2006 4th Student Conference on Research and Development 2006
DOI: 10.1109/scored.2006.4339325
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Classification for the Ripeness of Papayas Using Artificial Neural Network (ANN) and Threshold Rule

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Cited by 11 publications
(9 citation statements)
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“…Image classification has been done by taking out various datasets of rice seed varieties [11] or any other seeds of crops like almonds [7], maize and wheat. H. Saad and A. Hussain [5] proposed model for checking the ripeness of papayas which are mature, over-mature or immature using the artificial neural network as well as threshold rule but accuracy shows more while using neural networks rather than threshold rule. Neural network toolbox of some MATLAB version to be used in order to classify it.…”
Section: Related Workmentioning
confidence: 99%
“…Image classification has been done by taking out various datasets of rice seed varieties [11] or any other seeds of crops like almonds [7], maize and wheat. H. Saad and A. Hussain [5] proposed model for checking the ripeness of papayas which are mature, over-mature or immature using the artificial neural network as well as threshold rule but accuracy shows more while using neural networks rather than threshold rule. Neural network toolbox of some MATLAB version to be used in order to classify it.…”
Section: Related Workmentioning
confidence: 99%
“…The recognition rate obtained from their experiment using these three network structure are 91.7, 91.45, and 94.75% respectively. Saad and Hussain () also proposed a grading system for papayas using neural network and threshold concept. In this work, he applied preprocessing methods to the sample, methods such as edge detection, grayscale to RGB and masking were also applied to the samples.…”
Section: Related Workmentioning
confidence: 99%
“…Dalam [4] menerapkan teknologi pengolahan citra digital dan jaringan saraf tiruan untuk mengidentifikasi mutu fisik biji pala (Myristica fragrans houtt), pengujian fisik biji pala dilakukan secara non-destruktif meliputi warna, bentuk dan tekstur, kemudian keluaran adalah kelas mutu biji pala yang terdiri dari mutu ABC, mutu rimpel, dan mutu BWP. Penelitan [5] menggunakan jaringan saraf tiruan dan threshold rule untuk klasifikasi kematangan buah pepaya ke dalam tiga kategori yaitu pepaya belum matang, matang sedang, dan matang berdasarkan pada ratarata nilai RGB (red, green, blue). Penelitian [6] melakukan perancangan dan konstruksi mesin sortasi dengan sensor kamera CCD sebagai sensor citra dan unit pengolahannya untuk melakukan evaluasi pemutuan buah jeruk.…”
Section: Pendahuluanunclassified