Title: ExperLifeCLEF-AI vs Experts classification competition
Authors: Picek, Lukáš
Citation: RENDL, Jan ed. Studentská vědecká konference: magisterské a doktorské studijní programy, sborník rozšířených abstraktů, květen 2018, Plzeň. Plzeň: Západočeská univerzita v Plzni, 2019, s. 74-75. ISBN 978-80-261-0790-3.
Issue Date: 2018
Publisher: Západočeská univerzita v Plzni
Document type: konferenční příspěvek
conferenceObject
URI: http://hdl.handle.net/11025/29833
http://svk.fav.zcu.cz/download/sbornik_svk_2018.pdf
ISBN: 978-80-261-0790-3
Keywords: automatická identifikace;počítačové zpracování obrazu;ExperLifeCLEF;rozpoznávání rostlin
Keywords in different language: automatic identification;computer image processing;ExperLifeCLEF;plant recognition
Abstract in different language: Automated identification of plants has improved considerably in the last few years thanks to recent research in Deep Learning. In the scope of LifeCLEF2, there has been measured an impressive identification performance achieved mainly with Deep models. This raises the question of how far automated systems are from human expertise. Main problem for both of them is that a picture contains only a partial information about the observed plant and its often not sufficient to determine the right species. For instance, a decisive organ such as flower or fruit, might be or might not be present on the picture. As a consequence, even the best experts can be confused and/or disagree between each other when attempting to identify a plant from a set of pictures.
Rights: © Západočeská univerzita v Plzni
Appears in Collections:Studentská vědecká konference 2018-magisterské a doktorské studijní programy
Studentská vědecká konference 2018-magisterské a doktorské studijní programy

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