2019
DOI: 10.26594/register.v6i1.1602
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Butterfly identification using gray level co-occurrence matrix (glcm) extraction feature and k-nearest neighbor (knn) classification

Abstract: Gita Persada Butterfly Park is the only breeding of engineered in situ butterflies in Indonesia. It is located in Lampung and has approximately 211 species of breeding butterflies. Each species of Butterflies has a different texture on its wings. The Limited ability of the human eye to distinguishing typical textures on butterfly species is the reason for conducting a research on butterfly identification based on pattern recognition. The dataset consists of 600 images of butterfly’s upper wing from six species… Show more

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Cited by 17 publications
(8 citation statements)
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“…The next stage starts with building the K-Nearest Neighbor model. For the first step of modeling testing, the author wants to create a K-Nearest Neighbor model using the default parameters of the KneighborsClassifier [21]. In this study, the value of k that will be built based on the default result is 5.…”
Section: K-nearest Neighbor Algorithm Experiments Resultsmentioning
confidence: 99%
“…The next stage starts with building the K-Nearest Neighbor model. For the first step of modeling testing, the author wants to create a K-Nearest Neighbor model using the default parameters of the KneighborsClassifier [21]. In this study, the value of k that will be built based on the default result is 5.…”
Section: K-nearest Neighbor Algorithm Experiments Resultsmentioning
confidence: 99%
“…Furthermore, research on the classification of tomato maturity using K-Nearest Neighbor which produces the highest level of accuracy reaches 92.5% with the k parameter used as many as 3 (Sanjaya, Pura, Gusti, Yanto, & Syafria, 2019). Another study, regarding the classification of butterfly species with the KNN algorithm, which produces the highest accuracy rate of 91.1% (Andrian, Maharani, Muhammad, & Junaidi, 2020). There is also a research on the application of KNN to image classification in medicinal plant classification which is focused on the shape features of the plant (Ionel-bujorel, Ancuceanu, Enache, & Vasilăţeanu, 2017).…”
Section: Literature Reviewmentioning
confidence: 99%
“…Selanjutnya penelitian klasifikasi kematangan tomat menggunakan KNN yang menghasilkan tingkat akurasi tertinggi mencapai 92,5% [13]. Penelitian lain, mengenai klasifikasi jenis kupu-kupu dengan algoritma KNN, yang menghasilkan tingkat akurasi tertinggi yaitu 91,1% [14]. Akan Tetapi dari penelitian sebelumnya menunjukkan bahwa KNN mengalami kesulitan untuk melakukan klasifikasi objek yang sejenis [15].…”
Section: Pendahuluanunclassified