Sensors and Data Interpretation II. Michael Horswell

Similar documents
Interpreting land surface features. SWAC module 3

746A27 Remote Sensing and GIS. Multi spectral, thermal and hyper spectral sensing and usage

An Introduction to Remote Sensing & GIS. Introduction

Introduction to Remote Sensing

Figure 1: Percent reflectance for various features, including the five spectra from Table 1, at different wavelengths from 0.4µm to 1.4µm.

REMOTE SENSING. Topic 10 Fundamentals of Digital Multispectral Remote Sensing MULTISPECTRAL SCANNERS MULTISPECTRAL SCANNERS

Aerial Photo Interpretation

FOR 353: Air Photo Interpretation and Photogrammetry. Lecture 2. Electromagnetic Energy/Camera and Film characteristics

NON-PHOTOGRAPHIC SYSTEMS: Multispectral Scanners Medium and coarse resolution sensor comparisons: Landsat, SPOT, AVHRR and MODIS

Viewing New Hampshire from Space

GIS Data Collection. Remote Sensing

Aerial photography and Remote Sensing. Bikini Atoll, 2013 (60 years after nuclear bomb testing)

REMOTE SENSING INTERPRETATION

NRS 415 Remote Sensing of Environment

Outline Remote Sensing Defined Resolution Electromagnetic Energy (EMR) Types Interpretation Applications

Monitoring agricultural plantations with remote sensing imagery

Introduction to Remote Sensing

Remote sensing in archaeology from optical to lidar. Krištof Oštir ModeLTER Scientific Research Centre of the Slovenian Academy of Sciences and Arts

Outline Remote Sensing Defined Resolution Electromagnetic Energy (EMR) Types Interpretation Applications 2

IKONOS High Resolution Multispectral Scanner Sensor Characteristics

Sommersemester Prof. Dr. Christoph Kleinn Institut für Waldinventur und Waldwachstum Arbeitsbereich Fernerkundung und Waldinventur.

The (False) Color World

Present and future of marine production in Boka Kotorska

Remote Sensing in Daily Life. What Is Remote Sensing?

Lecture 13: Remotely Sensed Geospatial Data

Remote Sensing and GIS

Land Cover Analysis to Determine Areas of Clear-cut and Forest Cover in Olney, Montana. Geob 373 Remote Sensing. Dr Andreas Varhola, Kathry De Rego

Introduction to Remote Sensing

Course overview; Remote sensing introduction; Basics of image processing & Color theory

Image interpretation I and II

Important Missions. weather forecasting and monitoring communication navigation military earth resource observation LANDSAT SEASAT SPOT IRS

Remote Sensing for Rangeland Applications

Image Band Transformations

Remote Sensing Part 3 Examples & Applications

remote sensing? What are the remote sensing principles behind these Definition

Introduction of Satellite Remote Sensing

Satellite Remote Sensing: Earth System Observations

OPTICAL RS IMAGE INTERPRETATION

On the use of water color missions for lakes in 2021

Blacksburg, VA July 24 th 30 th, 2010 Remote Sensing Page 1. A condensed overview. For our purposes

Introduction to Remote Sensing Part 1

Using Multi-spectral Imagery in MapInfo Pro Advanced

Remote Sensing of Environment (RSE)

Geo/SAT 2 INTRODUCTION TO REMOTE SENSING

Int n r t o r d o u d c u ti t on o n to t o Remote Sensing

746A27 Remote Sensing and GIS

1. Theory of remote sensing and spectrum

A map says to you, 'Read me carefully, follow me closely, doubt me not.' It says, 'I am the Earth in the palm of your hand. Without me, you are alone

Making NDVI Images using the Sony F717 Nightshot Digital Camera and IR Filters and Software Created for Interpreting Digital Images.

