Journal of Optoelectronics · Laser, Volume. 35, Issue 6, 612(2024)
DR grading model of fusing attention linear feature diversification
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LIANG Liming, DONG Xin, HE Anjun, YANG Yuan. DR grading model of fusing attention linear feature diversification[J]. Journal of Optoelectronics · Laser, 2024, 35(6): 612
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Received: Oct. 14, 2022
Accepted: Dec. 13, 2024
Published Online: Dec. 13, 2024
The Author Email: LIANG Liming (lianglm67@163.com)