Plant Classifier Based on Leaf Shape and Texture Features
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Abstract
The recognition of plants has become an active area as per the research many plants taxonomic
group are at hazard of
extermination. To preserve the endanger species new technique are
been developed by the researchers. With the great advancement in the technology these days
become the key factor for the identification the product and preserve that product with the
help of
mobile. The area of recognition of plants is trending nowadays because of the fact
there are many more plant that need to be identify. More and more advancements are in
progress to quickly and efficiently identify the plant. Today’s world is all about spe
ed and
accurac
y of the results. In this thesis
, an efficient method of learning is used
for the p
urpose
of classification. In this thesis
, we are using two approaches to identify the leaf and both
approach consists of three Phases such as pre
-
processing,
extraction of classification
and
execution phase
. And of them first approach is shape based and second approach is texture
based. The pre
-
processing phase involves a representation of image processing steps such as
grayscale transformation and limits impr
ovement. The main contribution
of shape based
approach is the p
robabilistic neural network (PNN) classification for the efficient recognition
of the leaves whereas in te
xture based approach support vector m
achine (SVM) classify
efficient recognition of lea
ves. In shaped based approach 13 sheet characteristics that they are
extracted and orthogonalized into 6 main variables given as an input vector to the different
methods
and in texture based local binary p
attern (LBP) use to extract features depending
upon
radius and nearest neighbour.
