Classification of chestnuts according to moisture levels using impact sound analysis and machine learning
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Date
2018-12
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Springer
Abstract
In this study, a prototype system was designed, built and tested to classify chestnuts using impact sound signals and machine learning methods according to moisture contents. Briefly, the system consisted of a shotgun microphone, a sliding platform, an impact surface, a triggering system, a sound device and a computer. Sound signal data were acquired from 2028 chestnut samples with three different moisture levels. Acoustic signals from chestnut samples were filtered to alleviate negative effects of unwanted noise. Four machine learning classifiers using three different feature sets obtained from two feature groups applying feature reduction methods were trained and tested to classify pairs of chestnut moisture group categories as 35% versus 45%, 35% versus 55%, 45% versus 55% (classification with two outputs) and 35% versus 45% versus 55% (classification with three outputs), respectively. The highest classification success (88%) was achieved for the classification application category of 35 versus 55%.
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Keywords
Food science & technology, Chestnut classification, Moisture level, Impact acoustics, Machine learning, Pistachio nuts, Selection, Recognition, Performance, Quality, Acoustic waves, Artificial intelligence, Fruits, Moisture, Moisture determination, Acoustic signals, Feature groups, Feature reduction, Prototype system, Machine learning methods;, Triggering systems, Learning systems
Citation
Kurtulmuş, F. vd. (2018). ''Classification of chestnuts according to moisture levels using impact sound analysis and machine learning''. Journal of Food Measurement and Characterization, 12(4), 2819-2834.