Scalable Sparse Subspace Clustering by Orthogonal Matching Pursuit
Subspace clustering methods based on ℓ 1 , ℓ 2 or nuclear norm regularization have become very popular due to their simplicity, theoretical guarantees and empirical success. However, the choice of the regularizer can greatly impact both theory and practice. For instance, ℓ 1 regularization is guaran...
Saved in:
Published in | 2016 IEEE Conference on Computer Vision and Pattern Recognition (CVPR) pp. 3918 - 3927 |
---|---|
Main Authors | , , |
Format | Conference Proceeding |
Language | English |
Published |
IEEE
01.06.2016
|
Subjects | |
Online Access | Get full text |
ISSN | 1063-6919 |
DOI | 10.1109/CVPR.2016.425 |
Cover
Loading…
Abstract | Subspace clustering methods based on ℓ 1 , ℓ 2 or nuclear norm regularization have become very popular due to their simplicity, theoretical guarantees and empirical success. However, the choice of the regularizer can greatly impact both theory and practice. For instance, ℓ 1 regularization is guaranteed to give a subspace-preserving affinity (i.e., there are no connections between points from different subspaces) under broad conditions (e.g., arbitrary subspaces and corrupted data). However, it requires solving a large scale convex optimization problem. On the other hand, ℓ 2 and nuclear norm regularization provide efficient closed form solutions, but require very strong assumptions to guarantee a subspace-preserving affinity, e.g., independent subspaces and uncorrupted data. In this paper we study a subspace clustering method based on orthogonal matching pursuit. We show that the method is both computationally efficient and guaranteed to give a subspace-preserving affinity under broad conditions. Experiments on synthetic data verify our theoretical analysis, and applications in handwritten digit and face clustering show that our approach achieves the best trade off between accuracy and efficiency. Moreover, our approach is the first one to handle 100,000 data points. |
---|---|
AbstractList | Subspace clustering methods based on ℓ 1 , ℓ 2 or nuclear norm regularization have become very popular due to their simplicity, theoretical guarantees and empirical success. However, the choice of the regularizer can greatly impact both theory and practice. For instance, ℓ 1 regularization is guaranteed to give a subspace-preserving affinity (i.e., there are no connections between points from different subspaces) under broad conditions (e.g., arbitrary subspaces and corrupted data). However, it requires solving a large scale convex optimization problem. On the other hand, ℓ 2 and nuclear norm regularization provide efficient closed form solutions, but require very strong assumptions to guarantee a subspace-preserving affinity, e.g., independent subspaces and uncorrupted data. In this paper we study a subspace clustering method based on orthogonal matching pursuit. We show that the method is both computationally efficient and guaranteed to give a subspace-preserving affinity under broad conditions. Experiments on synthetic data verify our theoretical analysis, and applications in handwritten digit and face clustering show that our approach achieves the best trade off between accuracy and efficiency. Moreover, our approach is the first one to handle 100,000 data points. |
Author | Chong You Vidal, Rene Robinson, Daniel P. |
Author_xml | – sequence: 1 surname: Chong You fullname: Chong You organization: Johns Hopkins Univ., Baltimore, MD, USA – sequence: 2 givenname: Daniel P. surname: Robinson fullname: Robinson, Daniel P. organization: Johns Hopkins Univ., Baltimore, MD, USA – sequence: 3 givenname: Rene surname: Vidal fullname: Vidal, Rene organization: Johns Hopkins Univ., Baltimore, MD, USA |
BookMark | eNotzL1OwzAUQGGDQKKUjEwseYGEe-34b4SIAlJRKwqslePctEEhqexk6NsDgumTznAu2Vk_9MTYNUKOCPa2_Fi_5hxQ5QWXJyyx2mChtDBGIp6yGYISmbJoL1gS4ycAoFUGjZ2x-413nas6SjcHF-IPUxUPzlNadlMcKbT9Lq2O6SqM-2E39K5LX9zo9795PYU4teMVO29cFyn5d87eFw9v5VO2XD0-l3fLrEUtx8ybmoOoreaV5rVvGkugvAIH4C0IDt4JCZrIUl14bSRVDgyQVA2gLEjM2c3ftyWi7SG0Xy4ct1ob0LYQ318STCU |
