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Machine Learning Techniques for AUV Side Scan Sonar Data Feature Extraction as Applied to Intelligent Search for Underwater Archaeological Sites

EasyChair Preprint 1430

14 pagesDate: August 25, 2019

Abstract

This paper presents a system for the intelligent search of shipwrecks using Autonomous Underwater Vehicles (AUVs). It introduces a machine learning approach to the automatic identification of potential archaeological sites from AUV-obtained side scan sonar (SSS) data. The site identification pipeline consists of a series of stages that set up for, run, and process the output of a convolutional neural network (CNN). To alleviate the issue of training data scarcity, i.e. the lack of SSS data that includes shipwrecks, and improve the performance at testing time, a data augmentation stage is included in the pipeline. In addition, edge detection and other traditional image processing feature extraction methods are used in parallel with the CNN to improve algorithmic performance. Experiments from two multi-deployment shipwreck search expeditions involving actual AUV deployments along the coast of Malta for data collection and processing demonstrate the pipeline’s usefulness. Results from these two field expeditions yielded a precision/recall of 29.34%/97.22% and 32.95%/80.39% respectively. Despite the poor precision, the pipeline filters out 99.79% of the area in data set A and 99.31% of the area in data set B.

Keyphrases: autonomous underwater vehicles, machine learning, neural networks

BibTeX entry
BibTeX does not have the right entry for preprints. This is a hack for producing the correct reference:
@booklet{EasyChair:1430,
  author    = {Nandeeka Nayak and Makoto Nara and Timmy Gambin and Zoë Wood and Christopher Clark},
  title     = {Machine Learning Techniques for AUV Side Scan Sonar Data Feature Extraction as Applied to Intelligent Search for Underwater Archaeological Sites},
  howpublished = {EasyChair Preprint 1430},
  year      = {EasyChair, 2019}}
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