Author:
Lin Zhongwu,Ma Yuhao,Ming Ruixing,Yao Guohui,Lei Zhuo,Zhou Qinghui,Huang Min
Abstract
AbstractInfrared small target detection is widely applied in military and civilian fields. Due to the small size of infrared targets, textural detail is missing. Common target detection methods extract semantic feature by narrowing down the feature map several times, which may lead to the small targets lost in deep layers and are not effective for infrared small target detection. To solve this problem, we propose a novel network called deep asymmetric extraction and aggregation. The network mainly consists of two processes - the vertical feature extraction and the horizontal feature aggregation, both of which are enhanced by an asymmetric attention mechanism. In the vertical process, the use of asymmetric attention mechanism combined with the reduction of down-sampling makes the small target better retained in the deep layers. Then through the horizontal process, shallow spatial feature and deep semantic feature are aggregated to further highlight the small targets while suppressing background noise. Experiments on the public datasets NUAA-SISRT, NUDT-SISRT and MDvsFA-cGan show that our proposed network outperforms the state-of-the-art methods in terms of detection accuracy and parameter efficiency.
Funder
The characteristic & preponderant discipline of key construction universities in Zhejiang province
Collaborative Innovation Center of Statistical Data Engineering Technology & Application
The National Natural Science Foundation of China
Publisher
Springer Science and Business Media LLC
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