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臺灣學術機構典藏系統 (Taiwan Academic Institutional Repository, TAIR)
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Institution Date Title Author
元智大學 2019-07-03 Applying Time-Frequency Image of Convolutional Neural Network to Extract Feature on Long-Term EEG Signals to Predict Depth of Anesthesia Yu-Po Huang; Jerry Chen; Shou-Zen Fan; Maysam F. Abbod; J.S. Shieh; Yu-Chen Kung
元智大學 2019-07-03 Applying Time-Frequency Image of Convolutional Neural Network to Extract Feature on Long-Term EEG Signals to Predict Depth of Anesthesia Yu-Po Huang; Jerry Chen; Shou-Zen Fan; Maysam F. Abbod; J.S. Shieh; Yu-Chen Kung
元智大學 2019-07-03 Applying Time-Frequency Image of Convolutional Neural Network to Extract Feature on Long-Term EEG Signals to Predict Depth of Anesthesia Yu-Po Huang; Jerry Chen; Shou-Zen Fan; Maysam F. Abbod; J.S. Shieh; Yu-Chen Kung
元智大學 2019-01-23 Applying CNN Model for time-frequency analysis of EEG to assess the depth of anesthesia based on BIS value Yu-Po Huang; Jerry Chen; Shou-Zen Fan; Maysam F. Abbod; J.S. Shieh; Yu-Chen Kung
元智大學 2019-01-23 Applying CNN Model for time-frequency analysis of EEG to assess the depth of anesthesia based on BIS value Yu-Po Huang; Jerry Chen; Shou-Zen Fan; Maysam F. Abbod; J.S. Shieh; Yu-Chen Kung
元智大學 2019-01-23 Applying CNN Model for time-frequency analysis of EEG to assess the depth of anesthesia based on BIS value Yu-Po Huang; Jerry Chen; Shou-Zen Fan; Maysam F. Abbod; J.S. Shieh; Yu-Chen Kung
元智大學 2019 利用EEG的時頻分析與BIS值來建立CNN模型用來評估麻醉深度 黃昱博; Yu-Po Huang

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