Supervised learning in remote sensing and geospatial science : theory and practice /
Supervised Learning in Remote Sensing and Geospatial Science is an invaluable resource focusing on practical applications of supervised learning in remote sensing and geospatial data science. Emphasizing practicality, the book delves into creating labeled datasets for training and evaluating models....
| Main Authors: | Maxwell, Aaron E. (Author), Ramezan, Christopher (Author), He, Yaqian (Author) |
|---|---|
| Corporate Author: | ScienceDirect (Online service) |
| Format: | eBook |
| Language: | English |
| Published: |
Amsterdam, Netherlands :
Elsevier,
[2025]
|
| Subjects: | |
| Online Access: | Connect to the full text of this electronic book |
Similar Items
Supervised learning : mathematical foundations and real-world applications /
by: Chakrabarty, Dalia
Published: (2025)
by: Chakrabarty, Dalia
Published: (2025)
Types of supervised machine learning.
Published: (2019)
Published: (2019)
What is supervised machine learning?.
Published: (2019)
Published: (2019)
Machine learning from weak supervision : an empirical risk minimization approach /
by: Sugiyama, Masashi, 1974-
Published: (2022)
by: Sugiyama, Masashi, 1974-
Published: (2022)
Learn about sentiment analysis with supervised learning in R with data from the Economic News Article Tone dataset (2016) /
by: Shi, Feng, active 2019
Published: (2019)
by: Shi, Feng, active 2019
Published: (2019)
Implementation and Interpretation of Machine and Deep Learning to Applied Subsurface Geological Problems : Prediction Models Exploiting Well-Log Information.
by: Wood, David A. (Petroleum engineer)
Published: (2025)
by: Wood, David A. (Petroleum engineer)
Published: (2025)
Embracing the value of data in broadcasting : Channel 4.
Published: (2019)
Published: (2019)
Semi-supervised learning /
Published: (2006)
Published: (2006)
Introduction to semi-supervised learning /
by: Zhu, Xiaojin, Ph. D.
Published: (2009)
by: Zhu, Xiaojin, Ph. D.
Published: (2009)
Introduction to semi-supervised learning /
by: Zhu, Xiaojin, Ph. D.
Published: (2009)
by: Zhu, Xiaojin, Ph. D.
Published: (2009)
Learn about sentiment analysis with supervised learning in Python with data from the Economic News Article Tone dataset (2016) /
by: Shi, Feng
Published: (2019)
by: Shi, Feng
Published: (2019)
Semi-supervised learning /
Published: (2006)
Published: (2006)
The elements of statistical learning : data mining, inference, and prediction : with 200 full-color illustrations /
by: Hastie, Trevor
Published: (2001)
by: Hastie, Trevor
Published: (2001)
The elements of statistical learning : data mining, inference, and prediction /
by: Hastie, Trevor
Published: (2009)
by: Hastie, Trevor
Published: (2009)
The elements of statistical learning : data mining, inference, and prediction /
by: Hastie, Trevor
Published: (2009)
by: Hastie, Trevor
Published: (2009)
The elements of statistical learning : data mining, inference, and prediction /
by: Hastie, Trevor
Published: (2001)
by: Hastie, Trevor
Published: (2001)
Graph-based semi-supervised learning /
by: Subramanya, Amarnag, et al.
Published: (2014)
by: Subramanya, Amarnag, et al.
Published: (2014)
Machine learning & predictive modelling for recommendations & insight : Mallzee.
Published: (2019)
Published: (2019)
Multi-label dimensionality reduction /
by: Sun, Liang, et al.
Published: (2014)
by: Sun, Liang, et al.
Published: (2014)
Boosting : foundations and algorithms /
by: Schapire, Robert E.
Published: (2012)
by: Schapire, Robert E.
Published: (2012)
Deep learning techniques for biomedical and health informatics /
Published: (2020)
Published: (2020)
Using machine learning to manage & analyze unstructured financial services data : Pendo Systems.
Published: (2019)
Published: (2019)
Full YOLOv4 pro course bundle /
Published: (2021)
Published: (2021)
Learning to rank for information retrieval and natural language processing /
by: Li, Hang, 1965-
Published: (2011)
by: Li, Hang, 1965-
Published: (2011)
The mathematics of generalization : the proceedings of the SFI/CNLS Workshop on Formal Approaches to Supervised Learning /
Published: (1995)
Published: (1995)
Signal processing driven machine learning techniques for cardiovascular data processing /
Published: (2024)
Published: (2024)
Transfer Learning for Rotary Machine Fault Diagnosis and Prognosis /
by: Yan, Ruqiang
Published: (2024)
by: Yan, Ruqiang
Published: (2024)
Ruo jian du xue xi shi yong zhi nan : yong geng shao de shu ju zuo geng duo de shi qing = Practical weak supervision : doing more with less data /
by: Tok, Wee-Hyong, et al.
Published: (2023)
by: Tok, Wee-Hyong, et al.
Published: (2023)
MACHINE LEARNING AND DEEP LEARNING TECHNIQUES FOR MEDICAL IMAGE RECOGNITION.
Published: (2023)
Published: (2023)
DEEP LEARNING FOR SYNTHETIC APERTURE RADAR REMOTE SENSING.
Published: (2026)
Published: (2026)
Applied Machine Learning for Data Science Practitioners.
by: Subramanian, Vidya
Published: (2025)
by: Subramanian, Vidya
Published: (2025)
Supervised machine learning : optimization framework and applications with SAS and R /
by: Kolosova, Tanya, et al.
Published: (2021)
by: Kolosova, Tanya, et al.
Published: (2021)
Agentic hyper-personalized dimensions : six dimensions of business dark data /
by: Vermeulen, Andreas François
Published: (2026)
by: Vermeulen, Andreas François
Published: (2026)
Deep learning for Earth observation and climate monitoring /
Published: (2025)
Published: (2025)
Applied machine learning on sensing technologies /
Published: (2025)
Published: (2025)
Explainable deep learning AI : methods and challenges /
Published: (2023)
Published: (2023)
Machine learning : proceedings of the ninth international workshop (ML92) /
Published: (1992)
Published: (1992)
Machine Learning for Auditors : Automating Fraud Investigations Through Artificial Intelligence /
by: Sekar, Maris
Published: (2022)
by: Sekar, Maris
Published: (2022)
Interpretable machine learning for the analysis, design, assessment, and informed decision making for civil infrastructure /
Published: (2024)
Published: (2024)
Computer processing of remotely-sensed images : an introduction /
by: Mather, Paul M.
Published: (2011)
by: Mather, Paul M.
Published: (2011)