HIGH DIMENSIONAL FEATURE A LOW-RANK SIGNIFICANTLY REDUCES THE RECKONING SEVERAL MODAL RETRIEVALS
We instant a singular framework of internet Multimodal Distance Metric Learning, which concurrently learns optimal metrics on every individual modality and also the optimum mixture of the metrics from multiple modalities via efficient and scalable online learning this newspaper investigates a singul...
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ftjijitr:oai:ojs.ijitr.com:article/2147 2023-05-15T16:01:17+02:00 HIGH DIMENSIONAL FEATURE A LOW-RANK SIGNIFICANTLY REDUCES THE RECKONING SEVERAL MODAL RETRIEVALS Vidruma, T Eesha Prasanna, Y Laxmi 2018-06-20 application/pdf http://www.ijitr.com/index.php/ojs/article/view/2147 eng eng International Journal of Innovative Technology and Research http://www.ijitr.com/index.php/ojs/article/view/2147/pdf http://www.ijitr.com/index.php/ojs/article/view/2147 To The Editor-in-Chief, IJITR 1. I understand that the Editor-in-Chief may transfer the Copyright to a publisher at his discretion. 2. The author(s) reserve(s) all proprietary rights such as patent rights and the right to use all or part of the article in future works of their own such as lectures, press releases, and reviews of textbooks. In the case of republication of the whole, part, or parts thereof, in periodicals or reprint publications by a third party, written permission must be obtained from the The Editor-in-Chief IJITR, or his designated publisher. 3. I am authorized to execute this transfer of copyright on behalf of all the authors of the article named above. 4. I hereby declare that the material being presented by me in this paper is our original work, and does not contain or include material taken from other copyrighted sources. Wherever such material has been included, it has been clearly indented or/and identified by quotation marks and due and proper acknowledgements given by citing the source at appropriate places. International Journal of Innovative Technology and Research; Vol 6, No 3 (2018): April - May 2018; 8034-8036 CSE OMDML Content-Based Image Retrieval Multi-Modal Retrieval Distance Metric Learning Online Learning Low-Ranking info:eu-repo/semantics/article Peer-reviewed Article info:eu-repo/semantics/publishedVersion 2018 ftjijitr 2022-04-10T20:32:59Z We instant a singular framework of internet Multimodal Distance Metric Learning, which concurrently learns optimal metrics on every individual modality and also the optimum mixture of the metrics from multiple modalities via efficient and scalable online learning this newspaper investigates a singular framework of internet Multi-modal Distance Metric Learning, which teach variance metrics from several-modal data or multiple kinds of features with an efficient and scalable online learning scheme. OMDML takes accomplishments of online scholarship approaches for proud quality and scalability towards populous-ladder science employment. Like a canonic well-understood online learning technique, the Perceptions formula solely updates the design with the addition of an incoming motive having a continual weight whenever it's misclassified. Although various DML algorithms happen to be present in erudition, most existing DML methods commonly strain in with single-modal DML for the account that they drop familiar with a distance metric either on one friendly of feature or on the combined characteristic space simply by concatenating manifold kinds of diverse features together. To succor lessen the computational cost, we discourse a least-rank Online Multi-modal DML formula, which evade the necessity of doing intensive real demi--determinate projections and therefore saves a lot of computational cost for DML on high-dimensional data. Article in Journal/Newspaper DML International Journal of Innovative Technology and Research (IJITR) |
institution |
Open Polar |
collection |
International Journal of Innovative Technology and Research (IJITR) |
op_collection_id |
ftjijitr |
language |
English |
topic |
CSE OMDML Content-Based Image Retrieval Multi-Modal Retrieval Distance Metric Learning Online Learning Low-Ranking |
spellingShingle |
