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Typ záznamu:
stať ve sborníku (D)
Domácí pracoviště:
Ústav pro výzkum a aplikace fuzzy modelování (94410)
Název:
YOLO-ASC: You Only Look Once And See Contours
Citace
Hurtík, P., Molek, V. a Vlašánek, P. YOLO-ASC: You Only Look Once And See Contours.
In:
IEEE WORLD CONGRESS ON COMPUTATIONAL INTELLIGENCE (WCCI) 2020: 2020 International Joint Conference on Neural Networks (IJCNN) 2020-07-19 Glasgow , United Kingdom.
USA: IEEE, 2020. s. 1-7. ISBN 978-1-7281-6926-2.
Podnázev
Rok vydání:
2020
Obor:
Obecná matematika
Počet stran:
7
Strana od:
1
Strana do:
7
Forma vydání:
Elektronická verze
Kód ISBN:
978-1-7281-6926-2
Kód ISSN:
Název sborníku:
2020 International Joint Conference on Neural Networks (IJCNN)
Sborník:
Mezinárodní
Název nakladatele:
IEEE
Místo vydání:
USA
Stát vydání:
Název konference:
IEEE WORLD CONGRESS ON COMPUTATIONAL INTELLIGENCE (WCCI) 2020
Místo konání konference:
Glasgow , United Kingdom
Datum zahájení konference:
Typ akce podle státní
příslušnosti účastníků akce:
Celosvětová akce
Kód UT WoS:
EID:
2-s2.0-85093836005
Klíčová slova anglicky:
YOLO, object detection, object mask
Popis v původním jazyce:
YOLO is a useful, one-stage tool for object detection and classification. In this paper, we consider the application of grocery product detection. The grocery stores have a significant amount of product classes, so it is beneficial to postpone the classification into a second, specialized neural network with a higher capacity. Extracting bounding boxes for a classification network is not precise enough as the detected area includes redundant information about the background. We propose YOLO-ASC, which, for rectangular-based objects, detects bounding boxes together with object contour using a quadrangular. This approach allows detecting objects more accurately and without the background. For the quadrangular detection functionality, YOLO-ASC shares the feature maps that are already present in the network, and therefore its inference time is almost identical to the original YOLO. YOLO reaches high detection precision by using YOLO apriori knowledge, anchors extracted from data. In this work, we present two experiments where we demonstrate that YOLO-ASC training converges faster due to the symbiosis between the bounding box detection and quadrangular detection. Finally, we propose a tool for generating synthetic datasets with quadrangular labels that is helpful for transfer learning.
Popis v anglickém jazyce:
Seznam ohlasů
Ohlas
R01:
RIV/61988987:17610/20:A21021UC
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