基于强化监督学习算法的珊瑚物种多项分类

Marizel B. Villanueva, Melvin A. Ballera
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引用次数: 1

摘要

监督学习算法可以分为不同的形式,其中一种是分类,其主要目标是预测结构化或非结构化数据的分类类标签。然而,它需要大量的数据集来产生一个好的计算机视觉模型。本研究展示了卷积神经网络(Convolutional Neural Network, CNN)监督学习算法在珊瑚礁物种多项分类中的应用。通过CNN的反向传播过程,模型能够学习到产生准确输出的权值。此外,采用数据增强、再训练、微调和优化等方法,在多类分类中取得了较好的分类效果。对本研究使用的数据集中现有的各种珊瑚礁物种进行9(9)次epoch后,F1 Score和Sensitivity的分类结果为1.0,验证准确率为99.49%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multinomial Classification of Coral Species using Enhanced Supervised Learning Algorithm
A supervised learning algorithm can be categorized into different forms and one of this is classification where the main goal is to predict the categorical class labels of structured or unstructured data. However, it requires large datasets to produce a good computer vision model. This study demonstrates the application of the supervised learning algorithm named Convolutional Neural Network (CNN) in multinomial classification of coral reef species. Through the backpropagation process of CNN, the model is able to learn the weights that yield accurate outputs. Moreover, data augmentation approach, retraining, fine tuning and optimization are used to provide better results in multi-class classification. The classification result in terms of F1 Score and Sensitivity is equal to 1.0 while validation accuracy yields 99.49 percent after nine (9) epochs applied to the various coral reef species available in the dataset used in this study.
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