Pengembangan Sistem Deteksi On-Shelf Availability Produk Menggunakan Algoritma YOLOV8 pada Aplikasi Beregerak

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Gabriel Imam Andaru

Universitas Islam Indonesia

Dhomas Hatta Fudholi

Universitas Islam Indonesia

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Andaru, G. I., & Fudholi, D. H. (2024). Pengembangan Sistem Deteksi On-Shelf Availability Produk Menggunakan Algoritma YOLOV8 pada Aplikasi Beregerak. Jurnal Indonesia : Manajemen Informatika Dan Komunikasi, 5(2), 1980-1988. https://doi.org/10.35870/jimik.v5i2.767
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Gabriel Imam Andaru, Universitas Islam Indonesia

Program Studi Informatika, Fakultas Teknologi Industri, Universitas Islam Indonesia, Kabupaten Sleman, Daerah Istimewa Yogyakarta, Indonesia.

Dhomas Hatta Fudholi, Universitas Islam Indonesia

Program Studi Informatika, Fakultas Teknologi Industri, Universitas Islam Indonesia, Kabupaten Sleman, Daerah Istimewa Yogyakarta, Indonesia.

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