Computer and Modernization ›› 2023, Vol. 0 ›› Issue (05): 1-7.
Online:
2023-06-06
Published:
2023-06-06
HUA Xin-yu, QI Yun-song. A Hybrid Brain Tumor Classfication Study Based on CBAM and EfficientNet with Improved Channel Attention[J]. Computer and Modernization, 2023, 0(05): 1-7.
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