3D image virtual reconstruction in visual communication are decomposed, and the 3D image visual communication model is constructed. Based on the calculation of the difference of 3D image texture feature points, the spatial position relationship of 3D image feature points after virtual reconstruction is calculated to complete the texture mapping of 3D image. The deep texture feature points of 3D image are extracted. According to the description coefficient of 3D image virtual reconstruction in visual communication, the virtual reconstruction results of 3D image are constrained. The virtual reconstruction algorithm of 3D image is designed to realize the virtual reconstruction of 3D image. The results show that when the number of samples is 200, the virtual reconstruction time of this paper method is 2.1 s, and the system running time is 5 s; the SNR of the virtual reconstruction is 35.5 db. The MSE of 3D image virtual reconstruction is 3%, and the SSIM of virtual reconstruction is 1.38%, which shows that this paper method can effectively improve the ability of 3D image virtual reconstruction.
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基于视觉传达的三维图像虚拟重建效果研究
针对传统三维图像虚拟重建方法存在的重建效果差、重建时间长、均方误差(MSE)大、信噪比(SNR)低、结构相似指数(SSIM)低等问题,提出了基于视觉传达的三维图像虚拟重建效果。利用三维图像视觉传达特征点分布集,得到三维图像虚拟重建的特征点分量。通过迭代三维图像视觉传达信息,分解三维图像虚拟重建在视觉传达中的特征,构建三维图像视觉传达模型。在计算三维图像纹理特征点差的基础上,计算虚拟重建后三维图像特征点的空间位置关系,完成三维图像的纹理映射。提取三维图像的深层纹理特征点。根据视觉传达中三维图像虚拟重建的描述系数,对三维图像的虚拟重建结果进行约束。为实现三维图像的虚拟重建,设计了三维图像的虚拟重建算法。结果表明,当样本数为200时,本文方法的虚拟重构时间为2.1 s,系统运行时间为5 s;虚拟重构信噪比为35.5 db。三维图像虚拟重建的MSE为3%,虚拟重建的SSIM为1.38%,表明本文方法可以有效提高三维图像虚拟重建的能力。
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