CWSCNet:用于水下物体探测的通道加权跳转连接网络

Long Chen;Yunzhou Xie;Yaxin Li;Qi Xu;Junyu Dong
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引用次数: 0

摘要

配备智能水下物体探测技术的自主潜水器(AUV)对水下导航具有重要意义。先进的水下物体检测框架采用跳接来增强特征表示,从而进一步提高了检测精度。然而,我们发现标准跳越连接存在两个局限性:1)标准跳接没有考虑特征的异质性,导致特征融合策略不理想;2)跳接特征中存在特征冗余,融合后的特征图中并非所有通道都同等重要,网络学习应关注信息通道而非冗余通道。本文提出了一种新颖的通道加权跳接网络(CWSCNet)来学习多个超融合特征,以改进多尺度水下物体检测。在 CWSCNet 中,我们提出了一种名为信道加权跳接(CWSC)的新型特征融合模块,用于在特征融合过程中自适应地调整不同信道的重要性。CWSC 模块消除了特征异质性,加强了不同特征图的兼容性,同时也是一种有效的特征选择策略,使 CWSCNet 能够集中学习与物体相关信息更多的通道。在三个水下物体检测数据集 RUOD、URPC2017 和 URPC2018 上进行的广泛实验表明,所提出的 CWSCNet 在水下物体检测方面取得了相当或最先进的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
CWSCNet: Channel-Weighted Skip Connection Network for Underwater Object Detection
Autonomous underwater vehicles (AUVs) equipped with the intelligent underwater object detection technique is of great significance for underwater navigation. Advanced underwater object detection frameworks adopt skip connections to enhance the feature representation which further boosts the detection precision. However, we reveal two limitations of standard skip connections: 1) standard skip connections do not consider the feature heterogeneity, resulting in a sub-optimal feature fusion strategy; 2) feature redundancy exists in the skip connected features that not all the channels in the fused feature maps are equally important, the network learning should focus on the informative channels rather than the redundant ones. In this paper, we propose a novel channel-weighted skip connection network (CWSCNet) to learn multiple hyper fusion features for improving multi-scale underwater object detection. In CWSCNet, a novel feature fusion module, named channel-weighted skip connection (CWSC), is proposed to adaptively adjust the importance of different channels during feature fusion. The CWSC module removes feature heterogeneity that strengthens the compatibility of different feature maps, it also works as an effective feature selection strategy that enables CWSCNet to focus on learning channels with more object-related information. Extensive experiments on three underwater object detection datasets RUOD, URPC2017 and URPC2018 show that the proposed CWSCNet achieves comparable or state-of-the-art performances in underwater object detection.
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