fore using the
0.1678e*79^
2° = 0.606
ER
0.7 0.8
on wheat fields
|
t1Line
x + 0.6751
96
4.0
ved LAI and
product with the
using regression
is presented. A
performance of
scattered pixels
imilar trend was
:e in LAIs could
rent aggregation
method, Milne
1 this. Since the
crop, with less
| vegetation are
ict.
Director RSAM
oup for his keen
. We thank Shri
ya Pradesh), Dr.
Singh (RSAC-
>-Uttar Pradesh)
and Shri B. P. Singh (Central State Farm, Rajasthan) for their
support during field campaign.
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