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Titlebook: Low-Rank and Sparse Modeling for Visual Analysis; Yun Fu Book 2014 Springer International Publishing Switzerland 2014 Compressive Sensing.

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發(fā)表于 2025-3-21 19:39:57 | 只看該作者 |倒序?yàn)g覽 |閱讀模式
書目名稱Low-Rank and Sparse Modeling for Visual Analysis
編輯Yun Fu
視頻videohttp://file.papertrans.cn/589/588906/588906.mp4
概述Covers the most state-of-the-art topics of sparse and low-rank modeling.Examines the theory of sparse and low-rank analysis to the real-world practice of sparse and low-rank analysis.Contributions fro
圖書封面Titlebook: Low-Rank and Sparse Modeling for Visual Analysis;  Yun Fu Book 2014 Springer International Publishing Switzerland 2014 Compressive Sensing.
描述This book provides a view of low-rank and sparse computing, especially approximation, recovery, representation, scaling, coding, embedding and learning among unconstrained visual data. The book includes chapters covering multiple emerging topics in this new field. It links multiple popular research fields in Human-Centered Computing, Social Media, Image Classification, Pattern Recognition, Computer Vision, Big Data, and Human-Computer Interaction.?Contains an overview of the low-rank and sparse modeling techniques for visual analysis by examining both theoretical analysis and real-world applications.
出版日期Book 2014
關(guān)鍵詞Compressive Sensing; Computer Vision; Dimensionality Reduction; Low-Rank Approximation; Low-Rank Recover
版次1
doihttps://doi.org/10.1007/978-3-319-12000-3
isbn_softcover978-3-319-35567-2
isbn_ebook978-3-319-12000-3
copyrightSpringer International Publishing Switzerland 2014
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沙發(fā)
發(fā)表于 2025-3-21 20:19:06 | 只看該作者
Latent Low-Rank Representation,x itself is chosen as the dictionary, resulting in a powerful method that is useful for both subspace clustering and error correction. However, such a strategy may depress the performance of LRR, especially when the observations are insufficient and/or grossly corrupted. In this chapter we therefore
板凳
發(fā)表于 2025-3-22 02:57:58 | 只看該作者
Scalable Low-Rank Representation,under large-scale settings. In this chapter we therefore address the problem of solving nuclear norm regularized optimization problems (NNROPs), which contain a category of problems including LRR. Based on the fact that the optimal solution matrix to an NNROP is often low-rank, we revisit the classi
地板
發(fā)表于 2025-3-22 05:53:25 | 只看該作者
5#
發(fā)表于 2025-3-22 09:13:14 | 只看該作者
Low-Rank Transfer Learning,beled data for the new task may save considerable labeling efforts. However, data in the auxiliary databases are often obtained under conditions that differ from those in the new task. Transfer learning provides techniques for transferring learned knowledge from a . domain?to a . domain by mitigatin
6#
發(fā)表于 2025-3-22 15:51:53 | 只看該作者
Sparse Manifold Subspace Learning,ods considering global data structure e.g., PCA, LDA, SMSL aims at preserving the local neighborhood structure on the data manifold and provides a more accurate data representation via locality sparse coding. In addition, it removes the common concerns of many local structure based subspace learning
7#
發(fā)表于 2025-3-22 20:06:42 | 只看該作者
Low Rank Tensor Manifold Learning,s fact, two interesting questions naturally arise: How does the human brain represent these tensor perceptions in a “manifold” way, and how can they be recognized on the “manifold”? In this chapter, we present a supervised model to learn the intrinsic structure of the tensors embedded in a high dime
8#
發(fā)表于 2025-3-22 23:49:57 | 只看該作者
9#
發(fā)表于 2025-3-23 03:46:37 | 只看該作者
Low-Rank Outlier Detection,tion (SVDD) model. Different from the traditional SVDD, our approach learns multiple hyper-spheres to fit the normal data. The low-rank constraint helps us group the complicated dataset into several clusters dynamically. We present both primal and dual solutions to solve this problem, and provide th
10#
發(fā)表于 2025-3-23 06:30:47 | 只看該作者
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