Русские видео

Сейчас в тренде

Иностранные видео


Скачать с ютуб Medicinal Herbs Identification | Python Machine Learning IEEE Final Year Project 2023 - 2024 в хорошем качестве

Medicinal Herbs Identification | Python Machine Learning IEEE Final Year Project 2023 - 2024 11 месяцев назад


Если кнопки скачивания не загрузились НАЖМИТЕ ЗДЕСЬ или обновите страницу
Если возникают проблемы со скачиванием, пожалуйста напишите в поддержку по адресу внизу страницы.
Спасибо за использование сервиса savevideohd.ru



Medicinal Herbs Identification | Python Machine Learning IEEE Final Year Project 2023 - 2024

Medicinal Herbs Identification | Python IEEE Final Year Project 2023 - 2024. 🛒Buy Link: https://bit.ly/3SFtvsP (or) To buy this project in ONLINE, Contact: 🔗Email: [email protected], 🌐Website: https://www.jpinfotech.org 📌IEEE Base Paper Title: Medicinal Herbs Identification. 🔬Our Proposed Project Title: An AI based approach for Advancing Medicinal Plant Identification using Deep Learning. 💡Implementation Code: PYTHON. 🔬Algorithm / Model Used: Xception Architecture. 🌐Web Framework: Flask. 🖥️Frontend: HTML, CSS, JavaScript. 💰Cost (In Indian Rupees): Rs.5000/. IEEE Base paper Abstract: Many rural communities have a strong belief in plant diversity. They collect useful plants and herbs and use them with indigenous knowledge and customs. One such oldest system that results in the use of medicinal herbs is Ayurveda. Approximately 10,000 plants are used medicinally in India, but not all plants are included in the official Ayurvedic Pharmacopoeia. Before becoming part of Ayurvedic medicine, all plants need to be thoroughly studied. For this reason, identifying herbs is the most important step. Many of these identifications are fully supported by human perception, leaving room for error and misjudgement. Therefore, it is necessary to develop an efficient system using computer vision, pattern recognition, and image processing algorithms alongside the availability of various combinations of feature detection methods with different classifiers that are often utilized in building an automatic identification system for herbal leaves using leaf images and reveal its associated information to realize knowledge. OUR PROPOSED ABSTRACT: In recent years, there has been a growing interest in the identification and classification of medicinal plants due to their potential health benefits. This project presents an innovative AI-based approach for advancing medicinal plant identification using deep learning techniques, specifically employing the Xception architecture. Developed using Python, our model achieves remarkable training accuracy of 93.34% and validation accuracy of 96.79%. To train and evaluate the model, we utilized the VNPlant-200 dataset, consisting of a comprehensive collection of 17,973 images of medicinal plants distributed among 200 distinct categories. This dataset encompasses a wide variety of plant species with diverse visual characteristics, enabling robust and accurate plant identification. Through a meticulous training process, the Xception-based model learns intricate patterns and features within the images, enabling it to effectively distinguish between different medicinal plant species. Leveraging the power of deep learning, our approach significantly enhances the accuracy and efficiency of medicinal plant identification. Additionally, hyperparameter tuning and fine-tuning of the Xception architecture were performed to optimize the model's performance and achieve exceptional accuracy. The results obtained demonstrate the efficacy of our AI-based approach for medicinal plant identification. The high training and validation accuracies validate the model's capability to accurately recognize and categorize medicinal plant species. This project contributes to the advancement of automated identification systems in the field of herbal medicine, enabling researchers, botanists, and healthcare professionals to rapidly and reliably identify medicinal plants for various purposes. REFERENCE: M. Preethi; S. Jansi Rani; K. S. Pradhiksha; J. Ram Kumar; T. Vishal, “Medicinal Herbs Identification”, 2023 9th International Conference on Advanced Computing and Communication Systems (ICACCS), IEEE Conference, 2023. #python #pythonprojects #machinelearningproject #pythonprogramming #pythonprojectforbeginners #pythonprojectideas #pythonmachinelearning #machinelearning #machinelearningpython #finalyearproject #ieeeprojects #finalyearprojects #datascience #datascienceproject #artificialintelligenceproject #projects #deeplearning #deeplearningproject #computerscienceproject #deeplearningprojects #majorprojects #academicprojects #majorproject

Comments