The Application of Convolutional Neural Networks in Floristic Recognition

Main Article Content

Legito
Rini Nuraini
Loso Judijanto
Ahmadi Irmansyah Lubis

Abstract

In the dynamic field of computer vision, this research explores the application of Convolutional Neural Networks (CNNs) for the complex task of floristic recognition, a critical aspect of botanical and ecological studies. Addressing the challenges posed by the vast diversity and subtle morphological differences among plants, our study leverages CNNs for an efficient and accurate plant identification method. Distinguished by a comprehensive dataset encompassing a wide range of plant species and employing a state-of-the-art CNN model, our research significantly advances the methodology of flower recognition. This paper highlights the CNN model's sophisticated feature extraction and image analysis capabilities, demonstrating its superior performance in classifying a diverse range of flora compared to traditional methods and other machine learning techniques like Support Vector Machines (SVM) and decision trees. Our approach emphasizes practical applications in areas such as agriculture, ecology, and conservation, and offers a powerful tool for rapid and efficient plant identification, crucial in biodiversity studies. The research contributes to the fields of botany, ecology, and environmental conservation, underscoring the transformative potential of CNNs in floristic recognition. It also outlines the future direction for enhancing the model's efficiency, including developing more computationally efficient architectures and expanding training datasets.

Article Details

How to Cite
Legito, Nuraini, R., Judijanto, L., & Lubis, A. I. (2023). The Application of Convolutional Neural Networks in Floristic Recognition. International Journal Software Engineering and Computer Science (IJSECS), 3(3), 520–528. https://doi.org/10.35870/ijsecs.v3i3.1827
Section
Articles
Author Biographies

Legito, Sekolah Tinggi Teknologi Sinar Husni

Informatics Engineering Study Program, Sekolah Tinggi Teknologi Sinar Husni, Medan City, North Sumatra Province, Indonesia

Rini Nuraini, Faculty of Communication and Informatics Technology

Informatics Study Program, Faculty of Communication and Informatics Technology, Universitas Nasional, City of South Jakarta, Special Capital Region of Jakarta, Indonesia

Loso Judijanto, IPOSS Jakarta

Public Policy Research, IPOSS Jakarta, Indonesia

Ahmadi Irmansyah Lubis, Politeknik Negeri Batam

Software Engineering Technology Study Program, Politeknik Negeri Batam, Batam City, Riau Islands, Indonesia

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