HYPERSPECTRAL IMAGERY FOR SAFEGUARDS APPLICATIONS. International Atomic Energy Agency, Vienna, Austria

MOVING FROM PIXELS TO PRODUCTS

Module 3 Introduction to GIS. Lecture 8 GIS data acquisition

Spectral Signatures. Vegetation. 40 Soil. Water WAVELENGTH (microns)

Introduction to Remote Sensing

An Introduction to Geomatics. Prepared by: Dr. Maher A. El-Hallaq خاص بطلبة مساق مقدمة في علم. Associate Professor of Surveying IUG

In late April of 1986 a nuclear accident damaged a reactor at the Chernobyl nuclear

Introduction to Remote Sensing Fundamentals of Satellite Remote Sensing. Mads Olander Rasmussen

A broad survey of remote sensing applications for many environmental disciplines

Remote Sensing. The following figure is grey scale display of SPOT Panchromatic without stretching.

Lab 6: Multispectral Image Processing Using Band Ratios

Dirty REMOTE SENSING Week 2 Interpreation

Image interpretation and analysis

RADIOMETRIC CALIBRATION

Radar Imagery for Forest Cover Mapping

FOR 474: Forest Inventory. FOR 474: Forest Inventory. Why do we Care About Forest Sampling?

Remote Sensing. Measuring an object from a distance. For GIS, that means using photographic or satellite images to gather spatial data

Remote Sensing. in Agriculture. Dr. Baqer Ramadhan CRP 514 Geographic Information System. Adel M. Al-Rebh G Term Paper.

Lecture Series SGL 308: Introduction to Geological Mapping Lecture 8 LECTURE 8 REMOTE SENSING METHODS: THE USE AND INTERPRETATION OF SATELLITE IMAGES

Active and Passive Microwave Remote Sensing

Outline for today. Geography 411/611 Remote sensing: Principles and Applications. Remote sensing: RS for biogeochemical cycles

CHARACTERISTICS OF REMOTELY SENSED IMAGERY. Spatial Resolution

AR M. Sc. (Rural Technology) II Semester Fundamental of Remote Sensing Model Paper

Satellite Imagery and Remote Sensing. DeeDee Whitaker SW Guilford High EES & Chemistry

Ghazanfar A. Khattak National Centre of Excellence in Geology University of Peshawar

Lecture 2. Electromagnetic radiation principles. Units, image resolutions.

How can we "see" using the Infrared?

Overview. Introduction. Elements of Image Interpretation. LA502 Special Studies Remote Sensing

Atmospheric interactions; Aerial Photography; Imaging systems; Intro to Spectroscopy Week #3: September 12, 2018

INTRODUCTORY REMOTE SENSING. Geob 373

Outline. Introduction. Introduction: Film Emulsions. Sensor Systems. Types of Remote Sensing. A/Prof Linlin Ge. Photographic systems (cf(

Contents Remote Sensing for Studying Earth Surface and Changes

Introduction to Remote Sensing. Electromagnetic Energy. Data From Wave Phenomena. Electromagnetic Radiation (EMR) Electromagnetic Energy

Enhancement of Multispectral Images and Vegetation Indices

SFR 406 Spring 2015 Lecture 7 Notes Film Types and Filters

MSB Imagery Program FAQ v1

An NDVI image provides critical crop information that is not visible in an RGB or NIR image of the same scene. For example, plants may appear green

REMOTE SENSING FOR FLOOD HAZARD STUDIES.

The Benefits of the 8 Spectral Bands of WorldView-2

Remote Sensing. Odyssey 7 Jun 2012 Benjamin Post

RADAR (RAdio Detection And Ranging)

Govt. Engineering College Jhalawar Model Question Paper Subject- Remote Sensing & GIS

Image interpretation. Aliens create Indian Head with an ipod? Badlands Guardian (CBC) This feature can be found 300 KMs SE of Calgary.

Aral Sea profile Selection of area 24 February April May 1998

Saturation And Value Modulation (SVM): A New Method For Integrating Color And Grayscale Imagery

Monitoring of mine tailings using satellite and lidar data

Acquisition of Aerial Photographs and/or Imagery

Application of Remote Sensing in the Monitoring of Marine pollution. By Atif Shahzad Institute of Environmental Studies University of Karachi

The studies began when the Tiros satellites (1960) provided man s first synoptic view of the Earth s weather systems.

