Meta-Transfer Learning with Attention for Marine Aquaculture Information Extraction
水产养殖
学习迁移
萃取(化学)
计算机科学
渔业
人工智能
鱼
生物
化学
色谱法
作者
Dezhi Tian,Jun Xing,Xinzhe Wang,Danchen Zheng,Min Han,Jianchao Fan
标识
DOI:10.1109/icnc59488.2023.10462780
摘要
Floating raft aquaculture is a crucial marine aquaculture method, the difference of floating raft aquaculture in different regions in remote sensing images brings challenges to marine aquaculture monitoring by deep learning information extraction. Meta-transfer learning with attention (MTLA) approach is proposed in this paper. Before the meta-training phase, a data enhancement module is included in the network framework to address the problem of few-task scenarios in meta-learning. Transfer attention block designed specifically for extracting information from SAR images by combining the strengths of transfer learning and attention mechanisms to enhance the capability of feature extraction. Actual GF-3 SAR images from different areas are utilized to verify the effectiveness of the proposed methods.