Deep Learning for Deep Water: Robust classification of ship wakes with expert in the loop
Deep Learning for Deep Water: Robust classification of ship wakes with expert in the loop
Abstract
This work examines the applicability of the deep learning models to pattern recognition
in acoustic ocean data. The features of the dataset include noise, data scarcity
and the lack of labeled samples. A deep learning model is proposed for the task of
automatic wake detection. It takes advantage of the availability of an expert in the
marine science domain while using data generation and robustness techniques to enhance
performance. The model shows encouraging results, although its performance decreases with heavily unbalanced data and the introduction of noise.
Degree
Student essay
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Date
2020-10-06Author
RYAZANOV, Igor
Keywords
machine learning
deep learning
pattern recognition
acoustic data analysis
shipping data
data augmentation
noise robustness
classification with data imbalance
expert-in-the-loop framework
Language
eng