IFE-网络:用于自动驾驶水下航行器弱特征目标识别的改进型特征增强网络

IF 1.9 4区 计算机科学 Q3 ROBOTICS Robotica Pub Date : 2024-02-08 DOI:10.1017/s0263574724000195
Lei Cai, Bingyuan Zhang, Yuejun Li, Haojie Chai
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引用次数: 0

摘要

识别水下目标是自主水下航行器巡逻和探测工作的重要组成部分。在真实水下环境的视觉图像识别过程中,目标的空间和语义特征往往会出现不同程度的丢失,而特定类型水下样本的稀缺又会导致类别数据的不均衡。这类问题使得目标特征显得薄弱,严重影响了水下目标识别的准确性。传统的基于数据和特征增强的深度学习方法无法达到理想的识别效果。基于上述难点,本文提出了一种针对弱特征目标识别的改进型特征增强网络。首先,构建多尺度空间和语义特征增强模块,准确提取提取目标的特征信息。其次,本文通过正负样本的多尺度特征对比,解决了目标特征失真对分类的影响。最后,本文使用 Rank & Sort Loss 函数训练深度目标检测,以解决高度不平衡样本数据下的识别准确率问题。实验结果表明,在水下模糊目标图像和失真目标图像的识别中,所提方法的识别准确率分别比现有算法高出 2.28% 和 3.84%,证明了所提方法的有效性和优越性。
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IFE-net: improved feature enhancement network for weak feature target recognition in autonomous underwater vehicles
The recognizing underwater targets is a crucial component of autonomous underwater vehicle patrols and detection efforts. In the process of visual image recognition in real underwater environment, the spatial and semantic features of the target often appear to different degrees of loss, and the scarcity of specific types of underwater samples leads to unbalanced data on categories. This kind of problem makes the target features appear weak and seriously affects the accuracy of underwater target recognition. Traditional deep learning methods based on data and feature enhancement cannot achieve ideal recognition effect. Based on the above difficulties, this paper proposes an improved feature enhancement network for weak feature target recognition. Firstly, a multi-scale spatial and semantic feature enhancement module is constructed to extract the feature information of the extraction target accurately. Secondly, this paper solves the influence of target feature distortion on classification through multi-scale feature comparison of positive and negative samples. Finally, the Rank & Sort Loss function was used to train the depth target detection to solve the problem of recognition accuracy under highly unbalanced sample data. Experimental results show that the recognition accuracy of the proposed method is 2.28% and 3.84% higher than that of the existing algorithms in the recognition of underwater fuzzy and distorted target images, which demonstrates the effectiveness and superiority of the proposed method.
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来源期刊
Robotica
Robotica 工程技术-机器人学
CiteScore
4.50
自引率
22.20%
发文量
181
审稿时长
9.9 months
期刊介绍: Robotica is a forum for the multidisciplinary subject of robotics and encourages developments, applications and research in this important field of automation and robotics with regard to industry, health, education and economic and social aspects of relevance. Coverage includes activities in hostile environments, applications in the service and manufacturing industries, biological robotics, dynamics and kinematics involved in robot design and uses, on-line robots, robot task planning, rehabilitation robotics, sensory perception, software in the widest sense, particularly in respect of programming languages and links with CAD/CAM systems, telerobotics and various other areas. In addition, interest is focused on various Artificial Intelligence topics of theoretical and practical interest.
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