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Titlebook: Computer Vision - ECCV 2014 Workshops; Zurich, Switzerland, Lourdes Agapito,Michael M. Bronstein,Carsten Rothe Conference proceedings 2015

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书目名称Computer Vision - ECCV 2014 Workshops
副标题Zurich, Switzerland,
编辑Lourdes Agapito,Michael M. Bronstein,Carsten Rothe
视频video
概述Includes supplementary material:
丛书名称Lecture Notes in Computer Science
图书封面Titlebook: Computer Vision - ECCV 2014 Workshops; Zurich, Switzerland, Lourdes Agapito,Michael M. Bronstein,Carsten Rothe Conference proceedings 2015
描述.The four-volume set LNCS 8925, 8926, 8927 and 8928 comprises the thoroughly refereed post-workshop proceedings of the Workshops that took place in conjunction with the 13th European Conference on Computer Vision, ECCV 2014, held in Zurich, Switzerland, in September 2014..The 203 workshop papers were carefully reviewed and selected for inclusion in the proceedings. They where presented at workshops with the following themes: where computer vision meets art; computer vision in vehicle technology; spontaneous facial behavior analysis; consumer depth cameras for computer vision; "chalearn" looking at people: pose, recovery, action/interaction, gesture recognition; video event categorization, tagging and retrieval towards big data; computer vision with local binary pattern variants; visual object tracking challenge; computer vision + ontology applies cross-disciplinary technologies; visual perception of affordance and functional visual primitives for scene analysis; graphical models in computer vision; light fields for computer vision; computer vision for road scene understanding and autonomous driving; soft biometrics; transferring and adapting source knowledge in computer vision; sur
出版日期Conference proceedings 2015
关键词3D modeling; 3D simulation; aesthetic judgment; assisted living systems; body scanning; elderly care; face
版次1
doihttps://doi.org/10.1007/978-3-319-16199-0
isbn_softcover978-3-319-16198-3
isbn_ebook978-3-319-16199-0Series ISSN 0302-9743 Series E-ISSN 1611-3349
issn_series 0302-9743
copyrightSpringer International Publishing Switzerland 2015
The information of publication is updating

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Domain Adaptation with a Domain Specific Class Means Classifierource domains. We make two contributions to the domain adaptation problem. First we extend the Nearest Class Mean (NCM) classifier by introducing for each class domain-dependent mean parameters as well as domain-specific weights. Second, we propose a generic adaptive semi-supervised metric learning
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Nonlinear Cross-View Sample Enrichment for Action Recognitionlts from the high expense to label training samples and their insufficiency to capture enough variability due to viewpoint changes..In this paper, we propose a solution that enriches training data by transferring their features across views. The proposed method is motivated by the fact that cross-vi
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Multi-Modal Distance Metric Learning: ABayesian Non-parametric Approachgeneous sources. Learning a similarity measure for such data is of great importance for vast number of applications such as ., ., ., etc..Defining an appropriate distance metric between data points with multiple modalities is a key challenge that has a great impact on the performance of many multime
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Multi-Task Multi-Sample Learningle positive sample and all negative samples for the class. In this paper we develop a . (MSL) model which enables joint regularization of the E-SVMs without any additional cost over the original ensemble learning. The advantage of the MSL model is that the degree of sharing between positive samples
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Learning Action Primitives for Multi-level Video Event Understandingfound recognition algorithms. In order to address this, we present an approach to discover action primitives, sub-categories of action classes, that allow us to model this intra-class variation. We learn action primitives and their interrelations in a multi-level spatio-temporal model for action rec
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Learning Skeleton Stream Patterns with Slow Feature Analysis for Action RecognitionED lights). The motion sequences are collected into MoCap action datasets, e.g., 1973 [.] and CMU [.] MoCap action datasets.) action data suggest that skeleton joint streams contain sufficient intrinsic information for understanding human body actions. With the advancement in depth sensors, e.g., Ki
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A Novel Visual Word Co-occurrence Model for Person Re-identificationem is fundamentally challenging due to appearance variations resulting from differing poses, illumination and configurations of camera views. To deal with these difficulties, we propose a novel visual word co-occurrence model. We first map each pixel of an image to a visual word using a codebook, wh
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Joint Learning for Attribute-Consistent Person Re-Identificationmatching people across cameras with different viewpoints and lighting conditions, as well as across human pose variations. The literature has since devised several approaches to tackle these challenges, but the vast majority of the work has been concerned with appearance-based methods. We propose an
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