Skip to main navigation
Skip to search
Skip to main content
Hong Kong Baptist University Home
Help & FAQ
Link opens in a new tab
Search content at Hong Kong Baptist University
Home
Scholars
Departments / Units
Research Output
Projects / Grants
Prizes / Awards
Activities
Press/Media
Student theses
Datasets
Feature Extraction Based on Manifold Learning for Radio Fingerprint
Qiaolin Pu
, Tianshu Tang
, Joseph Kee-Yin Ng
, Fawen Zhang
Department of Computer Science
Research output
:
Chapter in book/report/conference proceeding
›
Conference proceeding
›
peer-review
Overview
Fingerprint
Fingerprint
Dive into the research topics of 'Feature Extraction Based on Manifold Learning for Radio Fingerprint'. Together they form a unique fingerprint.
Sort by:
Weight
Alphabetically
Keyphrases
Manifold Learning
100%
Feature Extraction
100%
Radio Frequency Fingerprint
100%
Large-scale Environment
100%
Computational Complexity
50%
Dimensionality Reduction
50%
Estimation Method
50%
High Dimension
50%
Received Signal Strength
50%
Feature Extraction Methods
50%
Fingerprint Database
50%
Offline Database
50%
Position Accuracy
50%
Network Fingerprinting
50%
Positioning Accuracy
50%
Fingerprint Feature
50%
Wireless Local Area Network
50%
Storage Problem
50%
T-distributed Stochastic Neighbor Embedding (t-SNE)
50%
Reduction Technologies
50%
Indoor Localization
50%
Problem Complexity
50%
Intrinsic Dimension Estimation
50%
Out-of-sample Extension
50%
Computer Science
Feature Extraction
100%
Manifold Learning
100%
Computational Complexity
50%
Dimensionality Reduction
50%
High Dimensionality
50%
Received Signal Strength
50%
Fingerprint Database
50%
Intrinsic Dimensionality
50%
wireless local area network
50%
T-Distributed Stochastic Neighbor Embedding
50%
Extension Method
50%
Problem Complexity
50%
Estimation Method
50%
Engineering
Dimensionality
100%
Feature Extraction
100%
Computational Complexity
14%
Received Signal Strength
14%
Local Area Network
14%
Intrinsic Dimensionality
14%
Stochastic neighbor embedding
14%