Optical Technique, Volume. 50, Issue 1, 112(2024)
AMD subtype classification technique using Self-attention mechanism
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YANG Wenyi, CHEN Minghui, WU Yuquan, QIN Kaibo, YANG Zhengqi. AMD subtype classification technique using Self-attention mechanism[J]. Optical Technique, 2024, 50(1): 112