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Determining Philippine coconut maturity level using machine learning algorithms based on acoustic signal

机译:基于声学信号的机器学习算法确定菲律宾椰子成熟度

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摘要

Advanced intelligent systems are becoming significant to many sectors, including farming. In agriculture, the intelligent classification of post-harvested fruits seems to have a direct impact on farmers, mainly for export products. Unlike other popular fruits, coconuts tend to have limited studies due to its tropical nature grown in developing countries as well as its unique physical structure. In this study, a classification of real coconut datasets is performed based on acoustic signals acquired through a developed tapping system and learned by three widely-used machine learning techniques - artificial neural network (ANN), random forest (RF) and support vector machine (SVM). There are 129 coconuts samples, each classified into three maturity levels - pre-mature, mature, and over-mature. A three-second tapping system gathered from each sample a total of 132,300 data points, which underwent noise reduction and signal processing. Each machine learning model predicts the class of the fruit by learning the patterns of the transformed frequency spectrums of each sample signal. Based on ten times cross-validated results, the three machine learning algorithms satisfactorily predicted the maturity level of coconuts with at least 80% classification accuracy. All models correctly predicted over-mature coconuts but confused in classifying pre-mature with mature and mature with over-mature coconuts. RF model outperformed the other models with efficiencies of 90.98% and 83.48% accuracies for training and testing, respectively. The imbalance data for each coconut class can be addressed to give better results. Additionally, the prepared coconut dataset may use more advanced deep learning techniques.
机译:高级智能系统对许多部门变得重要意义,包括农业。在农业中,收获后果的智能分类似乎对农民产生了直接影响,主要用于出口产品。与其他流行的水果不同,由于其在发展中国家种植的热带性以及其独特的物理结构,椰子倾向于具有有限的研究。在本研究中,基于通过开发的攻丝系统获取的声学信号来执行真实椰子数据集的分类,并通过三种广泛使用的机器学习技术 - 人工神经网络(ANN),随机森林(RF)和支持向量机( SVM)。有129个椰子样品,每个椰子样品分为三个成熟度水平 - 成熟,成熟和过度成熟。从每个样品聚集的三秒间攻丝系统总共收集了总共132,300个数据点,经历了降噪和信号处理。每种机器学习模型通过学习每个样本信号的变换频谱的模式来预测水果的类。基于十次交叉验证结果,三种机器学习算法令人满意地预测了至少80%的分类准确度的椰子的成熟度水平。所有型号都正确预测了过度成熟的椰子,但在分类成熟和成熟的成熟前和成熟的成熟中有混淆。 RF模型的表现优于其他模型,效率分别为90.98%和83.48%的培训和测试的准确性。可以解决每个椰子类的不平衡数据以提供更好的结果。另外,准备好的椰子数据集可以使用更先进的深度学习技术。

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