Plant recognition system based on extreme learning machine by using shearlet transform and new geometric features
Abstract
To date, different approaches have been used to be correctly identified
of plant species. Leaves are the most important approaches as part of
the plants which provide many features with advantages such as shape,
color and vein texture. In this study, a new approach based on the
geometrical properties of the leaf has been proposed. This method called
Edge Step (ES), consists of features such as angle, center-edge length
and edge distance by using edge points in the shape boundary curve. In
addition, Shearlet Transform method, which has features such as good
sensitivity to tissue identification, rapid calculation and directional
independence, is used. In addition to these methods, Color features and
Gray-Level Co-Occurrence Matrix (GLCM) method to extract color and
texture properties from leaf images have been applied. Attributes
derived from all these methods were tested with the Extreme Learning
Machine (ELM) classifier method as separately and combination. The
proposed study has been tested by using four different plant leaf
datasets such as Flavia, Swedish, ICL and Foliage. Using these datasets,
studies based on texture, shape and color characteristics have been
compared with the performance of the proposed approach. As a result, the
proposed method is identified to be more successful than the other
methods.
Collections
DSpace@BİNGÖL by Bingöl University Institutional Repository is licensed under a Creative Commons Attribution-NonCommercial-NoDerivs 4.0 Unported License..