ANALISIS PERBANDINGAN METODE JARINGAN SARAF TIRUAN BACKPROPAGATION DAN LEARNING VECTOR QUANTIZATION PADA PENGENALAN WAJAH
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Desain And Implemantion, Student, information Systems, Website.Abstract
ANNs have the ability to learn from data and recognize unstructured patterns. In face detection, ANNs can be used to recognize faces from images or videos. However, selecting the right ANN method is crucial for achieving optimal face detection performance. The results of this study are the highest classification accuracy value of the backpropagation artificial neural network system in recognizing student facial images with a comparison of the Learning Vector Quantization method is 96.25% (detection error = 0) with a classification architecture of the test data comparison - training data 70: 30, 20,000 iterations, calculation error tolerance 0.00001 and the number of hidden layer neurons = 5 while the lowest classification accuracy value of the backpropagation artificial neural network system in recognizing student facial images based on LVQ features is 85.42% (detection error = 34) with a classification architecture of the test data comparison - training data 70: 30, 10,000 iterations, calculation error tolerance 0.01 and the number of hidden layer neurons = 15
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Akbari, M. I. H. A. D., Novianty, A., & Casi, S. (2017). Analisis Sentimen Menggunakan Metode Learning Vector Quantization Sentiment Analysis Using Learning Vector Quantization Method. E-Proceeding of Engineering, Vol.4, No.2
Andriani dan Kurniawan. 2021. Perbandingan kinerja jaringan saraf tiruan backpropagation dan learning vector quantization pada pengenalan wajah. JURTEKSI (jurnal teknologi dan sistem informatika) STMIK Triguna Dharma, Vol.12 No.3
Bacrit, Cirutu. 2021. Perbandingan metode jaringan saraf tiruan backpropagation dan learning vector quantization pada pengenalan wajah. JTIIK (jurnal teknologi informasi dan ilmu komputer), Vol.12, No.2
Dessy Wuryandari, Maharani, & Irawan Afrianto. 2020. Perbandingan metode jaringan saraf tiruan backpropagation dan learning vector quantization pada pengenalan wajah. Jurnal penelitian teknologi dan informatika. (KOMPUTA), Vol.10, No.2.
Jauhari, D. H. A. a. D. C., 2016. Prediksi Distribusi Air PDAM Menggunakan Metode Jaringan Syaraf Tiruan Backpropagation Di PDAM Kota Malang. Jurnal Teknologi Informasi dan Ilmu Komputer, Volume 3.
Muhammad varriel Avenazh Nizar, Sirajuddin Hawari, & A.Nur Ihsan Purwanto. 2022. Membandingkan metode jaringan saraf tiruan backpropagation dan learning vector quantization dengan opencv pada pengenalan wajah. Jurnal Riset Rumpun Ilmu Teknik (JURRITEK). Vol.1, No.1, 107-114.
Nikmah, Nanik Ulfatun. 2014. Prediksi Kebutuhan Air Pdam Berdasarkan Jumlah Pelanggan Menggunakan Al-Alaoui Backpropagation. Skripsi, Universitas Brawijaya
Pujihati, R. (2014). Penerapan Metode Jaringan Syaraf Tiruan Learning Vector Quantization (LVQ) Untuk Pengenalan Wajah dengan Citra Wajah Gaussian Blur. (Skripsi). Fakultas Pendidikan Matematika dan Ilmu Pengetahuan Alam. Universitas Pendidikan Indonesia
Sutojo, dkk. 2011. Kecerdasan Buatan. Yogyakarta : Andi W. Maharani D., Afrianto I. 2012. Perbandingan Metode Jaringan Syaraf Tiruan Backpropagation dan Learning Vector Quantization Pada Pengenalan Wajah. Jurnal Komputer dan Informatika (KOMPUTA). vol. 1
Yarza Aprizal, Rabin Ibnu Zainal, Afriyudi,(2019). Perbandingan Metode Backpropagation Dan Learning Vector Quantization (LVQ) Dalam Menggali Potensi Mahasiswa Baru Di Stmik Palcomtech.
Yeni yulianti. 2022. Perbandingan jaringan saraf tiruan backpropagation dan learning vector quantization untuk pengenalan wajah. Jurnal ilmiah. Vol.12, No. 2.
Zulkhaidi, Tengku Cut Al-Saidina., Maria, Eny & Yulianto. 2019. Pengenalan Pola Bentuk Wajah dengan Open CV. JURTI. Vol.3 No.2.
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