与多媒体社区建立密切关系

IEEE Multim. Pub Date : 2014-10-01 DOI:10.1109/MMUL.2014.60
Wenjun Zeng, Zicheng Liu, E. Steinbach
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引用次数: 0

摘要

IEEE多媒体杂志创刊于1994年,是IEEE多媒体领域的第一本刊物。MM服务于对多种媒体类型感兴趣的学者,开发者,从业者和学生社区,和谐地使用在一起,创造新的体验。2014年初,《新闻早报》编辑部推出多项措施,加强与各多媒体社群的合作,以接触更广泛的读者,促进更有效率的出版程序。最初的努力之一是与IEEE国际多媒体与博览会会议(ICME)合作,该会议是自2000年以来由四个IEEE学会赞助的旗舰多媒体会议,通过“快速通道”审查和出版过程,促进在MM中发表ICME顶级论文的扩展版本。2014年5月,ICME前26位论文的作者被邀请提交他们论文的扩展版本(至少有30%的新材料)到这个快速通道特刊,计划在2014年10 - 12月出版。我们收到了15份提交,涵盖了各种主题,如音频和视频编码、视觉和模式分析、对象跟踪、质量评估和社交媒体。经过严格的同行评议过程,其中的8份作品被接受为本期特刊,现在的标题是“多媒体研究热点话题”。(其他几篇优秀的作品也被接受,将于2015年初出版。)接受的文章中有一个重要的子集解决了可视化分析和跟踪方面的问题。在“改进匹配成本和视差细化的局部立体匹配”一文中,焦建波、王荣刚、王文民、董盛富、王振宇、高文等介绍了一种改进局部立体匹配的技术。他们提出了一种新的成本度量来提高初始匹配性能,然后采用二次细化技术来去除剩余的异常值。在“基于多模态特征融合的三维形状识别与检索”一文中,卜淑慧、程少光、刘振宝和韩俊伟提出了一种深度学习框架,用于融合三维形状和二维基于视图的特征,用于三维形状识别与检索。注视跟踪技术在许多交互式和诊断应用中具有很高的价值。在“实时注视估计与在线校准”中,孙莉、宋明丽、刘自成和孙明婷提出了一种新的基于3d模型的注视估计系统,该系统使用单个消费者深度相机(Kinect)进行在线校准,以不断改进个人特定的眼睛参数。刘日生、金伟、苏志勋、张长成在《基于在线优化的隐子空间投影追踪鲁棒视觉跟踪》一文中提出了一种在线子空间学习技术来解决视觉跟踪中的特征提取问题。在“面向多任务目标跟踪的高质量词典和分类器在线学习”一文中,范宝杰、聪洋、杜英奎、高浩、唐阳东将目标跟踪问题表述为粒子滤波框架下的二值分类问题。通过最小化考虑重构和分类错误的目标函数,他们演示了如何共同获得高质量的字典和最优线性分类器。与多媒体社区建立密切关系
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Forging a Close Relationship with Multimedia Communities
EEE MultiMedia magazine was founded in 1994 and was the first IEEE publication in the multimedia area. MM serves the community of scholars, developers, practitioners, and students who are interested in multiple media types, used harmoniously together, for creating new experiences. In early 2014, the MM editorial board launched several initiatives to strengthen its collaboration with various multimedia communities in an effort to reach out to a wider range of audience and foster a more efficient publication process. One of the first efforts was to collaborate with the IEEE International Conference on Multimedia & Expo (ICME), the flagship multimedia conference that has been sponsored by four IEEE societies since 2000, to facilitate the publication of extended versions of top ICME papers in MM via a “fast track” review and publication process. In May 2014, the authors of the top 26 ICME 2014 papers were invited to submit extended versions (with at least 30 percent new material) of their papers to this fast track special issue scheduled to be published in the October– December 2014 issue. We received 15 submissions that span various topics such as audio and video coding, vision and pattern analysis, object tracking, quality assessment, and social media. After a rigorous peer-review process, eight of those submissions were accepted for this special issue, now titled “Hot Topics in Multimedia Research.” (Several other fine submissions were also accepted and will be published in early 2015.) A significant subset of the accepted articles address issues in visual analysis and tracking. In “Local Stereo Matching with Improved Matching Cost and Disparity Refinement,” Jianbo Jiao, Ronggang Wang, Wenmin Wang, Shengfu Dong, Zhenyu Wang, and Wen Gao present a technique for improving local stereo matching. They propose a new cost measure to improve the initial matching performance followed by a secondary refinement technique to remove the remaining outliers. In “Multimodal Feature Fusion for 3D Shape Recognition and Retrieval,” Shuhui Bu, Shaoguang Cheng, Zhenbao Liu, and Junwei Han present a deep learning framework to fuse 3D shape and 2D view-based features for 3D shape recognition and retrieval. Gaze-tracking technology is highly valuable in many interactive and diagnostic applications. In “Real-Time Gaze Estimation with Online Calibration,” Li Sun, Mingli Song, Zicheng Liu, and Ming-Ting Sun present a novel 3D-model-based gaze-estimation system using a single consumer depth camera (Kinect) with online calibration to constantly improve person-specific eye parameters. The article “Latent Subspace Projection Pursuit with Online Optimization for Robust Visual Tracking” by Risheng Liu, Wei Jin, Zhixun Su, and Changcheng Zhang proposes an online subspace learning technique to address the problem of feature extraction for visual tracking. In “Online Learning a High-Quality Dictionary and Classifier Jointly for Multitask Object Tracking,” Baojie Fan, Yang Cong, Yingkui Du, Hao Gao, and Yangdong Tang formulate object tracking as a binary classification problem in a particle filter framework. By minimizing an objective function that takes into account both reconstruction and classification errors, they demonstrate how to obtain a high-quality dictionary and optimal linear classifier jointly. Forging a Close Relationship with Multimedia Communities
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