SpectralSeaNet: Spectrogram and Convolutional Network-based Sea State Estimation

Xu Cheng, Guoyuan Li, R. Skulstad, Houxiang Zhang, Shengyong Chen
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引用次数: 8

Abstract

Sea State is significant to the operations on the sea. The traditional model-based approaches need lots of knowledge of vessels, which limit the real-world use. This paper proposes a spectrogram-based deep learning model for sea state estimation (SpectralNet). In this model, the ship motion data is converted to spectrogram using short time Fourier transform (STFT). Unlike other methods, the spectrogram of each sensor will be combined to a new image. And then, a 2D convolutional neural network (CNN) is built as the classifier and the sea state can be identified. The experimental results show the proposed approach can achieve higher classification accuracy compared these methods applied directly in raw time series data. Through the comparison results of the proposed approach and the combination of spectrogram of different number of sensors, the proposed approach can achieve highest classification accuracy, and the classification accuracy is growing with the number of combined sensors. The sensitivity analysis finds the classification accuracy is easily influenced by the scale factor of images.
SpectralSeaNet:基于频谱图和卷积网络的海况估计
海况对海上作业具有重要意义。传统的基于模型的方法需要大量的船舶知识,这限制了实际应用。本文提出了一种基于谱图的海况估计深度学习模型(SpectralNet)。该模型采用短时傅里叶变换(STFT)将船舶运动数据转换为频谱图。与其他方法不同的是,每个传感器的光谱图将被组合成一个新的图像。然后,构建二维卷积神经网络(CNN)作为分类器,对海况进行识别。实验结果表明,与直接应用于原始时间序列数据的分类方法相比,该方法具有更高的分类精度。通过本文方法与不同传感器数量的光谱图组合的比较结果表明,本文方法可以达到最高的分类精度,并且分类精度随着组合传感器数量的增加而增长。灵敏度分析发现,分类精度容易受到图像尺度因子的影响。
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