用于香蕉成熟阶段检测的径向基神经网络:感知器多层网络比较

A. Bonini Neto, Vitória Ferreira da Silva Fávaro, Wesley Prado Leão dos Santos, Jéssica Marques de Mello, Angela Vacaro de Souza
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引用次数: 0

摘要

农业是人类生存的支柱之一,因为它允许在粮食生产过程中获得粮食和其他产品。在这方面,有些作物,如更年期水果,面临着困难,尤其是在收获时对其成熟阶段的分类方面,这就是本工作的重点香蕉。因此,有一些技术使用人工神经网络对其进行分类,例如多层网络。这类网络的例子有在几个领域广泛使用的感知器和径向基函数网络(RBF),其研究尚处于起步阶段,在农业领域几乎没有使用。因此,本工作的目的是在这两种神经网络之间进行比较,以验证哪种网络提供了最高的精度。在这项工作中,可以验证径向基函数神经网络为香蕉成熟阶段提供了更快、更有效的分类,因为与多层感知器相比,它们不需要训练,因此计算成本低,节省了更多的能量。因此,可以推断,径向基函数人工神经网络(RBF ANN)可以在农业中广泛应用,能够改善不同的文化和不同的工艺,例如收割。
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Radial base neural network for the detection of banana maturation stages: perceptron multilayer network comparison
Agriculture is one of the pillars of human existence since it allows for the obtention of food as well as other products for food production processes. In this regard, there are some crops, such as climactic fruits, that face difficulties especially regarding classification of their maturation stages at the time of harvest, which is the case of bananas, the focus of this work. Therefore, there are some techniques that use artificial neural networks to classify them, such as multilayer networks. Examples of such networks are Perceptron, widely used in several areas, and Radial Base Functional networks (RBF), whose studies are incipient and have little use in agricultural areas. Hence, the objective of the present work was to carry out a comparison between these two neural networks to verify which provides the highest accuracy. In this work it was possible to verify that radial base functional neural networks provide a faster and more efficient categorization for the stages of bananas maturation, because they do not require training and, therefore, have low computational cost, saving more energy, when compared to a Multilayer Perceptron. Therefore, it can be inferred that Radial Base Functional Artificial Neural Networks (RBF ANN) can be widely used in agriculture, enabling the improvement of different cultures and different processes, such as harvesting.
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