Attention induced multi-head convolutional neural network for human activity recognition

Applied Soft Computing - Tập 110 - Trang 107671 - 2021
Zanobya N. Khan1, Jamil Ahmad2
1Department of CS & IT, SUIT Peshawar, Pakistan
2Department of Computer Science, Islamia College, Peshawar, Pakistan

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Tài liệu tham khảo

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