国家自然科学基金(61771488)
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Figure 1
(Color online) Intelligent spectrum collaboration and confrontation framework
Figure 2
(Color online) Intelligent spectrum collaboration and confrontation cycle
Figure 3
(Color online) Data enhancement based spectrum situation generation
Figure 4
(Color online) Spectrum usages identification and reasoning framework
Figure 5
(Color online) Game-learning based efficient spectrum collaboration approaches
Figure 6
(Color online) Robust spectrum usage collaboration approach with imperfect information
Figure 7
(Color online) Fast match of spectrum confrontation strategies
Figure 8
(Color online) Confrontation game based strategy evolution