TY - JOUR
T1 - Boosting-Inspired sequential multi-head learning for underwater acoustic target recognition
AU - Yan, Chenhong
AU - Yan, Shefeng
AU - Yu, Yang
AU - Gao, Ruobin
AU - Pan, Guang
AU - Yang, Yankun
AU - Yao, Tianiyi
AU - Suganthan, Ponnuthurai N.
N1 - Publisher Copyright:
© 2026 Elsevier Ltd. All rights are reserved, including those for text and data mining, AI training, and similar technologies.
PY - 2026/5/30
Y1 - 2026/5/30
N2 - AbstractUnderwater acoustic target recognition (UATR) from ship-radiated noise is challenging due to strong intra-class variability and deployment-relevant domain shifts across targets and recordings. To improve robustness without computation burden or relying on extra annotations, we propose a boosting-inspired sequential multi-head learning framework built upon model-agnostic. Starting from a normally single-head baseline suffers from low diversity representation, we attach multiple lightweight classification heads to different depths of the network and train them sequentially. Each newly added head performs residual correction through an additive logit update, while a step-wise freezing protocol stabilizes optimization by locking previously trained heads. This design encourages a coarse-to-fine refinement of decisions and exploits multi-level acoustic representations in a principled manner. Experiments follow a recording-level split protocol to prevent clip leakage across train/test partitions. On ShipsEar, the proposed method improves ResNet18 accuracy from 63.96% to up to 70.31%, and increases the averaged score (mean of accuracy, precision, recall, and F1) from 61.36% to up to 68.75%. Gains consistently generalize across multiple encoders, and statistical tests confirm the improvements are significant. Overall, the proposed sequential residual multi-head strategy provides a simple, model-agnostic enhancement for practical UATR systems.
AB - AbstractUnderwater acoustic target recognition (UATR) from ship-radiated noise is challenging due to strong intra-class variability and deployment-relevant domain shifts across targets and recordings. To improve robustness without computation burden or relying on extra annotations, we propose a boosting-inspired sequential multi-head learning framework built upon model-agnostic. Starting from a normally single-head baseline suffers from low diversity representation, we attach multiple lightweight classification heads to different depths of the network and train them sequentially. Each newly added head performs residual correction through an additive logit update, while a step-wise freezing protocol stabilizes optimization by locking previously trained heads. This design encourages a coarse-to-fine refinement of decisions and exploits multi-level acoustic representations in a principled manner. Experiments follow a recording-level split protocol to prevent clip leakage across train/test partitions. On ShipsEar, the proposed method improves ResNet18 accuracy from 63.96% to up to 70.31%, and increases the averaged score (mean of accuracy, precision, recall, and F1) from 61.36% to up to 68.75%. Gains consistently generalize across multiple encoders, and statistical tests confirm the improvements are significant. Overall, the proposed sequential residual multi-head strategy provides a simple, model-agnostic enhancement for practical UATR systems.
KW - Boosting-inspired training
KW - Convolutional neural network
KW - Deep learning
KW - Multi-head neural networks
KW - Underwater acoustic target recognition
UR - https://www.scopus.com/pages/publications/105034737806
U2 - 10.1016/j.oceaneng.2026.125324
DO - 10.1016/j.oceaneng.2026.125324
M3 - 文章
AN - SCOPUS:105034737806
SN - 0029-8018
VL - 356
JO - Ocean Engineering
JF - Ocean Engineering
IS - P2
M1 - 125324
ER -