Shape-only Features for Plant Leaf Identification

11/20/2018
by   Charlie Hewitt, et al.
0

This paper presents a novel feature set for shape-only leaf identification motivated by real-world, mobile deployment. The feature set includes basic shape features, as well as signal features extracted from local area integral invariants (LAIIs), similar to curvature maps, at multiple scales. The proposed methodology is evaluated on a number of publicly available leaf datasets with comparable results to existing methods which make use of colour and texture features in addition to shape. Over 90 most datasets, with top-four accuracy for these datasets reaching over 98 Rotation and scale invariance of the proposed features are demonstrated, along with an evaluation of the generalisability of the approach for generic shape matching.

READ FULL TEXT

page 2

page 4

research
11/20/2013

Neural Network Application on Foliage Plant Identification

Several researches in leaf identification did not include color informat...
research
09/23/2022

Statistical shape representations for temporal registration of plant components in 3D

Plants are dynamic organisms. Understanding temporal variations in veget...
research
12/22/2019

Robust Pose Invariant Shape and Texture based Hand Recognition

This paper presents a novel personal identification and verification sys...
research
09/30/2013

Personal Identification from Lip-Print Features using a Statistical Model

This paper presents a novel approach towards identification of human bei...
research
01/06/2015

A Novel Technique for Grading of Dates using Shape and Texture Features

This paper presents a novel method to grade the date fruits based on the...
research
01/03/2018

Polynomial-based rotation invariant features

One of basic difficulties of machine learning is handling unknown rotati...
research
09/12/2014

Time-domain multiscale shape identification in electro-sensing

This paper presents premier and innovative time-domain multi-scale metho...

Please sign up or login with your details

Forgot password? Click here to reset