PERBANDINGAN TINGKAT AKURASI JENIS CITRA KEABUAN , HSV, DAN L*a*b* PADA IDENTIFIKASI JENIS BUAH PIR
DOI:
https://doi.org/10.36982/jiig.v7i1.143Abstract
Image processing has been commonly used in automatic object identification. These are some methods that can be used for automatic object identification, such as LVQ, K-NN, SVM, and Neural Network. This research specifically bring out the topic about the level accuracy comparison in identification of pear variety using grayscale, HSV, and L*a*b* images in aim to get the best image type for pear image identification using neural network. The feature are gray level co-occurrence matrix feature (energy, entropy, homogeneity, and contrast) from canny edge detection’s image and also color feature. Based on image examination result, grayscale reached its best accuracy for 90% on MSE 1e-10 with 10 hidden layer neurons, HSV reached its best accuracy for 100% on MSE 1e-5 with 20 hidden layer neurons, L*a*b* reached its best accuracy for 100% on MSE 1e-5 with 15 hidden layer neurons. HSV and L*a*b* give the better accuracy for pear variety image identification than grayscale.
Keyword:Image Processing, Pear, Neural Network, Identification, Gray Level Co-occurrence Matrix, Canny, Color.
References
J. Laseduw, “Kandungan dan Manfaat Buah Pir untuk Kesehatanâ€, http://www.necturajuice.com, 6 September 2015.
Agmalaro, MA, Kustiyo, A &AR. Akbar,“Identifikasi Tanaman Buah Tropika Berdasarkan Tekstur Permukaan Daun Menggunakan Jaringan Syaraf Tiruanâ€, Jurnal Ilmu Komputer Agri - Informatika, vol. 2, no. 2, pp. 73-82, 2013
D. Savakar, “Identification and Classification of Bulk Fruits Images Using Artificial Neural Networksâ€, International Journal of Engineering and Innovative Technology, vol. 1, no. 3, pp. 36-40, 2012
Danti. A, Madgi, M & Anami, BS, “A Neural Network Based Recognition and Classification of Commonly Used Indian Non Leafy Vegetablesâ€, Modern Education and Computer Science, no. 10, pp. 62-68, 2014
D. Putra, “Pengolahan Citra Digitalâ€, Yogyakarta : Andi Offset, 2010
E. Prasetyo, “Pengolahan Citra Digital dan Aplikasinya Menggunakan Matlabâ€, Yogyakarta : Andi Offset, 2011.
Rashmi, M. Kumar, R. Saxena, “Algorithm and Technique on Various Edge Detection : A Survey, Signal and Image Processing : An International Journal†, vol. 4, no. 3, pp. 65-75, 2013
Downloads
Published
How to Cite
Issue
Section
License
This work is licensed under a Creative Commons Attribution-ShareAlike 4.0 International License.