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计算机图形学期刊影响因子 计算机图形学 | CCF推荐期刊专刊信息2条

时间:2018-08-29 10:24:19

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计算机图形学期刊影响因子 计算机图形学 | CCF推荐期刊专刊信息2条

原标题:计算机图形学 | CCF推荐期刊专刊信息2条

图形学与多媒体 Computers & Graphics Call for papers: Shape Modelling International (SMI)

全文截稿: -03-11 影响因子: 1.2 CCF分类: C类 • 大类 : 工程技术 - 4区 • 小类 : 计算机:软件工程 - 4区 网址: http://www./computers-and-graphics

Shape Modeling International (SMI ), which this year is part of the International Geometry Summit , provides an international forum for the dissemination of new mathematical theories and computational techniques for modeling, simulating and processing digital representations of shapes and their properties to a community of researchers, developers, students, and practitioners across a wide range of fields. Conference proceedings (long and short papers) will be published in a Special Issue of Computer & Graphics Journal, Elsevier. Papers presenting original research are being sought in all areas of shape modeling and its applications.

SMI will be co-located with the Symposium on Solid and Physical Modeling (SPM ), the SIAM Conference on Computational Geometric Design (SIAM/GD ), the International Conference on Geometric Modelling and Processing (GMP), as part of the Geometry Summit .

The Fabrication and Sculpting Event (FASE ) will be organized in co-location with SMI . FASE will present original research at the intersection of theory and practice in shape modeling, fabrication and sculpting. SMI also participates in the Replicability Stamp Initiative, an additional recognition for authors who are willing to go one step further, and in addition to publishing the paper, provide a complete open-source implementation. For more details, check the SMI website.

We invite submissions related to, but not limited to, the following topics:

* Acquisition & reconstruction

* Behavior and animation models

* Compression & streaming

* Computational topology

* Correspondence & registration

* Curves & surfaces

* Deep Learning Techniques for Shape Processing

* Digital Fabrication & 3D Printing

* Exploration of shape collections

* Feature extraction and classification

* Healing & resampling

* Implicit surfaces

* Interactive modeling, design & editing

* Medial and skeletal representations

* Parametric & procedural models

* Segmentation

* Semantics of shapes

* Shape Analysis and Retrieval

* Shape Modeling applications (Biomedical, GIS, Artistic/cultural and others)

* Shape statistics

* Shape transformation, bending & deformation

* Simulation

* Sketching & 3D input modalities

* Triangle and polygonal meshes

* Shape modelling for 3D printing and fabrication

* Biomedical applications

* Artistic and cultural applications

图形学与多媒体 Signal Processing Special Issue on Robust Multi-Channel Signal Processing and Applications: On the Occasion of the 80th Birthday of Johann F. Böhme

全文截稿: -04-01 影响因子: 3.47 CCF分类: C类 • 小类 : 工程:电子与电气 - 3区 网址: http://www./signal-processing/

Multi-Channel Signal Processing has been the focus of tremendous theoretical advances and applications over the last nearly four decades, and continues to attract much attention by the signal processing community in both research and applications. Practical applications of multi-channel signal processing are found in many digital signal processing and communication systems for wireless communication, radar, sonar and biomedicine, just to mention a few. This special issue is to celebrate Professor Johann F. Böhme 80th birthday (26 January ). Johann was a pillar of multi-channel signal processing research worldwide who made fundamental contributions that paved the way and inspired many others to follow suit. His legacy as an academic advisor is most notable in generations of fine engineers and scientists that he produced. The special issue aims at attracting manus on timely topics by signal processing practitioners. It will showcase recent research in digital signal processing for multi-channel signal processing with a focus on robustness. Robust statistical methods account for the fact that the postulated models for the data are fulfilled only approximately and not exactly. In contrast to classical multi-channel signal processing, robust methods are not affected much by small changes in the data, such as outliers or small model departures. They also provide near-optimal performance when the assumptions hold exactly. Prospective papers should be unpublished and present novel, fundamental research offering innovative contributions either from a methodological or an application point of view. Tutorial papers will also be considered. 返回搜狐,查看更多

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