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Remote sensing for resources development and environmental management (Volume 1)

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Bibliographic data

fullscreen: Remote sensing for resources development and environmental management (Volume 1)

Multivolume work

Persistent identifier:
856342815
Title:
Remote sensing for resources development and environmental management
Sub title:
proceedings of the 7th international Symposium, Enschede, 25 - 29 August 1986
Year of publication:
1986
Place of publication:
Rotterdam
Boston
Publisher of the original:
A. A. Balkema
Identifier (digital):
856342815
Language:
English
Additional Notes:
Volume 1-3 erschienen von 1986-1988
Editor:
Damen, M. C. J.
Document type:
Multivolume work

Volume

Persistent identifier:
856343064
Title:
Remote sensing for resources development and environmental management
Sub title:
proceedings of the 7th international Symposium, Enschede, 25 - 29 August 1986
Scope:
XV, 547 Seiten
Year of publication:
1986
Place of publication:
Rotterdam
Boston
Publisher of the original:
A. A. Balkema
Identifier (digital):
856343064
Illustration:
Illustrationen, Diagramme
Signature of the source:
ZS 312(26,7,1)
Language:
English
Usage licence:
Attribution 4.0 International (CC BY 4.0)
Editor:
Damen, M. C. J.
Publisher of the digital copy:
Technische Informationsbibliothek Hannover
Place of publication of the digital copy:
Hannover
Year of publication of the original:
2016
Document type:
Volume
Collection:
Earth sciences

Chapter

Title:
3 Spectral signatures of objects. Chairman: G. Guyot, Liaison: N. J. J. Bunnik
Document type:
Multivolume work
Structure type:
Chapter

Chapter

Title:
A preliminary assessment of an airborne thermal video frame scanning system for environmental engineering surveys. T. J. M. Kennie & C. D. Dale, G. C. Stove
Document type:
Multivolume work
Structure type:
Chapter

