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PENGEMBANGAN POTENSI DESA SUKAMAJU PADA BIDANG PARIWISATA DAN SEKTOR UMKM Taptajani, Dedi Sa'dudin; Fadhillah, Achmad Ridwan; Pamungkas, Aldi Tryana; Herliani, Desi; Septian, Diaz Ahmad; Annas, Elpan Jamaludin; Wijdan, Farid Muhammad; Mutaqin, Fahmi Hidayatul; Fauziah, Hany; Fadilah, Ilham; Nurjaman, Iman; H, Jingga Fajrianti; Maulana, Muhamad Andhika; Alfarizzi, Mohamad Risky; Rifai, Muhammad Rizal; Azham, Moch Nazham Ismul; Mawari, Rahma Siti; Putri, Riva Apriliyani; Rahman, Roy Hadi; Yuliana, Siti Sarah; Muwafiq, Syahdan Fatan Nur
Jurnal PkM MIFTEK Vol 6 No 1 (2025): Jurnal PkM MIFTEK
Publisher : Institut Teknologi Garut

Show Abstract | Download Original | Original Source | Check in Google Scholar | DOI: 10.33364/miftek/v.6-1.2079

Abstract

Penelitian ini berfokus pada pengembangan potensi Desa Sukamaju, Kecamatan Cilawu, Kabupaten Garut, khususnya pada sektor pariwisata dan UMKM. Melalui pendekatan partisipatif, tim peneliti melakukan redesain Desa Wisata Sindangkasih, pembuatan website baru, dan pembuatan logo untuk Usaha teh hijau lokal. Metode yang digunakan meliputi survei lapangan, diskusi dengan pengelola desa wisata dan pemilik usaha, serta implementasi desain menggunakan keahlian multidisiplin dari mahasiswa Institut Teknologi Garut. Hasil penelitian menunjukkan bahwa redesain desa wisata, termasuk penambahan gedung serba guna dan sekretariat, berpotensi meningkatkan daya tarik wisata. Pembuatan website baru meningkatkan visibilitas dan aksesibilitas informasi desa wisata, sementara logo baru produk teh hijau memperkuat identitas merek dan daya saing produk. Ketiga inisiatif ini berpotensi meningkatkan kunjungan wisatawan dan penjualan produk, yang pada gilirannya dapat mendorong pertumbuhan ekonomi lokal dan kesejahteraan masyarakat Desa Sukamaju.
Skin Tone Classification in Digital Images Using CNN For Make-Up and Color Recommendation Nurapipah, Nida; Yuliana, Siti Sarah
Journal of Intelligent Systems Technology and Informatics Vol 1 No 3 (2025): JISTICS, November 2025
Publisher : Aliansi Peneliti Informatika

Show Abstract | Download Original | Original Source | Check in Google Scholar | DOI: 10.64878/jistics.v1i3.29

Abstract

Human skin tone variation is an obstacle in the development of a digital beauty product recommendation system. The purpose of this study is to categorize skin tone into three groups (Black, Brown, and White). Using a Convolutional Neural Network (CNN) based on the refined EfficientNetB0 architecture on a balanced dataset of 1,500 facial images, each class consisting of 500 images. All images in the dataset have been resized to 224 × 224 pixels to match the model input and ensure data uniformity and compatibility with the EfficientNetB0 model architecture used. The dataset used was obtained from the Kaggle platform and processed through the normalization and augmentation stages. It was then evaluated through the validation process using the 5-fold cross-validation method. This model achieved a total accuracy level of 88.67%, with the white category demonstrating precision (0.93), recall (0.95), and F1-score (0.94), as well as the highest AUC of 0.99, indicating very satisfactory performance. Additionally, this system can offer personalized beauty product recommendations, including foundation shades, lipstick colors, and clothing color palettes, tailored to specific skin tones. This method enhances the user experience by providing accurate recommendations that adapt to various lighting conditions, making it suitable for use on digital beauty platforms.