Sie befinden Sich nicht im Netzwerk der Universität Paderborn. Der Zugriff auf elektronische Ressourcen ist gegebenenfalls nur via VPN oder Shibboleth (DFN-AAI) möglich. mehr Informationen...
Ergebnis 4 von 30732
Open Access
Deep Metric Learning: A Survey
Symmetry (Basel), 2019-08, Vol.11 (9), p.1066
2019

Details

Autor(en) / Beteiligte
Titel
Deep Metric Learning: A Survey
Ist Teil von
  • Symmetry (Basel), 2019-08, Vol.11 (9), p.1066
Ort / Verlag
Basel: MDPI AG
Erscheinungsjahr
2019
Link zum Volltext
Quelle
Elektronische Zeitschriftenbibliothek - Frei zugängliche E-Journals
Beschreibungen/Notizen
  • Metric learning aims to measure the similarity among samples while using an optimal distance metric for learning tasks. Metric learning methods, which generally use a linear projection, are limited in solving real-world problems demonstrating non-linear characteristics. Kernel approaches are utilized in metric learning to address this problem. In recent years, deep metric learning, which provides a better solution for nonlinear data through activation functions, has attracted researchers' attention in many different areas. This article aims to reveal the importance of deep metric learning and the problems dealt with in this field in the light of recent studies. As far as the research conducted in this field are concerned, most existing studies that are inspired by Siamese and Triplet networks are commonly used to correlate among samples while using shared weights in deep metric learning. The success of these networks is based on their capacity to understand the similarity relationship among samples. Moreover, sampling strategy, appropriate distance metric, and the structure of the network are the challenging factors for researchers to improve the performance of the network model. This article is considered to be important, as it is the first comprehensive study in which these factors are systematically analyzed and evaluated as a whole and supported by comparing the quantitative results of the methods.
Sprache
Englisch
Identifikatoren
ISSN: 2073-8994
eISSN: 2073-8994
DOI: 10.3390/sym11091066
Titel-ID: cdi_doaj_primary_oai_doaj_org_article_bca5528022cd44aab58e6fff41fdcc2d

Weiterführende Literatur

Empfehlungen zum selben Thema automatisch vorgeschlagen von bX