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Multi-Feature Collaborative Fusion Network with Deep Supervision for SAR Ship Classification

Multi-feature SAR ship classification aims to build models that can process, correlate, and fuse information from both handcrafted and deep features. Although handcrafted features provide rich expert knowledge, current fusion methods inadequately explore the relatively significant role of handcrafte...

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Published in:IEEE transactions on geoscience and remote sensing 2023-07, p.1-1
Main Authors: Zheng, Hao, Hu, Zhigang, Yang, Liu, Xu, Aikun, Zheng, Meiguang, Zhang, Ce, Li, Keqin
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container_title IEEE transactions on geoscience and remote sensing
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creator Zheng, Hao
Hu, Zhigang
Yang, Liu
Xu, Aikun
Zheng, Meiguang
Zhang, Ce
Li, Keqin
description Multi-feature SAR ship classification aims to build models that can process, correlate, and fuse information from both handcrafted and deep features. Although handcrafted features provide rich expert knowledge, current fusion methods inadequately explore the relatively significant role of handcrafted features in conjunction with deep features, the imbalances in feature contributions, and the cooperative ways in which features learn. In this paper, we propose a novel multi-feature collaborative fusion network with deep supervision (MFCFNet) to effectively fuse handcrafted features and deep features for SAR ship classification tasks. Specifically, our framework mainly includes two types of feature extraction branches, a knowledge supervision and collaboration module, and a feature fusion and contribution assignment module. The former module improves the quality of the feature maps learned by each branch through auxiliary feature supervision and introduces a synergy loss to facilitate the interaction of information between deep features and handcrafted features. The latter module utilizes an attention mechanism to adaptively balance the importance among various features and assign the corresponding feature contributions to the total loss function based on the generated feature weights. We conducted extensive experimental and ablation studies on two public datasets, OpenSARShip-1.0 and FUSAR-Ship, and the results show that MFCFNet is effective and outperforms single deep feature and multi-feature models based on previous internal FC layer and terminal FC layer fusion. Furthermore, our proposed MFCFNet exhibits better performance than the current state-of-the-art methods.
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subjects Collaboration
Convolutional neural networks
deep supervision
Feature extraction
handcrafted feature
Marine vehicles
Multi-Feature fusion
Robustness
SAR ship classification
Synthetic aperture radar
synthetic aperture radar (SAR)
Task analysis
title Multi-Feature Collaborative Fusion Network with Deep Supervision for SAR Ship Classification
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