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Journal : Proceeding International Conference on Information Technology and Business

Automatic Identification of Herbal Medicines Based on Medicinal Plant Leaf Images Using the Scale Invariant Feature Transform (SIFT) Features Kasim, Anita Ahmad; Bakri, Muhammad; Lamasitudju, Chairunnisa; Fachrozi, Ahmad
Prosiding International conference on Information Technology and Business (ICITB) 2023: INTERNATIONAL CONFERENCE ON INFORMATION TECHNOLOGY AND BUSINESS (ICITB) 9
Publisher : Proceeding International Conference on Information Technology and Business

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Abstract

Background: A few people prefer to consume medicinal plants compared to modern medicine. This is because modern medicine contains chemicals which over time can have a bad impact on the kidneys, and medicinal plants are also considered cheap treatments. Meanwhile, in our current environment, there are plants that grow and have certain benefits, but some people don't know whether these plants are herbal medicinal plants or not. By utilizing technology, people can find out about herbal medicinal plants based on the leaves by photographing them on an Android smartphone. Method: The method used to extract features from the leaf image is Scale Invariant Feature Transform (SIFT). Aim: This research aims to recognize leaves whose images have been photographed or uploaded. The system will identify herbal medicinal plants using the leaf image of the plant using the Scale Invariant Features Transform (SIFT) method. Result: Feature Extraction and Support Vector Machine (SVM). With this system, it is hoped that users will be able to identify herbal medicinal plants that may grow in the surrounding environment. Based on the description in the background above, the problem formulation in this research is how to identify herbal medicinal plants using leaf images using Android-based SIFT feature extraction. Conclusion: The results of the confusion matrix test explain that this system has an average accuracy of 77%, which means that this system is quite good at identifying leaf images, even though the error rate is quite high at 23%.Keywords—Medicinal Plant Leafs, SVM, SIFT
Co-Authors , Mawardi , Mukhdasir , Nelly , Sufitrayati -, Rampeng Abdul Haris Abdul Rakhfid, Abdul Abeng, Andi Tenri Agustus Sani Nugroho & Ema Rahmawati Heryaman, Agustus Sani Nugroho & ahmad syauqi, ahmad Amaliyah, Syaila Nur Amar Andi Agusniati Andi Irawana Andi Tenri Abeng Anggreani, A. Vivit Angreani, A.Vivit Angreani, Andi Vivit Anita Ahmad Kasim Annisa Annisa Arwinence Pramadewi Asdar Asdar Asmaul Husna Asnariza Astuti Ahmad Awaluddin Awaluddin Azlindah, Azlindah Baehaqi Bahar, Megawati Baso, R Burhanuddin Chairul Amni, Chairul Coralia, Febriyanti Ernianah, Ernianah Evya, Evya Fachrozi, Ahmad Fendi Fendi Gazali Amin Hamdiah, Cut Hamsiah, Andi Hasanuddin " hasyim, hasyim Hawati, Hawati Herlina Herlina I Gusti Bagus Wiksuana Ida Ariyani Ida Ayu Putu Sri Widnyani Idris, Syahril Ikhbar, Samsul Ilyas Ilyas Irdinal Arief Iwan Permadi Jainuddin, Jainuddin Khairuna Lamasitudju, Chairunnisa Malahayati Malahayati Malik, Kurnia Mas'ud Muhammadiah Mauga, Rifai Molier, Dahlia D Mosriula, Mosriula Muhammad Erfan, Muhammad Muhammad, Afiat Musdalipa, Musdalipa Nengsih, Rita Nirwansha, Nola Putri Nur Rezky Ramadhan Nurjannah Nurwijayanti Nuryanti ' Pratiwi, Alfina Rahmaniah, Rahmaniah Restu Januarty Hamid Rifai Mardin Risman Risman Rochmady Rosmawati Rosmawati Sadiqin, Raibul Santosa, Yoyok Nurkaya Sarong, Sumarni St Muriati, St Syam, Ulfah Syamsuddin, Nurfiani Taufik Ali, Andi Muhammad Thaha, Lutfiah Wahid, Areski Widodo S Pranowo Widyawati Wirdayanti Wulan, Wa Ode Sry Yassir Yassir Yusnidar, St Zainal Zulfikar, A. Iman