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UTILIZATION OF LANDSAT DATA TO MONITOR DEFORESTATION OF KENYA'S MAU FOREST
by
HUBERTUS (HUGH) L. BLOEMER
Ohio University, Athens, Ohio USA
JAMES 0. BRUMFIELD
Marshall University, Huntington, W.Va. USA
WUGHANGA M. MAGHENDA
Ohio University, Athens, Ohio USA
ABSTRACT
The Mau Forest, the largest forest in Kenya, is under constant pressure for
alternative land use. Settlements, due to population pressure, are encroaching
and the need for agricultural land is ever increasing. Squatter settlements are
leaving an imprint of deforestation which might have devastating results in the
area.
Major factors responsible for the depletion of the Mau Forest include:
1) Fire (often attributed to human carelessness), 2) Conversion of bushland to
grassland by itinerant charcoal burners, 3) Unplanned harvesting and general
exploitation (e.g. pit sawing, cutting of fuel wood), 4) Clearing of trees to
create pasture land and the clearing of forest in order to plant food crops, dis-
regarding the terrain, 5) Cutting of trees for building poles, and 6) Multiplica-
tion of forest diseases.
The extent of forest change is far-ranging in the Mau Forest. Data obtained
through LANDSAT provides a mechanism to monitor the rate and magnitude of the
change. Data for January 1973 and December 1978 were analyzed through the aid
of digital data processing. The procedure included a traditional and nontradi-
tional cluster algorithm technique to measure the extent of deforestation. The
classified data sets were compared with aerial photography and other geo-referenced
information. The two data sets were subsequently compared to determine the extent
of deforestation during the time interval. Results show that the trends in defor-
estation for a geographic region can be effectively monitored through digital data
processing and analysis of LANDSAT data. The data processing was accomplished
through the Earth Resources Data Analysis System (ERDAS) 400, housed at Ohio Uni-
versity's Ohio Center for Remote Sensing. Digital data processing of this type
certainly provides an additional tool for forest resources management.
INTRODUCTION
Forests, even though they are considered a renewable resource, are declining
at an alarming rate (Cannon et al.,1978; Lachowski et a1,,1978; Persson 1977).
This is particularly true of the tropical rain forest which includes the Mau
Forest in Kenya. (See Figure 1.) Deforestation is not merely a matter of land
cover or land use change; rather the environmental ramifications of such occurence
can lead to disastrous results if the practice goes unchecked.
Man's impact on the environment has been multifarious and often synergistic
throughout the time of habitation of planet earth. It has only been in recent
decades, for the most part, that man's relationship with the land or his environ-
ment has been looked at with any degree of scrutiny. The major factors responsi-
ble for the depletion of the Mau Forest include land clearing for agricultural
land use, wood gathering for fuel and lumbering for commercial and industrial
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