How to Access Imagery and Carry Out Remote Sensing Analysis Using Landsat Data in a Browser

Exercise 4-1 Image Exploration

Transcription:

Sensors and Data Interpretation II Michael Horswell

Defining remote sensing 1. When was the last time you did any remote sensing? acquiring information about something without direct contact 2. What are the requirements for remote sensing to possible? - ability to detect something that defines the characteristics of what is being observed, - electromagnetic radiation (EMR) that objects either emit or reflect

The problematic view from space Unlimited perspectives on ourselves, the world and the cosmos around us Benefits cannot be over estimated Deployed against the environmental threat, to prevent new ecological and economic falling dominoes and enhance global security Rather than being embedded participants in the reality depicted, earth system scientists become disengaged observers of that reality When quantifiability monopolizes the mantle of legitimacy, qualitative values are given short shrift Decontextualization

A refined (formal) definition Remote sensing is the practice of deriving information about the Earth s land and water surfaces using images acquired from an overhead perspective, by employing electromagnetic radiation in one or more regions of the electromagnetic spectrum, reflected or emitted from the Earth s surface (Campbell 2006 p. 6)

History of remote sensing

1825: Photography 1956: Infra-red & plant health 1972: Landsat 1 1850: From balloons 1939-1945: WWII: Non-visible radiation 1980s: Hyperspectral RS 1873: Electromagnetism The Great Depression 1990s: Hi-Res spaceborne images 1909: Airplanes 1914: WWI reconnaissance Present: Global RS systems & LiDAR

Interpreting images

Why interpret images? Classification: assigning discernible areas or features to classes Enumeration: counting or listing discrete items visible on an image Measurement: photogrammetry applying knowledge of image geometry to the derivation of accurate measurement Delineation: defining observable regions

Methods of interpretation Field observations If knowledge of interpreter is inadequate, a field visit may be required Field visits are routine as a method of checking accuracy Direct recognition Qualitative, subjective interpretation based on experience, skill and judgement Interpretation by inference Using an observable characteristics to infer the presence on a non-observable characteristic e.g. using landform and vegetation to infer soil characteristics

Methods of interpretation Probabilistic interpretation Integrating other information into the interpretation process, e.g. knowledge of crop rotation and crop calendar can help to identify the crop growing in a region if winter wheat is harvested in June, the crop on your August image is unlikely to be wheat A decision rule is created which expresses the knowledge as a probability, e.g. there is only a 2% probability that the crop is wheat

Methods of interpretation Deterministic interpretation Based on quantitative relationships inherent in the imagery itself, e.g. using stereo imagery pairs to develop elevation data Image interpretation will more than likely involve a mixture of interpretative strategies

Elements of interpretation Tone: refers to shades of grey (B&W) or colours in the image. Tone of the same feature type may vary seasonally. Texture: the result of changes in tone, or the arrangement of tone on a landscape (described as e.g. fine, medium, or coarse) Shadow: gives clues to the profile, and shape of landscape features but can obscure detail in other features, as well as alter the spectral signature of other features Pattern: the arrangement of objects into recurrent forms can facilitate their recognition Shape: is an important clue to identifying an object and helps, in particular, to distinguish between constructed and natural features Size: relative size - the size of an unknown object in relation to the size of a known object; absolute size - the actual size of a landscape features Association: some types of features can be identified despite no compliance with any other interpretative element, but through relationships with identifiable features

Convergence of evidence Image interpretation is a deductive process Features that can be detected and identified lead the interpreter to the location and identification of other features Deductive interpretation requires either the conscious or unconscious consideration of all of the elements of image interpretation The completeness and accuracy of an interpretation is related to the interpreter s understanding of the "how and the why" of the elements, and the techniques and methods of interpretation This is convergence of evidence combination of knowledge, expertise, image elements, interpretative strategies to come up with a defensible interpretation

People vs. computers Jelly bean that made the news People are extremely good at image interpretation pattern seeking and recognition Believed to have significant evolutionary value at little cost Computers are more sceptical

When is enough proof enough? A definitive determination of landcover based on remotely sensed data is achieved when all relevant elements of interpretative process have been considered, and the assessment of no single element stands in strong contradiction to the overall assessment

More than meets the eye: Multispectral imagery

The electromagnetic spectrum Continuous range of electromagnetic radiation from radio waves (low frequency, long wavelengths) to gamma rays (high frequency, short wavelengths)

