Sea Ice Image Processing with MATLAB® Sea Ice Image Processing with MATLAB®
Signal and Image Processing of Earth Observations

Sea Ice Image Processing with MATLAB‪®‬

    • USD 64.99
    • USD 64.99

Descripción editorial

Sea Ice Image Processing with MATLAB addresses the topic of image processing for the extraction of key sea ice characteristics from digital photography, which is of great relevance for Artic remote sensing and marine operations. This valuable guide provides tools for quantifying the ice environment that needs to be identified and reproduced for such testing. This includes fit-for-purpose studies of existing vessels, new-build conceptual design and detailed engineering design studies for new developments, and studies of demanding marine operations involving multiple vessels and operational scenarios in sea ice. A major contribution of this work is the development of automated computer algorithms for efficient image analysis. These are used to process individual sea-ice images and video streams of images to extract parameters such as ice floe size distribution, and ice types. Readers are supplied with Matlab source codes of the algorithms for the image processing methods discussed in the book made available as online material.

Features
Presents the first systematic work using image processing techniques to identify ice floe size distribution from aerial imagesHelps identify individual ice floe and obtain floe size distributions for Arctic offshore operations and transportationExplains specific algorithms that can be combined to solve various problems during polar sea ice investigationsIncludes MATLAB® codes useful not only for academics, but for ice engineers and scientists to develop tools applicable in different areas such as sustainable arctic marine and coastal technology researchProvides image processing techniques applicable to other fields like biomedicine, material science, etc

GÉNERO
Técnicos y profesionales
PUBLICADO
2018
13 de febrero
IDIOMA
EN
Inglés
EXTENSIÓN
272
Páginas
EDITORIAL
CRC Press
VENDEDOR
Taylor & Francis Group
TAMAÑO
21.2
MB
Agricultural Automation Agricultural Automation
2016
Advanced Automation for Tree Fruit Orchards and Vineyards Advanced Automation for Tree Fruit Orchards and Vineyards
2023
Soil and Crop Sensing for Precision Crop Production Soil and Crop Sensing for Precision Crop Production
2022
Agricultural Cybernetics Agricultural Cybernetics
2021
Agricultural Internet of Things Agricultural Internet of Things
2021
Fundamentals of Agricultural and Field Robotics Fundamentals of Agricultural and Field Robotics
2021
Deep Learning for Remote Sensing Images with Open Source Software Deep Learning for Remote Sensing Images with Open Source Software
2020
Radar Imaging for Maritime Observation Radar Imaging for Maritime Observation
2018
Compressive Sensing of Earth Observations Compressive Sensing of Earth Observations
2017