Penerapan Computer Vision Menggunakan Metode Deep Learning pada Perspektif Generasi Ulul Albab

Penulis

  • Imamul Arifin Politeknik Elektronika Negeri Surabaya
  • Reydiko Fakhran Haidi Politeknik Elektronika Negeri Surabaya
  • Muhammad Dzalhaqi Politeknik Elektronika Negeri Surabaya

DOI:

https://doi.org/10.54914/jtt.v7i2.436

Kata Kunci:

Sistem Kecerdasan Buatan, Machine Learning, Computer Vision, Deep Learning

Abstrak

Machine learning merupakan salah satu penerapan kecerdasan buatan. Penggunaan machine learning pada computer vision erat berkaitan dengan deep learning yang mana para ilmuwan komputer mendapatkan inspirasi mengenai teknologi deep learning dari alam sekitar. Tujuan penelitian pada naskah ini adalah Mengetahui dan memahami teknologi deep learning beserta contoh sederhana dalam pemrosesan objek gambar dan Mengetahui dan memahami teknologi kecerdasan buatan dalam perspektif generasi ulul albab sehingga bisa memberikan manfaat secara menyeluruh bagi dunia. Penelitian yang dilakukan pada karya tulis ini merupakan jenis penelitian kualitatif dengan metode studi pustaka (library research) menggunakan berbagai buku dan literatur bacaan lainnya seperti jurnal dan website khusus sehingga menghasilkan informasi dari topik yang diteliti. Teknologi kecerdasan buatan akan selalu berkembang dan menuju arah yang semakin canggih, tetapi teknologi juga mempunyai dampak negatif. Generasi Ulul Albab harus bisa berjuang untuk memberikan dampak positif bagi masyarakat karena sejatinya generasi ulul albab adalah harapan kemajuan peradaban islam di berbagai sektor ilmu pengetahuan dan teknologi.

Unduhan

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Diterbitkan

2021-12-30

Cara Mengutip

[1]
I. . Arifin, R. F. . Haidi, dan M. . Dzalhaqi, “Penerapan Computer Vision Menggunakan Metode Deep Learning pada Perspektif Generasi Ulul Albab”, j. teknologi terpadu, vol. 7, no. 2, hlm. 98–107, Des 2021.

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