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Automated Classification of Watermelon Quality Using Non-flicking Reduction and HMM Sequences Derived from Flicking Sound Characteristics

机译:使用非滑动减少和源自滑动声音特性的HMM序列对西瓜质量进行自动分类

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摘要

It is challenging for buyers around the globe to identify good quality fruit. For several kinds of fruit, it may be difficult for buyers to determine the fruit quality by appearance. The ability to select only good quality fruit without cutting or cleaving is useful because buyers will not waste money ordering undesirable fruit. To decrease the chances of buyers purchasing sub-standard watermelons, a method that automatically classifies watermelon quality using flicking sounds is proposed. First, preprocessing was used to reduce the non-flicking parts of the signals. Then, Mel Frequency Cepstral Coefficients (MFCCs) and delta accelerator coefficients were extracted from the flicking signals. Finally, the extracted features were recognized by sequences of Hidden Markov acoustic models derived from the characteristics of good and bad flicking sounds. In the experiments, average quality classification rates of 95.0%, 97.0%, 98.0%, 98.0% and 98.0% are obtained by using one to five flicks, respectively. The average computation time spent on one to five flicks is 31.25, 46.02, 63.07, 79.92 and 98.74 milliseconds, respectively. Based on the obtained classification rates and the computation time, the results indicate that the proposed automated method is very efficient and even better at determining watermelon quality than humans are.
机译:对于全球买家来说,要鉴定优质水果是一项挑战。对于几种水果,购买者可能难以通过外观确定水果质量。仅选择优质水果而不进行切割或切割的能力很有用,因为买家不会浪费金钱订购不想要的水果。为了减少购买者购买不合格西瓜的机会,提出了一种使用轻弹声对西瓜质量进行自动分类的方法。首先,使用预处理来减少信号的非闪烁部分。然后,从轻拂信号中提取梅尔频率倒谱系数(MFCC)和增量加速器系数。最终,提取的特征被隐式马尔可夫声学模型序列识别,该隐马尔可夫声学模型从好和坏轻弹声的特征中得出。在实验中,通过使用一到五次轻弹,分别获得95.0%,97.0%,98.0%,98.0%和98.0%的平均质量分类率。一到五次轻拂所花费的平均计算时间分别为31.25、46.02、63.07、79.92和98.74毫秒。根据获得的分类率和计算时间,结果表明,所提出的自动化方法非常有效,甚至在确定西瓜质量上也比人类更好。

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