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Enhanced Medical Plant Leaf Edge Detection Method using Non-Linear Constrained Optimization |
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| รหัสดีโอไอ | |
| Creator | P.Loganathan, R.Karthikeyan |
| Title | Enhanced Medical Plant Leaf Edge Detection Method using Non-Linear Constrained Optimization |
| Contributor | - |
| Publisher | TuEngr Group |
| Publication Year | 2565 |
| Journal Title | International Transaction Journal of Engineering, Management, & Applied Sciences & Technologies |
| Journal Vol. | 13 |
| Journal No. | 7 |
| Page no. | 13A7A: 1-8 |
| Keyword | Medical plant leaf, Edge detection, constrained optimization, Penalty method, ROC curve analysis. |
| URL Website | http://TuEngr.com/Vol13-7.html |
| Website title | ITJEMAST V13(7) 2022 @ TuEngr.com |
| ISSN | 2228-9860 |
| Abstract | The accuracy of the higher level of image processing depends primarily on edge detection which is a lower level of image processing task. The accuracy of medical plant leaf edge detection determines the success of the applications developed based on computer vision and machine vision for object recognition and scene interpretation from an image. It is essential to have an effective and definite edge detection method with accurate edge information. This research paper proposes to identify the edges using constrained optimization on a medical plant leaf. The penalty method is a nonlinearly constrained optimization technique used for solving both equality and inequality constraints. It was used to solve the constrained problem by converting it into an unconstrained problem using the penalty function. Nelder mead algorithm which is a derivative-free unconstrained optimization method was used to solve the unconstrained problem to obtain optimal edge regions from an image. In this paper Receiving Operating Characteristics (ROC) curve analysis was used for the performance analysis to justify the proposed method's accuracy. |