Paper
8 December 2023 Reflection signal classification of deep-sea surface sediment based on 1DCNN-DLSTM networks
Zhiguo Qu, Zhi Zhong, Xinghui Cao, Mingguang Shan, Yongqiang Xie
Author Affiliations +
Proceedings Volume 12943, International Workshop on Signal Processing and Machine Learning (WSPML 2023); 129430G (2023) https://doi.org/10.1117/12.3014500
Event: International Workshop on Signal Processing and Machine Learning (WSPML 2023), 2023, Hangzhou, ZJ, China
Abstract
Classification of reflected signals from surface sediments can improve our understanding of the properties of these sediments. In this paper, we propose a method for classifying reflection signals using deep learning techniques. The method uses a pulse compression algorithm to convert reflection signals into reflection compressed data, and then uses a one-Dimensional Convolutional Neural Network - Double Long Short-Term Memory (1DCNN-DLSTM) network to classify these data. The advantage of this method is that the pulse compression algorithm can improve the resolution of the stratigraphic reflection signal, thus better capturing the details of the signal. Meanwhile, 1DCNN can effectively extract the spatial features of reflection compression signals and capture the differences between different sediment types. DLSTM, on the other hand, can capture the temporal dynamic features of the signals, which is very advantageous for modeling temporal information. By fusing these two network structures, it is possible to categorize deep-sea surface sediments in a more comprehensive way. To verify the feasibility of the method, we conducted experiments using reflection data from surface sediments on the South China Sea continental slope. The experimental results show that the method is feasible in classifying the reflection signals from deep-sea surface sediments. We obtain high classification accuracy by training and testing different types of reflection compression data. This indicates that the method can effectively distinguish different types of deep-sea surface sediments, which helps us to better understand the deep-sea environment and related geological processes.
(2023) Published by SPIE. Downloading of the abstract is permitted for personal use only.
Zhiguo Qu, Zhi Zhong, Xinghui Cao, Mingguang Shan, and Yongqiang Xie "Reflection signal classification of deep-sea surface sediment based on 1DCNN-DLSTM networks", Proc. SPIE 12943, International Workshop on Signal Processing and Machine Learning (WSPML 2023), 129430G (8 December 2023); https://doi.org/10.1117/12.3014500
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KEYWORDS
Reflection

Data modeling

Pulse signals

Neural networks

Feature extraction

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