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Title

Scene understanding using deep learning

AuthorsHusain, Farzad ; Dellen, Babette ; Torras, Carme
KeywordsSemantic segmentation
Action recognition
Deep learning
Issue Date2017
PublisherElsevier
CitationHandbook of Neural Computation: 373-382 (2017)
AbstractDeep learning is a type of machine perception method that attempts to model high-level abstractions in data and encode them into a compact and robust representation. Such representations have found immense usage in applications related to computer vision. In this chapter we introduce two such applications, i.e., semantic segmentation of images and action recognition in videos. These applications are of fundamental importance for human-centered environment perception.
URIhttp://hdl.handle.net/10261/168996
Identifiersisbn: 978-0-12-811318-9
Appears in Collections:(IRII) Libros y partes de libros
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