CA3129213C - Analyse d'image par reseau neuronal - Google Patents

Analyse d'image par reseau neuronal

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Publication number
CA3129213C
CA3129213C CA3129213A CA3129213A CA3129213C CA 3129213 C CA3129213 C CA 3129213C CA 3129213 A CA3129213 A CA 3129213A CA 3129213 A CA3129213 A CA 3129213A CA 3129213 C CA3129213 C CA 3129213C
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property
images
neural network
training
confidence
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CA3129213A
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English (en)
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CA3129213A1 (fr
Inventor
Purang Abolmaesumi
Zhibin Liao
Teresa Tsang
Delaram Behnami
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University of British Columbia
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Priority claimed from PCT/CA2020/050147 external-priority patent/WO2020160664A1/fr
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Abstract

Selon l'invention, un procédé mis en uvre par ordinateur pour faciliter une analyse d'image par réseau neuronal consiste à recevoir des signaux représentant un ensemble d'images, provoquer l'application d'au moins une fonction de réseau neuronal à l'ensemble d'images pour déterminer au moins un paramètre de distribution de confiance de propriété, et provoquer l'application d'une fonction de distribution cumulative définie au moins en partie par le ou les paramètres de distribution de confiance de propriété à une pluralité de plages, chaque plage étant associée à une propriété respective qui peut être associée à l'ensemble d'images, pour déterminer une pluralité de confiances de propriété, chacune des confiances de propriété représentant une confiance que l'ensemble d'images doit être associé à une propriété respective parmi les propriétés. L'invention concerne également d'autres procédés, systèmes et supports lisibles par ordinateur.
CA3129213A 2019-02-06 2020-02-05 Analyse d'image par reseau neuronal Active CA3129213C (fr)

Applications Claiming Priority (5)

Application Number Priority Date Filing Date Title
US201962801827P 2019-02-06 2019-02-06
US62/801,827 2019-02-06
US201962894099P 2019-08-30 2019-08-30
US62/894,099 2019-08-30
PCT/CA2020/050147 WO2020160664A1 (fr) 2019-02-06 2020-02-05 Analyse d'image par réseau neuronal

Publications (2)

Publication Number Publication Date
CA3129213A1 CA3129213A1 (fr) 2020-08-13
CA3129213C true CA3129213C (fr) 2025-11-25

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