Abstract

Abstract. The observation of waves that propagate along density interfaces inside the ocean poses a significant challenge, as their visible surface signatures are much lower compared to their internal amplitudes. However, monitoring internal waves is important as they redistribute large amounts of energy, play a role in mixing and vertical heat transfer, and modify water and nutrient transports. Although satellite observations would allow global monitoring of internal waves at constant time intervals, their automatic detection is challenging: In optical images, internal waves are hardly visible and can be obscured by clouds, whereas radar data have limitations in coastal regions and their spatial coverage is not perfect. Furthermore, the occurrence of internal waves can be confused with other ocean phenomena. In this work, we present an automated detection framework for internal waves based on multiple data sources in order to compensate for the shortcoming of single data sources. In our application, we use Ocean and Land Color Imager and Synthetic Aperture Radar Altimeter data. Our contributions are (1) we develop a multi-modal deep neural network SONet with multi-streams and late fusion, which performs a classification on the basis of training with both modalities, and (2) we establish a method to deal with missing modalities. Experiments in the Amazon Shelf region show SONet achieves adequate results when both modalities are available, but also when only a single modality is available. By exploiting correlations between the modalities, SONet classifies OLCI images off the SRAL ground track better than uni-modal network ONet, which describes a great advantage of our multi-modal network.

Highlights

  • We focus on an area in the Atlantic Ocean off the Amazon Shelf, which is known for large amplitude internal solitary wave (ISW) (Magalhães et al, 2016, Santos-Ferreira et al, 2019)

  • We compare the performance of the uni-modal networks ONet and SNet with the multi-modal network SONet

  • We demonstrated that our multi-modal deep learning framework is able to detect oceanic internal waves

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Summary

MOTIVATION

We witness a growth in the number of satellites with integrated sensors characterized by various spatial, spectral and temporal resolutions It is common in remote sensing that the same scene is observed simultaneously with different sensors and multi-modal data is available for a joint analysis. With this work we show that it is worthwhile to combine both modalities SRAL and OLCI in one model for the detection of IWs. the data set we have created is currently still specific to our study site, our experiments can already show that the use.

Multi-modal deep learning in earth sciences
Investigation of internal waves
Study site
Multi-modal dataset with lack of modalities
MULTI-MODAL DEEP LEARNING NETWORK
Our multi-modal architecture
Loss functions
EXPERIMENTAL SETUP
Data preprocessing
Detailed network structure
Training procedure
RESULTS
CONCLUSION
Full Text
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