CODEN | IEEPAD |
ContentType | Conference Proceeding |
DBID | 6IE 6IH CBEJK RIE RIO |
DOI | 10.1109/CVPR.2016.425 |
DatabaseName | IEEE Electronic Library (IEL) Conference Proceedings IEEE Proceedings Order Plan (POP) 1998-present by volume IEEE Xplore All Conference Proceedings IEEE Electronic Library (IEL) IEEE Proceedings Order Plans (POP) 1998-present |
DatabaseTitleList | |
Database_xml | – sequence: 1 dbid: RIE name: IEEE Xplore url: https://proxy.k.utb.cz/login?url=https://ieeexplore.ieee.org/ sourceTypes: Publisher |
DeliveryMethod | fulltext_linktorsrc |
Discipline | Applied Sciences Computer Science |
EISBN | 9781467388511 1467388513 |
EISSN | 1063-6919 |
EndPage | 3927 |
ExternalDocumentID | 7780794 |
Genre | orig-research |
GroupedDBID | 23M 29F 29O 6IE 6IH 6IK ABDPE ACGFS ALMA_UNASSIGNED_HOLDINGS CBEJK IPLJI M43 RIE RIO RNS |
ID | FETCH-LOGICAL-i175t-c8d203d972b72dcff9e06c60a00c90320ca3507ee9ed4c785eba080e56f0154e3 |
IEDL.DBID | RIE |
IngestDate | Wed Aug 27 01:54:52 EDT 2025 |
IsPeerReviewed | false |
IsScholarly | true |
Language | English |
LinkModel | DirectLink |
MergedId | FETCHMERGED-LOGICAL-i175t-c8d203d972b72dcff9e06c60a00c90320ca3507ee9ed4c785eba080e56f0154e3 |
PageCount | 10 |
ParticipantIDs | ieee_primary_7780794 |
PublicationCentury | 2000 |
PublicationDate | 2016-June |
PublicationDateYYYYMMDD | 2016-06-01 |
PublicationDate_xml | – month: 06 year: 2016 text: 2016-June |
PublicationDecade | 2010 |
PublicationTitle | 2016 IEEE Conference on Computer Vision and Pattern Recognition (CVPR) |
PublicationTitleAbbrev | CVPR |
PublicationYear | 2016 |
Publisher | IEEE |
Publisher_xml | – name: IEEE |
SSID | ssj0001968189 ssj0023720 ssj0003211698 |
Score | 2.5312903 |
Snippet | Subspace clustering methods based on ℓ 1 , ℓ 2 or nuclear norm regularization have become very popular due to their simplicity, theoretical guarantees and... |
SourceID | ieee |
SourceType | Publisher |
StartPage | 3918 |
SubjectTerms | Clustering algorithms Clustering methods Computer vision Matching pursuit algorithms Optimization Silicon Sparse matrices |
Title | Scalable Sparse Subspace Clustering by Orthogonal Matching Pursuit |
URI | https://ieeexplore.ieee.org/document/7780794 |
hasFullText | 1 |
inHoldings | 1 |
isFullTextHit | |
isPrint | |
link | http://utb.summon.serialssolutions.com/2.0.0/link/0/eLvHCXMwjV1LT8MwDI7GTpwGbIi3cuBItz6T5srENCENJsbQblOTOjCBtmlrD_DrsdeuQ4gDp7Y-VFGcxJ8d2x9j19az1GXdOjqm0E0qtROHCOToSsn3Au1JQdXIgwfRH4f3k2hSYzdVLQwAbJLPoE2vm7v8dGFyCpV1pIxdXD97bA8dt6JWaxdPUQJtj6q-A_RshKpuFHxiY9n12Ox0X4ZPlNgl2iGxZP9gVtkYll6DDbZDKvJJ3tt5ptvm61e3xv-O-YC1diV8fFgZp0NWg_kRa5SYk5c7eo2iLa3DVtZktyPUG1VU8dES3V584OGCrjXw7kdOfRXwh1x_8sdV9rZ4JSTPB3igUyiLD_PVOp9lLTbu3T13-05JteDMED9kjolT3w1SJX0t_dRYq8AVRriJ6xpFHOsmCRA5AihIQyPjCHSCWBMiYQmEQXDM6vPFHE4Y18ZKcDVu9sSGoVTKRqEhU4melmcDccqaNEvTZdFNY1pO0Nnf4nO2T1oqkrMuWD1b5XCJMCDTVxv9fwNsLq7b |
linkProvider | IEEE |
linkToHtml | http://utb.summon.serialssolutions.com/2.0.0/link/0/eLvHCXMwjV1LT8JAEN4gHvSECsa3e_Booc_d7lUiQaVIBIw3wm53lWiAQHvQX-9MW8AYD57azqHZ7Gu-eX6EXBnHYJd1Y8kQXTcxl1boA5DDkJLreNLhDKuRoy5rD_37l-ClRK7XtTBa6yz5TNfxNYvlxzOVoquswXlow_7ZItug9wMnr9baeFQEA-0j1t8e2DZMrGMKLvKxbLpsNprPvSdM7WJ1H3myf3CrZKqlVSHRalB5Rsl7PU1kXX396tf431HvkdqmiI_21uppn5T09IBUCtRJizO9BNGK2GElq5KbPqwc1lTR_hwMX3jA9QLGtabNjxQ7K8APqfykj4vkbfaKWJ5GcKWjM4v20sUynSQ1MmzdDpptqyBbsCaAIBJLhbFre7HgruRurIwR2maK2WPbVgJZ1tXYA-yotdCxr3gYaDkGtKkDZhCGae-QlKezqT4iVCrDtS3huI-N73MhTOArVJZgaznGY8ekirM0muf9NEbFBJ38Lb4kO-1B1Bl17roPp2QXVyxP1Toj5WSR6nMABYm8yPbCN7zjsiQ |
openUrl | ctx_ver=Z39.88-2004&ctx_enc=info%3Aofi%2Fenc%3AUTF-8&rfr_id=info%3Asid%2Fsummon.serialssolutions.com&rft_val_fmt=info%3Aofi%2Ffmt%3Akev%3Amtx%3Abook&rft.genre=proceeding&rft.title=2016+IEEE+Conference+on+Computer+Vision+and+Pattern+Recognition+%28CVPR%29&rft.atitle=Scalable+Sparse+Subspace+Clustering+by+Orthogonal+Matching+Pursuit&rft.au=Chong+You&rft.au=Robinson%2C+Daniel+P.&rft.au=Vidal%2C+Rene&rft.date=2016-06-01&rft.pub=IEEE&rft.eissn=1063-6919&rft.spage=3918&rft.epage=3927&rft_id=info:doi/10.1109%2FCVPR.2016.425&rft.externalDocID=7780794 |