首页 | 本学科首页   官方微博 | 高级检索  
     

基于混合频谱信号编码的网格纹理平滑
引用本文:郭艺辉,陆寄远,黄承慧,钟雪灵,林淑金,苏卓,罗笑南.基于混合频谱信号编码的网格纹理平滑[J].计算机学报,2021,44(2):318-333.
作者姓名:郭艺辉  陆寄远  黄承慧  钟雪灵  林淑金  苏卓  罗笑南
作者单位:广东金融学院互联网金融与信息工程学院 广州 510521;广东金融学院互联网金融与信息工程学院 广州 510521;广东金融学院互联网金融与信息工程学院 广州 510521;广东金融学院互联网金融与信息工程学院 广州 510521;中山大学传播与设计学院 广州 510006;中山大学计算机学院 广州 510006;桂林电子科技大学计算机与信息安全学院 广西桂林 541004
基金项目:广东省自然科学基金;本课题得到国家自然科学基金项目;广东省普通高校科研平台和科研创新项目;广东省普通高校人文社会科学研究重点项目;广东省基础与应用基础研究基金;广州市科技计划项目
摘    要:网格纹理平滑技术要求既能保持模型大尺度结构特征又能去除模型小尺度纹理.然而当模型小尺度纹理与噪声相差较大时,大多数网格光顺算法会将网格纹理识别为特征加以保持,而无法有效将其去除;现有的基于谱分析的网格光顺方法尽管能有效去除网格纹理,但又无法同时保持模型大尺度结构特征.为解决该问题,本文提出一种基于混合频谱信号编码的低通过滤网格纹理平滑算法.首先采用基于视觉感知的特征识别方法,准确区分模型大尺度与小尺度特征.然后,基于顶点特征尺度,采用差异性频谱信号编码的方式进行几何信息重建,最终实现在保持网格模型大尺度结构特征的同时有效去除小尺度纹理.算法解决了现有网格光顺方法在模型小尺度纹理特征与噪声有明显区别时,无法有效去除纹理的问题;并且也解决了现有基于谱分析的网格光顺方法无法在去除模型小尺度纹理的同时,又能保持模型大尺度特征的矛盾.实验结果验证了算法的有效性.

关 键 词:网格纹理平滑  网格光顺  模型尺度特征  视觉感知  谱图理论  混合频谱编码  数字几何处理

Mesh Texture Smoothing Based on Hybrid Spectral Encoding
GUO Yi-Hui,LU Ji-Yuan,HUANG Cheng-Hui,ZHONG Xue-Ling,LIN Shu-Jin,SU Zhuo,LUO Xiao-Nan.Mesh Texture Smoothing Based on Hybrid Spectral Encoding[J].Chinese Journal of Computers,2021,44(2):318-333.
Authors:GUO Yi-Hui  LU Ji-Yuan  HUANG Cheng-Hui  ZHONG Xue-Ling  LIN Shu-Jin  SU Zhuo  LUO Xiao-Nan
Affiliation:(School of Internet Finance and Information Engineering,Guangdong University of Finance,Guangzhou 510521;School of Communication and Design,Sun Yat-sen University,Guangzhou 510006;School of Computer Science and Engineering,Sun Yat-sen University,Guangzhou 510006;School of Computer Science and Information Security,Guilin University of Electronic Technology,Guilin,Guangxi 541004)
Abstract:More and more application systems,such as mesh model reuse,3D texture mapping,3D data transmission,mesh compression,simplification,3D real-time rendering and so on,have put forward requirements for the 3D mesh textures smoothing.The technology of the mesh texture smoothing is expected to both reduce the small-scale detail texture features and keep the large-scale intrinsic structures.Traditional mesh smoothing methods tend to focus on removing high frequency random noise and preserving the features.In case of the small-scale textures are quite different from noise,those methods tend to regard them as features to preserve them rather than eliminate them.The existing mesh smoothing methods based on spectral analysis can smooth out all of the small-scale textures,but also over-smooth the large-scale structural features on the models.To solve these problems,the paper proposed a low-pass filter based on the hybrid spectral encoding.Firstly,a feature recognition method based on the visual awareness is used to accurately recognize the scale-features on the models.The mesh Laplace-Beltrami operator is constructed and the base functions are obtained through the spectral analysis.Regarding the geometric informations of the vertices as signals,a spectral space is constructed by projecting the geometric informations to the base functions.Using the low-frequency coefficients,a smooth base surface of the original mesh model is constructed,which is regarded as the three-dimensional datum of the original mesh model.The height between the mesh vertex and the three-dimensional datum is calculated to obtain the visual importance of the vertex.The vertex with the height value larger than a threshold is defined as the large-scale feature vertex.Next,a hybrid spectral encoding method is proposed to reconstruct the mesh model.There are two frequencies setted appropriately:one is the higher frequency β which is used to remove high frequency noise and construct structural features,and the other is the lower frequency α which is used to remove detail textures.On the large-scale vertex,the high-frequency coefficient β is adopted to reconstruct the geometry information;and on the small-scale vertex,the low-frequency coefficient α is adopted correspondingly.The result is that the large-scale structure features are preserved effectively,and at the same time the small-scale textures are removed completely.The major contribution of the proposed method is that it presents a hybrid spectral encoding framework which can adopt different frequency coefficients to construct the vertex geometry according to different scale features,and the aim of removing the small-scale features and simultaneously maintaining the large-scale structural features has been achieved.The proposed method solves the problem that the existing mesh smoothing methods cannot effectively remove the small-scale textures when the small-scale textures differ significantly from the noise.And it also solves the contradiction that the existing spectral mesh smoothing method cannot maintain the large-scale features when removing the small-scale features,and cannot remove the small-scale features when maintaining the large-scale features as much as possible.The paper demonstrates the effectiveness of the proposed method compared with many state-of-the-art mesh smoothing methods,the experimental results verify the superiority of the proposed method.
Keywords:mesh texture smoothing  mesh smoothing  multiscale feature  visual awareness  spectral theory  hybrid spectral encoding  digital geometry processing
本文献已被 维普 万方数据 等数据库收录!
设为首页 | 免责声明 | 关于勤云 | 加入收藏

Copyright©北京勤云科技发展有限公司  京ICP备09084417号