학술논문

A Survey of Seafloor Characterization and Mapping Techniques
Document Type
article
Source
Remote Sensing, Vol 16, Iss 7, p 1163 (2024)
Subject
deep sea
seafloor characterization
deep learning
underwater sensors
Science
Language
English
ISSN
2072-4292
Abstract
The deep seabed is composed of heterogeneous ecosystems, containing diverse habitats for marine life. Consequently, understanding the geological and ecological characteristics of the seabed’s features is a key step for many applications. The majority of approaches commonly use optical and acoustic sensors to address these tasks; however, each sensor has limitations associated with the underwater environment. This paper presents a survey of the main techniques and trends related to seabed characterization, highlighting approaches in three tasks: classification, detection, and segmentation. The bibliography is categorized into four approaches: statistics-based, classical machine learning, deep learning, and object-based image analysis. The differences between the techniques are presented, and the main challenges for deep sea research and potential directions of study are outlined.