We survey algorithms and methodologies for detecting and delineat- ing changes of interest in remote sensing imagery. We consider both broad salient changes and rare anomalous changes, and we describe strategies for exploiting im- agery containing these changes. The perennial challenge in change detection is in translating the application-dependent concept of an "interesting change" to a math- ematical framework; as such, the mathematical approaches for detecting these types of changes can be quite different. In large-scale change detection (LSCD), the goal is to identify changes that have broadly occurred in the scene. The paradigm for anomalous change detection (ACD), which is grounded in concepts from anomaly detection, seeks to identify changes that are different from how everything else might have changed. This borrows from the classic anomaly detection framework, which attempts to characterize that which is "typical" and then uses that to identify devia- tions from what is expected or common. This chapter provides an overview of change detection, including a discussion of LSCD and ACD approaches, operational con- siderations, relevant datasets for testing the various algorithms, and some illustrative results.

Detection of Large-Scale and Anomalous Changes

Matteoli Stefania
2019

Abstract

We survey algorithms and methodologies for detecting and delineat- ing changes of interest in remote sensing imagery. We consider both broad salient changes and rare anomalous changes, and we describe strategies for exploiting im- agery containing these changes. The perennial challenge in change detection is in translating the application-dependent concept of an "interesting change" to a math- ematical framework; as such, the mathematical approaches for detecting these types of changes can be quite different. In large-scale change detection (LSCD), the goal is to identify changes that have broadly occurred in the scene. The paradigm for anomalous change detection (ACD), which is grounded in concepts from anomaly detection, seeks to identify changes that are different from how everything else might have changed. This borrows from the classic anomaly detection framework, which attempts to characterize that which is "typical" and then uses that to identify devia- tions from what is expected or common. This chapter provides an overview of change detection, including a discussion of LSCD and ACD approaches, operational con- siderations, relevant datasets for testing the various algorithms, and some illustrative results.
2019
Istituto di Elettronica e di Ingegneria dell'Informazione e delle Telecomunicazioni - IEIIT
Inglese
Prasad Saurabh; Chanussot Jocelyn
Hyperspectral Image Analysis - Advances in Machine Learning and Signal Processing
26
978-3-030-38617-7
Springer
New York
STATI UNITI D'AMERICA
Sì, ma tipo non specificato
change detection; hyperspectral
1
02 Contributo in Volume::02.01 Contributo in volume (Capitolo o Saggio)
268
none
Ziemann Amanda; Matteoli Stefania
info:eu-repo/semantics/bookPart
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/20.500.14243/361750
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