基于叶片形状的卷积神经网络叶片分类

Rizka Zulfani Syahrir, Eri Prasetyo Wibowo
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引用次数: 8

摘要

树的一部分,即长在树枝上的叶子,有几种类型的叶子,由4种形状组成,有圆形的,有细长的,有些甚至是手指形状的。我们经常弄错这些叶子的形状。本研究使用卷积神经网络讨论了基于叶骨形状的叶子分类,卷积神经网络用于对使用其中一种方法(即监督学习)标记的数据进行分类。此方法的目的是将变量分类到已列出的变量中。目标是基于叶片形状对叶片进行分类,实现基于骨骼形状的叶片分类卷积神经网络算法模型,产生一个准确率值。准确度值是通过在训练和试验阶段进行实验获得的。因此,在使用ReLU和Softmax激活时,epoch参数为30,批大小为128,可以得出结论。训练正确率为98.52%,验证正确率为89.06%。
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Classification of Leaves Based on the Shape of Leaves Using Convolutional Neural Network Methods
One part of the tree, namely the leaves, which grow on the branches, has several types of leaves consisting of 4 shapes, ranging from circular shapes, elongated shapes, and some even have a finger shape. Often we mistake the shapes of these leaves. This study discusses the classification of leaves based the shape of the leaf bones using the Convolutional Neural Network, which is used to classify data that has been labeled using one of the methods, namely supervised learning. The purpose of this method is to classify a variable into the variables that have been listed. The goal is to classify leaves based on leaf shape to implement a Convolutional Neural Network algorithm model for leaf classification based on bone shape, which will produce an accuracy value. Accuracy values are obtained from conducting experiments at the training and trial stages. So it can be concluded using the epochs parameter of 30 and a batch size of 128, using ReLU and Softmax activations. The results obtained for the accuracy value for training are 98.52%, while the validation is 89.06%.
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