Opto-Electronic Engineering, Volume. 50, Issue 12, 230242-1(2023)
A multi-target semantic segmentation method for millimetre wave SAR images based on a dual-branch multi-scale fusion network
There are several major challenges in the detection and identification of contraband in millimetre-wave synthetic aperture radar (SAR) security imaging: the complexities of small target sizes, partially occluded targets and overlap between multiple targets, which are not conducive to the accurate identification of contraband. To address these problems, a contraband detection method based on dual branch multiscale fusion network (DBMFnet) is proposed. The overall architecture of the DBMFnet follows the encoder-decoder framework. In the encoder stage, a dual-branch parallel feature extraction network (DBPFEN) is proposed to enhance the feature extraction. In the decoder stage, a multi-scale fusion module (MSFM) is proposed to enhance the detection ability of the targets. The experimental results show that the proposed method outperforms the existing semantic segmentation methods in the mean intersection over union (mIoU) and reduces the incidence of missed and error detection of targets.
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Junhua Ding, Minghui Yuan. A multi-target semantic segmentation method for millimetre wave SAR images based on a dual-branch multi-scale fusion network[J]. Opto-Electronic Engineering, 2023, 50(12): 230242-1
Category: Article
Received: Sep. 28, 2023
Accepted: Nov. 30, 2023
Published Online: Mar. 26, 2024
The Author Email: Yuan Minghui (袁明辉)