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Neutrosophic Hough Transform-Based Track Initiation Method for Multiple Target Tracking
Language: en
Pages: 13
Authors: EN FAN
Categories:
Type: BOOK - Published: - Publisher: Infinite Study

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A neutrosophic Hough transform-based track initiation method (NHT-TI) is proposed to solve the uncertain track initiation problem in a complex surveillance envi
Online Visual Tracking ofWeighted Multiple Instance Learning via Neutrosophic Similarity-Based Objectness Estimation
Language: en
Pages: 24
Authors: Keli Hu
Categories: Mathematics
Type: BOOK - Published: - Publisher: Infinite Study

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An online neutrosophic similarity-based objectness tracking with a weighted multiple instance learning algorithm (NeutWMIL) is proposed. Each training sample is
The Encyclopedia of Neutrosophic Researchers, 2nd volume
Language: en
Pages: 111
Authors: Florentin Smarandache
Categories: Mathematics
Type: BOOK - Published: - Publisher: Infinite Study

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This is the second volume of the Encyclopedia of Neutrosophic Researchers, edited from materials offered by the authors who responded to my invitation. The intr
New types of Neutrosophic Set/Logic/Probability, Neutrosophic Over-/Under-/Off-Set, Neutrosophic Refined Set, and their Extension to Plithogenic Set/Logic/Probability, with Applications
Language: en
Pages: 714
Authors: Florentin Smarandache
Categories: Technology & Engineering
Type: BOOK - Published: 2019-11-27 - Publisher: MDPI

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This book contains 37 papers by 73 renowned experts from 13 countries around the world, on following topics: neutrosophic set; neutrosophic rings; neutrosophic
Online Visual Tracking ofWeighted Multiple Instance Learning via Neutrosophic Similarity-Based Objectness Estimation
Language: en
Pages: 24
Authors: Keli Hu
Categories: Mathematics
Type: BOOK - Published: - Publisher: Infinite Study

DOWNLOAD EBOOK

An online neutrosophic similarity-based objectness tracking with a weighted multiple instance learning algorithm (NeutWMIL) is proposed. Each training sample is