Studi Pengenalan Pola untuk Tulisan Tangan dalam Pandangan Teori Kuhn & Popper

Penulis

  • Reza Budiawan Universitas Telkom
  • Arief Ichwan Program Studi Teknik Elektro dan Informatika, Institut Teknologi Bandung, Bandung
  • Rinaldi Munir Program Studi Teknik Elektro dan Informatika, Institut Teknologi Bandung
  • Dimitri Mahayana Program Studi Teknik Elektro dan Informatika, Institut Teknologi Bandung

DOI:

https://doi.org/10.23887/jfi.v6i2.41740

Kata Kunci:

science & pseudoscience, pengenalan pola, pengenalan tulisan tangan, discovery of science

Abstrak

Perkembangan ilmu pengetahuan terjadi di berbagai bidang pengetahuan ilmiah. Hal ini merupakan perwujudan dari dasar filsafat modern logosentris yang identik dengan kebenaran tunggal dan absolut. Salah satunya dapat dilihat pada bidang computer vision, khususnya optical character recognition pada topik handwriting recognition. Sistem pengenalan tulisan tangan (handwriting recognition) merupakan kemampuan komputer dalam menerjemahkan tulisan tangan menjadi bentuk digital. Pada bidang ini, terdapat metode yang dapat diterapkan untuk memungkinkan sistem mengenali tulisan tangan, yaitu pattern recognition. Banyak adaptasi penerapan metode yang telah digunakan seperti line segmentation, word separation, character segmentation, ekstraksi ciri, dan klasifikasi. Hal ini menggambarkan secara eksplisit perkembangan sains tidak terlepas dari kemajuan peradaban manusia dalam ilmu pengetahuan termasuk filsafat ilmu. Seiring dengan kemajuan teknologi dan ilmu pengetahuan modern, peta sains mulai berkiblat pada positivisme. Artikel ini akan membahas perkembangan penelitian terkait tulisan tangan untuk subjek computer vision dilihat dari perkembangan keilmuan (discovery of science) dalam pandangan Thomas Kuhn dan Karl Popper.

Biografi Penulis

Reza Budiawan, Universitas Telkom

Program Studi D3 Rekayasa Perangkat Lunak Aplikasi

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Unduhan

Diterbitkan

2023-06-30

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