CSE OMDML Content-Based Image Retrieval Multi-Modal Retrieval Distance Metric Learning Online Learning Low-Ranking Vidruma, T Eesha Prasanna, Y Laxmi HIGH DIMENSIONAL FEATURE A LOW-RANK SIGNIFICANTLY REDUCES THE RECKONING SEVERAL MODAL RETRIEVALS |
topic_facet |
CSE OMDML Content-Based Image Retrieval Multi-Modal Retrieval Distance Metric Learning Online Learning Low-Ranking |
description |
We instant a singular framework of internet Multimodal Distance Metric Learning, which concurrently learns optimal metrics on every individual modality and also the optimum mixture of the metrics from multiple modalities via efficient and scalable online learning this newspaper investigates a singular framework of internet Multi-modal Distance Metric Learning, which teach variance metrics from several-modal data or multiple kinds of features with an efficient and scalable online learning scheme. OMDML takes accomplishments of online scholarship approaches for proud quality and scalability towards populous-ladder science employment. Like a canonic well-understood online learning technique, the Perceptions formula solely updates the design with the addition of an incoming motive having a continual weight whenever it's misclassified. Although various DML algorithms happen to be present in erudition, most existing DML methods commonly strain in with single-modal DML for the account that they drop familiar with a distance metric either on one friendly of feature or on the combined characteristic space simply by concatenating manifold kinds of diverse features together. To succor lessen the computational cost, we discourse a least-rank Online Multi-modal DML formula, which evade the necessity of doing intensive real demi--determinate projections and therefore saves a lot of computational cost for DML on high-dimensional data. |
format |
Article in Journal/Newspaper |
author |
Vidruma, T Eesha Prasanna, Y Laxmi |
author_facet |
Vidruma, T Eesha Prasanna, Y Laxmi |
author_sort |
Vidruma, T Eesha |
title |
HIGH DIMENSIONAL FEATURE A LOW-RANK SIGNIFICANTLY REDUCES THE RECKONING SEVERAL MODAL RETRIEVALS |
title_short |
HIGH DIMENSIONAL FEATURE A LOW-RANK SIGNIFICANTLY REDUCES THE RECKONING SEVERAL MODAL RETRIEVALS |
title_full |
HIGH DIMENSIONAL FEATURE A LOW-RANK SIGNIFICANTLY REDUCES THE RECKONING SEVERAL MODAL RETRIEVALS |
title_fullStr |
HIGH DIMENSIONAL FEATURE A LOW-RANK SIGNIFICANTLY REDUCES THE RECKONING SEVERAL MODAL RETRIEVALS |
title_full_unstemmed |
HIGH DIMENSIONAL FEATURE A LOW-RANK SIGNIFICANTLY REDUCES THE RECKONING SEVERAL MODAL RETRIEVALS |
title_sort |
high dimensional feature a low-rank significantly reduces the reckoning several modal retrievals |
publisher |
International Journal of Innovative Technology and Research |
publishDate |
2018 |
url |
http://www.ijitr.com/index.php/ojs/article/view/2147 |
genre |
DML |
genre_facet |
DML |
op_source |
International Journal of Innovative Technology and Research; Vol 6, No 3 (2018): April - May 2018; 8034-8036 |
op_relation |
http://www.ijitr.com/index.php/ojs/article/view/2147/pdf http://www.ijitr.com/index.php/ojs/article/view/2147 |
op_rights |
To The Editor-in-Chief, IJITR 1. I understand that the Editor-in-Chief may transfer the Copyright to a publisher at his discretion. 2. The author(s) reserve(s) all proprietary rights such as patent rights and the right to use all or part of the article in future works of their own such as lectures, press releases, and reviews of textbooks. In the case of republication of the whole, part, or parts thereof, in periodicals or reprint publications by a third party, written permission must be obtained from the The Editor-in-Chief IJITR, or his designated publisher. 3. I am authorized to execute this transfer of copyright on behalf of all the authors of the article named above. 4. I hereby declare that the material being presented by me in this paper is our original work, and does not contain or include material taken from other copyrighted sources. Wherever such material has been included, it has been clearly indented or/and identified by quotation marks and due and proper acknowledgements given by citing the source at appropriate places. |
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