Entropy-based analysis and classification of acute tonic pain from microwave transcranial signals obtained via the microwave-scattering approach
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Dao-Guo Yang | Miao Cai | Weidong Hao | Daoshuang Geng | Lixia Zheng | M. Cai | Dao-Guo Yang | Daoshuang Geng | Weidong Hao | Lixia Zheng
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