Development of Hybrid Automatic Segmentation Technique of a Single Leaf from Overlapping Leaves Image
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Published:2021-03-17
Issue:3
Volume:14
Page:
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ISSN:2338-5499
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Container-title:Journal of ICT Research and Applications
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language:
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Short-container-title:J. ICT Res. Appl.
Author:
Bala Jibrin,Salau Habeeb Bello,Umoh Ime Jarlath,Onumanyi Adeiza James,Tijani Salawudeen Ahmed,Yahaya Basira
Abstract
The segmentation of a single leaf from an image with overlapping leaves is an important step towards the realization of effective precision agricultural systems. A popular approach used for this segmentation task is the hybridization of the Chan-Vese model and the Sobel operator CV-SO. This hybridized approach is popular because of its simplicity and effectiveness in segmenting a single leaf of interest from a complex background of overlapping leaves. However, the manual threshold and parameter tuning procedure of the CV-SO algorithm often degrades its detection performance. In this paper, we address this problem by introducing a dynamic iterative model to determine the optimal parameters for the CV-SO algorithm, which we dubbed the Dynamic CV-SO (DCV-SO) algorithm. This is a new hybrid automatic segmentation technique that attempts to improve the detection performance of the original hybrid CV-SO algorithm by reducing its mean error rate. The results obtained via simulation indicate that the proposed method yielded a 1.23% reduction in the mean error rate against the original CV-SO method.
Publisher
The Institute for Research and Community Services (LPPM) ITB
Subject
Electrical and Electronic Engineering,Information Systems and Management,General Computer Science
Cited by
2 articles.
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