Abstract

Underwater target recognition is one core technology of underwater unmanned detection. To improve the accuracy of underwater automatic target recognition, a sonar image recognition method based on convolutional neural network was proposed and the underwater target recognition model was established according to the characteristics of sonar images. Firstly, the sonar image was segmented and clipped with a saliency detection method to reduce the dimension of input data, and to reduce the interference of image background to the feature extraction process. Secondly, by using stacked convolutional layers and pooling layers, the high-level semantic information of the target was automatically learned from the input sonar image, to avoid damaging the effective information caused by extracting image features manually. Finally, the spatial pyramid pooling method was used to extract the multi-scale information from the sonar feature maps, which was to make up for the lack of detailed information of sonar images and solve the problem caused by the inconsistent size of input images. On the collected sonar image dataset, the experimental results show that the target recognition accuracy of the present method can recognize underwater targets more accurately and efficiently than the conventional convolutional neural networks.

Highlights

  • To improve the accuracy of underwater automatic target recognition, a sonar image recognition method based on convolutional neural network was proposed and the underwater target recognition model was established according to the character⁃ istics of sonar images

  • The sonar image was segmented and clipped with a saliency detection method to re⁃ duce the dimension of input data, and to reduce the interference of image background to the feature extraction process

  • By using stacked convolutional layers and pooling layers, the high⁃level semantic information of the target was automatically learned from the input sonar image, to avoid damaging the effective information caused by extracting image features manually

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Summary

Introduction

西北工业大学学报 Journal of Northwestern Polytechnical University https: / / doi.org / 10.1051 / jnwpu / 20213920285 大量工作表明,通过 CNN 学习到的特征表达相 比于传统的人工设计特征具有更强的判别性能,且 具有非常优秀的泛化性能。 近几年,一些研究工作 借助特征可视化手段,希望理解卷积神经网络的特 征学习过程。 其中,Zeiler 等[9] 构建了一个 8 层的 卷积神经网络,在经过 ImageNet 数据集训练后,利 用 Deconvnet[10] 对卷积网络中各个层的特征图进行 反卷积并可视化处理,再将可视化的结果与图像对 应的像素块进行对比,结果如图 2 所示。 A template matching procedure for automatic target recognition in synthetic aperture sonar imagery[ J] .

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