Integrate YOLOv3 with a Self-attention Mechanism for Underwater Object Detection Based on Forward-looking Sonar Images

Jian Yang, Kaibin Xie, Kang Qiu
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引用次数: 1

Abstract

Detection of underwater objects based on sonar images is an important component of underwater robotics in the field of environmental perception and has attracted much attention. However, due to the complexity of the underwater environment, sonar devices, such as forward-looking sonar, encounter interference noises during imaging. In addition, there are few public sonar datasets that can be used for research. These challenges limit the task of underwater object recognition based on Deep Learning and make it difficult to make progress. Therefore, in this study, we first public a forward-looking sonar image dataset (FLSD) with rich data types and a large number of images. Then, we proposed a data augmentation method to address the lack of sonar images, and an experiment demonstrated its effectiveness. Finally, to strengthen the correlation of feature maps between channels in the training process of the network, we introduced the YOLOv3-based self-attention mechanism and proposed YOLOv3-SE. The results of our experiments show an improvement of 2.94% Precision, 3.34% Recall and 4.95% mAP on FLSD. Dataset attachment: https://code.ihub.org.cn/projects/14186
将YOLOv3与基于前视声纳图像的水下目标检测的自关注机制集成
基于声呐图像的水下目标检测是水下机器人环境感知领域的一个重要组成部分,受到了广泛的关注。然而,由于水下环境的复杂性,前视声呐等声呐设备在成像过程中会遇到干扰噪声。此外,很少有公共声纳数据集可以用于研究。这些挑战限制了基于深度学习的水下目标识别任务,使其难以取得进展。因此,在本研究中,我们首先公开了一个具有丰富数据类型和大量图像的前视声纳图像数据集(FLSD)。针对声纳图像不足的问题,提出了一种数据增强方法,并通过实验验证了该方法的有效性。最后,为了加强网络训练过程中通道间特征映射的相关性,我们引入了基于yolov3的自注意机制,并提出了YOLOv3-SE。实验结果表明,在FLSD上提高了2.94%的准确率、3.34%的召回率和4.95%的mAP。数据集附件:https://code.ihub.org.cn/projects/14186
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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