弹丸
计算机科学
遥感
人工智能
计算机视觉
上下文图像分类
图像(数学)
模式识别(心理学)
地质学
有机化学
化学
作者
Lingjun Li,Junwei Han,Xiwen Yao,Gong Cheng,Lei Guo
标识
DOI:10.1109/tgrs.2020.3033336
摘要
Few-shot scene classification aims to recognize unseen scene concepts from few labeled samples. However, most existing works are generally inclined to learn metalearners or transfer knowledge while ignoring the importance to learn discriminative representations and a proper metric for remote sensing images. To address these challenges, in this article, we propose an end-to-end network for boosting a few-shot remote sensing image scene classification, called discriminative learning of adaptive match network (DLA-MatchNet). Specifically, we first adopt the attention technique to delve into the interchannel and interspatial relationships to automatically discover discriminative regions. Then, the channel attention and spatial attention modules can be incorporated with the feature network by using different feature fusion schemes, achieving "discriminative learning." Afterward, considering the issues of the large intraclass variances and interclass similarity of remote sensing images, instead of simply computing the distances between the support samples and query samples, we concatenate the support and query discriminative features in depth and utilize a matcher to "adaptively" select the semantically relevant sample pairs to assign similarity scores. Our method leverages an episode-based strategy to train the model. Once trained, our model can predict the category of query image without further fine-tuning. Experimental results on three public remote sensing image data sets demonstrate the effectiveness of our model in the few-shot scene classification task.
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