Reflection and absorption Objects reflect and absorb different parts of the EMS The combination of these generates a set of observable characteristics that allow us to identify the object

Beyond the visible Although we cannot see outside of the visible spectrum, we can detect these wavelengths using sensors Pictures depict flowers refection in the UV part of the spectrum bee s eye view

Spectral signatures The particular reflectance and absorption characteristics of EM radiation from the surface of an object is called its spectral signature All surfaces on earth have a specific spectral signature A surface type or material can be identified if the sensor has adequate spectral resolution do distinguish it from other materials The spectral signature of an object is a plot of the fraction of radiation reflected as a function of the incident wavelength

Multispectral imagery Measures of radiation in more than one part of the spectrum not only the visible part Each part in which measurement occurs is called a spectral band - a discrete part of the EMR spectrum Spectral bands of satellite-based remote sensors have been selected to enable the discrimination of major surface materials The specific parts of the EMR spectrum that a sensor can detect is called its spectral resolution

Landsat spectral bands Landsat 8: OLI & TIRS Band Wavelength EMS Area / Target 1 0.43-0.45 Coastal aerosol 2 0.45-0.51 Blue 3 0.53-0.59 Green 4 0.64-0.67 Red 5 0.85-0.88 Near infrared (NIR) 6 1.57-1.65 Short-wave infrared (SWIR) 1 7 2.11-2.29 Short-wave infrared (SWIR) 2 8 0.5-0.68 Panchromatic 9 1.36-1.38 Cirrus 10 10.6-11.19 TIRS 1 11 11.5-12.51 TIRS 2 Landsat 4,5: TM & Landat 7: ETM+ Band Wavelength EMS Area / Target - - 1 0.45-0.52 Blue 2 0.52-0.60 Green 3 0.63-0.69 Red 4 0.77-0.90 Near infrared (NIR) 5 1.55-1.75 Short-wave infrared (SWIR) 1 7 2.09-2.35 Short-wave infrared (SWIR) 2 8 0.52-0.90 Panchromatic - - 6 10.4-12.5 Thermal Infrared

Spectral response curves Represent the reflectance of target objects across the EMS Define the objects due to the characteristic reflectance of objects Equivalent to tone in traditional image interpretation

Vegetation reflectance Chlorophyll absorbs red and blue parts of the visible spectrum Palisade mesophyll grouped as it is, means green light is reflected Chlorophyll transmits NIR, but the arrangement of cells in the spongy mesophyll layer causes high reflection in NIR

Characteristic reflectance Feature Water Bodies Soil Vegetation Man-Made Materials Snow and Ice Reflectance Response Generally reflect high in the visible spectrum, however, clearer water has less reflectance than turbid water. In the Near IR and Mid-IR regions water increasingly absorbs the light making it darker. This is dependent upon water depth and wavelength. Increasing amounts of dissolved inorganic materials in water bodies tend to shift the peak of visible reflectance toward the red region from the green region (clearer water) of the spectrum. Northern latitudes have black soils and tropical regions have red soils. Soil reflectance decreases as organic matter increases. As soil moisture increases, reflectance of soil decreases at all wavelengths. Texture of soil will cause increased reflectance with decreased particle size, i.e., the bigger particles (rocks, sand, and soils) basically cast a larger shadow. The spectral reflectance is based on the chlorophyll and water absorption in the leaf. Needles have a darker response than leaves. There will be various shades of vegetation based on type, leaf structure, moisture content and health of the plant. Healthy vegetation has high IR reflectance decreases with plant stress. Concrete and asphalt both display spectral curves that generally increase from the visible through the Near IR and Mid-IR regions. However, as concrete ages, it becomes darker and as asphalt ages it becomes lighter. Old snow may develop a compacted crust and the moisture content increases which make it less reflective in the Near IR and Mid-IR region. It is possible to compare old and new snow by its Mid-IR reflectance. GIS & Remote Sensing Applications 27

