IMPLEMENTASI METODE PEMILIHAN JENIS SAMPAH MENGGUNAKAN YOU ONLY LOOK ONCE (YOLO)

Marsha Safira, Adella (2024) IMPLEMENTASI METODE PEMILIHAN JENIS SAMPAH MENGGUNAKAN YOU ONLY LOOK ONCE (YOLO). Skripsi thesis, INSTITUT INFORMATIKA DAN BISNIS DARMAJAYA.

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cover skripsi.pdf

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Pernyataan Orisinalitas.pdf

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halaman persetujuan.pdf

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halaman pengesahan.pdf

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Halaman Persembahan.pdf

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abstrak.pdf

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Halaman Moto.pdf

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Riwayat Hidup.pdf

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Kata Penghantar.pdf

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Daftar Isi.pdf

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Daftar Tabel.pdf

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Daftar Gambar.pdf

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Daftar Lampiran.pdf

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Bab 1.pdf

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Bab 4.pdf

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Daftar Pustaka.pdf

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Lampiran.pdf

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Abstract

The waste problem is a major concern in various regions, including the Bandar Lampung City, which recorded daily waste accumulation of as much as 287,057.55 tons. Data from SIPSN KLHK in 2022 shows that the number of national waste pile reached 21.1 million tons. Previous research has classified recyclable waste used a Support Vector Machine and Local Binary Pattern. This research aims to develop a system implementation of separation of organic and non-organic waste using YOLOv8. Research methods include pre-training, data collection from sourced such as GitHub and Kaggle (3021 images in total), as well as manual labeling using Roboflow with the division of organic and non-organic labels. Preprocessing involves dividing the dataset into Train Set (70%), Valid Set (20%), and Test Set (10%). The YOLOv8 model is implemented and compared with other deep learning-based methods. Analyze device requirements including the hardware and software used, including specifications hardware and software such as YOLOv8, Google Colab, and Roboflow. Evaluation of research results including distribution of datasets, descriptions of research, and evaluation using the Roboflow API. The research results show that YOLOv8 is successful in detecting organic and non-organic waste, with effective dataset sharing. The use of GPUs and the Roboflow API makes a significant contribution to accelerating training and system integration. In conclusion, this research contributes to the development of technology for more efficient waste management in the Bandar Lampung City and the field of Computer Vision in general. Keywords: YOLOv8 Model, Deep Learning, Garbage Classification.

Item Type: Thesis (Skripsi)
Subjects: Ilmu Komputer
eSkripsi
Divisions: Skripsi/TA & PKPM/KP - Fakultas Ilmu Komputer > Teknik Informatika
Depositing User: Adella Marsha Safira
Date Deposited: 16 Apr 2024 05:48
Last Modified: 16 Apr 2024 05:48
URI: http://repo.darmajaya.ac.id/id/eprint/15359

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