Contents

Table of contents

  • Remote sensing for resources development and environmental management
  • Remote sensing for resources development and environmental management (Volume 1)
  • Cover
  • Title page
  • Title page
  • Title page
  • Preface
  • Organization of the Symposium
  • Working Groups
  • Table of contents
  • 1 Visible and infrared data. Chairman: F. Quiel, Liaison: N J. Mulder
  • 2 Microwave data. Chairman: N. Lannelongue, Liaison: L. Krul
  • 3 Spectral signatures of objects. Chairman: G. Guyot, Liaison: N. J. J. Bunnik
  • 4 Renewable resources in rural areas: Vegetation, forestry, agriculture, soil survey, land and water use. Chairman: J. Besenicar, Liaisons: M. Molenaar, Th. A. de Boer
  • Remote sensing in the evaluation of natural resources: Forestry in Italy. Eraldo Amadesi & Rodolfo Zecchi, Stefano Bizzi & Roberto Medri, Gilmo Vianello
  • Visual interpretation of MSS-FCC manual cartographic integration of data. E. Amamoo-Otchere
  • Optimal Thematic Mapper bands and transformations for discerning metal stress in coniferous tree canopies. C. Banninger
  • Land use along the Tana River, Kenya - A study with small format aerial photography and microlight aircraft. R. Beck, S. W. Taiti, D. C. P. Thalen
  • The use of multitemporal Landsat data for improving crop mapping accuracy. Alan S. Belward & John C. Taylor
  • Aerial photography photointerpretation system. J. Besenicar, A. Bilc
  • Inventory of decline and mortality in spruce-fir forests of the eastern U.S. with CIR photos. W. M. Ciesla, C. W. Dull, L. R. McCreery & M. E. Mielke
  • Field experience with different types of remote-sensing data in a small-scale soil and land resource survey in southern Tanzania. T. Christiansen
  • A remote sensing aided inventory of fuelwood volumes in the Sahel region of west Africa: A case study of five urban zones in the Republic of Niger. Steven J. Daus & Mamane Guero, Lawally Ada
  • Development of a regional mapping system for the sahelian region of west Africa using medium scale aerial photography. Steven J. Daus, Mamane Guero, Francois Sesso Codjo, Cecilia Polansky & Joseph Tabor
  • A preliminary study on NOAA images for non-destructive estimation of pasture biomass in semi-arid regions of China. Ding Zhi, Tong Qing-xi, Zheng Lan-fen & Wang Er-he, Xiao Qiang-Uang, Chen Wei-ying & Zhou Ci-song
  • The application of remote sensing technology to natural resource investigation in semi-arid and arid regions. Ding Zhi
  • Use of remote sensing for regional mapping of soil organisation data Application in Brittany (France) and French Guiana. M. Dosso, F. Seyler
  • The use of SPOT simulation data in forestry mapping. S. J. Dury, W. G. Collins & P. D. Hedges
  • Spruce budworm infestation detection using an airborne pushbroom scanner and Thematic Mapper data. H. Epp, R. Reed
  • Land use from aerial photographs: A case study in the Nigerian Savannah. N. J. Field, W. G. Collins
  • The use of aerial photography for assessing soil disturbance caused by logging. J. G. Firth
  • An integrated study of the Nairobi area - Land-cover map based on FCC 1:1M. F. Grootenhuis & H. Weeda, K. Kalambo
  • Explorations of the enhanced FCC 1:100.000 for development planning Land-use identification in the Nairobi area. F. Grootenhuis & H. Weeda, K. Kalambo
  • Contribution of remote sensing to food security and early warning systems in drought affected countries in Africa. Abdishakour A. Gulaid
  • Double sampling for rice in Bangladesh using Landsat MSS data. Barry N. Haack
  • Studies on human interference in the Dhaka Sal (Shorea robusta) forest using remote sensing techniques. Md. Jinnahtul Islam
  • Experiences in application of multispectral scanner-data for forest damage inventory. A. Kadro & S. Kuntz
  • Landscape methods of air-space data interpretation. D. M. Kirejev
  • Remote sensing in evaluating land use, land cover and land capability of a part of Cuddapan District, Andhra Preadesh, India. S. V. B. Krishna Bhagavan & K. L. V. Ramana Rao
  • Farm development using aerial photointerpretation in Ruvu River Valley, Ragamoyo, Tanzania, East Africa. B. P. Mdamu & M. A. Pazi
  • Application of multispectral scanning remote sensing in agricultural water management problems. G. J. A. Nieuwenhuis, J. M. M. Bouwmans
  • Mangrove mapping and monitoring. John B. Rehder, Samuel G. Patterson
  • Photo-interpretation of wetland vegetation in the Lesser Antilles. B. Rollet
  • Global vegetation monitoring using NOAA GAC data. H. Shimoda, K. Fukue, T. Hosomura & T. Sakata
  • National land use and land cover mapping: The use of low level sample photography. R. Sinange Kimanga & J. Lumasia Agatsiva
  • Tropical forest cover classification using Landsat data in north-eastern India. Ashbindu Singh
  • Classification of the Riverina Forests of south east Australia using co-registered Landsat MSS and SIR-B radar data. A. K. Skidmore, P. W. Woodgate & J. A. Richards
  • Remote sensing methods of monitoring the anthropogenic activities in the forest. V. I. Sukhikh
  • Comparison of SPOT-simulated and Landsat 5 TM imagery in vegetation mapping. H. Tommervik
  • Multi-temporal Landsat for land unit mapping on project scale of the Sudd-floodplain, Southern Sudan. Y. A. Yath, H. A. M. J. van Gils
  • Assessment of TM thermal infrared band contribution in land cover/land use multispectral classification. José A. Valdes Altamira, Marion F. Baumgardner, Carlos R. Valenzuela
  • An efficient classification scheme for verifying lack fidelity of existing county level findings to cultivated land cover areas. Yang Kai, Lin Kaiyu, Chen Jun & Lu Jian
  • The application of remote sensing in Song-nen plain of Heilongjiang province, China. Zhang Xiu-yin, Jin Jing, Cui Da
  • Cover