Visualizing non-visible wavelengths Band 2 Band 3 Band4 Band5 Band6 Band7

Band combination: 432 The "natural colour" band combination Because the visible bands are used in this combination, ground features appear in colours similar to their appearance to the human visual system, healthy vegetation is green, recently cleared fields are very light, unhealthy vegetation is brown and yellow, roads are grey, and shorelines are white This band combination provides the most water penetration and superior sediment and bathymetric information, it is also used for urban studies Cleared and sparsely vegetated areas are not as easily detected here as in the 562 or 543 combination Clouds and snow appear white and are difficult to distinguish Vegetation types are not as easily distinguished as the 562 combination The 432 combination does not distinguish shallow water from soil as well as the 764 combination does

Band combination: 432

Band Combination: 543 The standard "false colour" composite Vegetation appears in shades of red, urban areas are cyan blue, and soils vary from dark to light browns Coniferous trees will appear darker red than hardwoods Deep red hues indicate broad leaf and/or healthier vegetation while lighter reds signify grasslands or sparsely vegetated areas Ice, snow and clouds are white or light cyan Urban areas are shown in light blue This band combination gives results similar to traditional colour infrared aerial photography This band combination is useful for vegetation studies, monitoring drainage and soil patterns and various stages of crop growth.

Band Combination: 543

Band Combination: 562 Healthy vegetation appears in shades of reds, browns, oranges and yellows Soils may be in greens and browns, urban features are white, cyan and grey, bright blue areas represent recently clear-cut areas and reddish areas show new vegetation growth, probably sparse grasslands Clear, deep water will be very dark in this combination, if the water is shallow or contains sediments it would appear as shades of lighter blue The addition of the Mid-IR band increases sensitivity of detecting various stages of plant growth or stress; however care must be taken in interpretation if acquisition closely follows precipitation Use of OLI5 and OLI6 shows high reflectance in healthy vegetated areas Compare flooded areas and red vegetated areas with the corresponding colours in the 432 combination to assure correct interpretation

Band Combination: 562

Band Combinations: 564 This combination offers added definition of land-water boundaries and highlights subtle details not readily apparent in the visible bands alone Inland lakes and streams can be located with greater precision when more infrared bands are used Vegetation type and condition show as variations of hues (browns, greens and oranges), as well as in tone Demonstrates moisture differences and is useful for analysis of soil and vegetation conditions. Generally, the wetter the soil, the darker it appears, because of the infrared absorption capabilities of water.

Band Combination: 564

Band Combination: 753 Penetrates atmospheric particles and smoke. Healthy vegetation will be a bright green and can saturate in seasons of heavy growth, grasslands will appear green, pink areas represent barren soil Dry vegetation will be orange and water will be blue Sands, soils and minerals are highlighted in a multitude of colours It is useful for geological, agricultural and wetland studies Fires would appear red. This combination is used in the fire management applications for post-fire analysis. Urban areas appear in varying shades of magenta Grasslands appear as light green. The light-green spots inside cities indicate grassy land cover - parks, cemeteries, golf courses Olive-green to bright-green hues normally indicate forested areas with coniferous forest being darker green than deciduous.

Band Combination: 753

Band Combination: 764 Penetrates atmospheric particles, smoke and haze Vegetation appears in shades of dark and light green during the growing season, urban features are white, grey, cyan or purple; sands, soils and minerals appear in a variety of colours Provides well defined coast lines and highlighted sources of water within the image. Snow and ice appear as dark blue Hot surfaces such as forest fires and volcano calderas saturate the Mid-IR bands and appear in shades of red or yellow Flooded areas should look very dark blue or black, compared with the 432 combination in which shallow flooded regions are difficult to distinguish.

Band Combination: 764

Band Combination: 765 This combination involves no visible bands It provides the best atmospheric penetration Coast lines and shores are well defined It may be used to find textural and moisture characteristics of soils Vegetation appears blue This band combination can be useful for geological studies

Band Combination: 765

Band Combination: 654 This combination provides the user with a great amount of information and colour contrast Healthy vegetation is bright green and soils are mauve Use of Band 6 ensure maximal agricultural information This combination is useful for vegetation studies, and is widely used in the areas of timber management and pest infestation

Band Combination: 654

Remember CONVERGENCE OF EVIDENCE Spectral response alone may not be enough to determine the characteristics of an observed object