Effective Data Augmentation for Active Sonar Classification Using Attention-Based Complementary Learning With Uncertainty Measure

被引:0
作者
Hwang, Youngsang [1 ]
Kim, Geunhwan [2 ]
Hong, Wooyoung [3 ]
Choo, Youngmin [4 ,5 ]
机构
[1] Republ Korea Navy, Gyeryong 32800, South Korea
[2] Changwon Natl Univ, Dept Elect Engn, Chang Won 51140, South Korea
[3] Sejong Univ, Dept Def Syst Engn, Seoul 05006, South Korea
[4] Seoul Natl Univ, Dept Naval Architecture & Ocean Engn, Seoul 08826, South Korea
[5] Res Inst Marine Syst Engn, Seoul 08826, South Korea
来源
IEEE ACCESS | 2025年 / 13卷
关键词
Sonar; Data models; Uncertainty; Training; Sonar measurements; Oceans; Sea measurements; Measurement uncertainty; Predictive models; Data augmentation; Active sonar classification; active learning; uncertainty measure; data augmentation;
D O I
10.1109/ACCESS.2025.3555420
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
We enhance the performance of active sonar classification by integrating a validated attention-based complementary learning model (ABCL) with an active learning (AL) framework, following modifications to adapt the model for AL. Acoustic data from active sonar systems strongly depend on ocean environmental conditions and deep learning (DL) models trained on limited active sonar data often demonstrate poor performance when tested on data from new environments. To enhance performance, a small number of test data samples with high uncertainties are selected to augment the existing training set. A deep ensemble approach is employed to measure the uncertainty of each sample, quantified as the variance of predictions from models with independently optimized weights. ABCL, initially designed for robust generalization with limited active sonar data, was modified to produce two predictions per sample. This modification enhances the reliability of uncertainty measurement and is referred to as deeper ABCL (DABCL). Two datasets from different experimental conditions serve as the training and test sets. Most high-uncertainty test samples identified through AL are found in regions with a mix of target and non-target instances, allowing DABCL to adapt effectively to the shifted test data distribution. This approach achieves superior performance compared to other DL models, including VGG16, ResNet18, and Swin Transformer, both before and after applying AL. Although mislabeling occurs in 20 percent of the uncertainty samples during data augmentation, the fine-tuned DABCL still outperforms the version without AL.
引用
收藏
页码:55670 / 55681
页数:12
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