Semantic Segmentation of Sea Ice Based on U-net Network Modification

Jun Zhao, Le Chen, Jinhao Li, Yuliang Zhao
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引用次数: 1

Abstract

Sea ice detection is essential to ensure the safe navigation of ships in mid- and high-latitude ice areas. In the face of complex sea ice information, how to use the sea ice images by shipboard cameras to comprehensively, accurately and efficiently identify four types of sea ice information (Ice skin, Nile ice, Grey ice and White ice)and two kinds of sea ice background information (sea water and sky), it remains a major challenge. This study proposes an automatic semantic segmentation method for sea ice images, which first uses Rsenet50 as well as Vgg-16 network to pre-train the model and improve the network training efficiency. Then modifications to U-Net network, improvement of the coding phase of the U-Net by introducing Vgg-16 and the residual structure, construction of the new network RU-Net and VU-Net. Compared with traditional classification methods, the experimental results show that the network can accurately identify all sea ice information in sea ice images. In particular, multi-scale sea ice types can be identified in real time, greatly improving the efficiency and accuracy of the identification of sea ice types. The MIoU values were 0.73 and 0.87 and the MPA values were 0.87 and 0.94 respectively.
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基于U-net网络修正的海冰语义分割
海冰探测是保证船舶在中高纬度冰区安全航行的重要手段。面对复杂的海冰信息,如何利用船载相机的海冰图像,全面、准确、高效地识别四种海冰信息(冰皮、尼罗河冰、灰冰和白冰)和两种海冰背景信息(海水和天空),仍然是一个重大挑战。本研究提出了一种海冰图像自动语义分割方法,首先使用Rsenet50和Vgg-16网络对模型进行预训练,提高了网络训练效率。然后对U-Net网络进行修改,通过引入Vgg-16和残余结构改进U-Net的编码相位,构建新的网络RU-Net和VU-Net。实验结果表明,与传统的分类方法相比,该网络能够准确识别海冰图像中的所有海冰信息。特别是可以实时识别多尺度海冰类型,大大提高了海冰类型识别的效率和准确性。MIoU分别为0.73和0.87,MPA分别为0.87和0.94。
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