Full text

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of de-striping. This was performed by running a 
rectangular box filter across the image. The 
advantage of such a process is to produce a more 
consistent image. However, since the filter cannot 
discriminate between small scene variations and 
systematic and random noise, both tend to be removed 
or reduced in amplitude. 
For applications where there is an interest in the 
detection of subtle linear features, (for example the 
identification of subterranean field drains), it has 
been found useful to perform a variable filter edge 
enhancement, the filter size being dependant on the 
particular feature of interest. The most commonly 
used filters range from 3 X 3 to 15 X 15 pixels in 
dimension. Once the feature of interest has been 
enhanced by this process it has also been found 
useful to apply a median filter; this resamples the 
data in a 3 X 3 box. By using this process isolated 
pixels caused by the edge enhancement procedure tend 
to be removed. 
A further processing operation is required if the 
project requires quantitative absolute temperature 
values. In order to obtain such information 
calibration of the imagery needs to be carried out 
using ground temperature measurements obtained at the 
time of the aircraft overpass. Correlation of these 
ground measurements with the unstretched digital 
numbers can be used to establish the limits for a 
quantitative density slice representing discrete 
temperature levels. The application of this technique 
to heat loss monitoring is presented in section 6. 
6 APPLICATIONS 
As mentioned previously several flights of the Barr 
and Stroud IR18 TVFS were performed during August 
1984 as part of a preliminary research assessment of 
the instrument. As a consequence of early morning 
mist these flights took place from late morning until 
late afternoon rather than, as planned, during the 
post-sunset/ pre-dawn period. The imagery obtained 
was, nevertheless, useful since it enabled the 
potential of the imagery to be assessed together with 
methods of processing the imagery (Dele, 1985) 
More recently both the Barr end Stroud and RPC 
TVFS systems have been flown, for a variety of 
projects by ERSAC Ltd. The following material 
reports some of the most significant applications to 
date. 
6.1 Heat Loss Monitoring. 
Several projects have been carried out using the Barr 
and Stroud IR18 to assess heat loss from industrial 
and residential buildings. As mentioned above, in 
order to provide quantitative estimates of localised 
heat loss from TVFS imagery it is necessary to 
establish calibration data to relate the grey scale 
variations on the image to emitted radiance and 
eventually to estimates of heat emission. In addition 
to deriving emitted temperature it is also necessary 
to evaluate the variations in emissivity over the 
scene. 
Ground temperature measurements can be obtained 
using either conventional in-situ temperature probes 
(e.g. thermistors or thermometers) or alternatively 
by using ground based radiometric measurements from 
instruments such as the AGA Thermovision. As 
mentioned earlier the AGA Thermovision is a low 
spatial resolution system; however, it is possible, 
by using a blackbody reference, to obtain ground 
temperature measurements. By using the Stefan- 
Boltzmann law the heat loss for a particular 
temperature value can be derived and a suitable 
density slice for the IR18 imagery obtained. The 
results of one particular set of date are shown in 
Table 4. 
If the computed heat losses (Q) from Table 4 are 
regressed on the mean digital number indicating 
emitted radiance (R) from the IR18, then a regression 
coeffiecient (r) of 0.924 is obtained. The 
Table 4. Calibration of Heat Loss from Barr and 
Stroud IR18 using data from the AGA Thermovision 
Colour 
Coding 
Mean 
Radiance(R) 
AGA 
Temperature 
(*c) 
Mean Computed 
Heat Loss (Q) 
(Watts) 
Blue 
44 
2.5 
11 
Cyan 
74 
4.0 
17 
Magenta 
80 
4.7 
21 
Grey 
95 
6.3 
28 
Black 
110 
6.5 
29 
Red 
131 
7.6 
33 
White 
155 
13.8 
63 
coefficient of determination (r 2 ) is 0.854, 
indicating that 85% of the computed heat losses from 
the calibration results above can be explained by the 
corresponding radiance values (R) as recorded and 
digitised from the IR18 sensor data. The resulting 
heat loss regression equation for the IR18, for the 
8°c gain setting was of the form; 
Q = 0.4185R - 12.537 ....(1) 
with a standard error of ±6 watts. 
6.2 Thermal Mapping of Roads 
A novel environmental engineering application of the 
IR18 TVFS system has involved thermal mapping of road 
surfaces in winter to identify accident black spots. 
The primary objective of this night-time aerial 
survey work was to assist road engineers in the 
siting of ground sensors to monitor ice conditions 
around high accident risk sections of road. It is 
also hoped that the data will enable improvements and 
ecomomies in road gritting operations to be achieved. 
The survey was carried out in Scotland in February 
1986. Ground temperature measurements were obtained 
and used to determine calibration data for the IR18. 
By using this data in conjunction with the GEMS image 
processing system it was possible to digitise and 
calibrate a selected number of frames of data. Using 
a digital to analogue converter it was then possible 
to create from these selected scenes, a density 
sliced video image of the original analogue tape. 
This feature has been shown to be of considerable 
benefit to non specialists viewing the imagery. 
6.3 Geotechnical Site Investigations 
An assessment of the potential of the IR18 to detect 
solution features in chalk will be carried out during 
the summer of 1986. Solution features are a serious 
geotechnical hazard and generally provide unreliable 
bearing capacity for foundations. A review of the 
significance of solution features end the use of 
remote sensing techniques for their detection is 
provided in Kennie and Edmonds (1986). The relative 
performance of TVFS and thermal infrared linescanning 
techniques will also be investigated during this 
exercise. 
6.4 Drainage, Sewer Collapse and Utilities Surveys 
A recent application of the IR18 has involved the 
detection of subsurface utilities and problems 
associated with such features. In this case the TVFS 
was mounted on a boom attached to a car and was used 
in conjunction with a ground impulse radar system 
(x = 6 to 330 centimetres).
	        

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