Abdullah, Ziaullh Khan, W. Mumtaz, A. Mumtaz, Subrata Bhattacharjee, Hee-Cheol Kim
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引用次数: 5
摘要
藻类的生长是一个自然过程,浓度的急剧增加对水体和其他生物都有不良影响。采用传统方法对藻类进行监测和分类是一项繁琐而耗时的工作。替代方法的可靠和健壮的开发对于完成这些任务至关重要,然而,先进的机器学习,计算机视觉和深度学习被过度地用于解决这个问题。在本文中,我们使用了迁移学习技术,其中使用各种预训练模型在我们的自定义数据集上进行训练。我们进行了一系列实验,对有害藻华(HAB)进行分类。此外,我们在我们独特的数据集上比较了每个预训练架构的性能。由于迁移学习模型需要更多的数据来训练,我们使用直接生成对抗网络(Dc-GAN)来增加数据量。在这项工作中,使用了四种流行的预训练模型,即VGG-16, Alex Net, Google Net和ResNet-18。其中,ResNet-18模型表现较好,准确率最高,达到97.10%。迁移学习模型方法将是对藻华事件进行快速操作响应的有效工具。实验结果表明,迁移学习方法对藻类的检测和分类更加有效和可靠。
Multiclass-Classification of Algae using Dc-GAN and Transfer Learning
The growth of algae is a natural process and highly increase in concentration has a bad impact on water bodies as well as other creatures. The monitoring and classification of algae by using the traditional method is a tedious and time-consuming task. The reliable and robust development of the alternative method is crucial to do these tasks, however, advanced machine learning, computer vision, and deep learning are excessively used to address this problem. In this paper, we have used the transfer learning technique, in which various pre-train models are used to train on our custom dataset. We conducted a series of experiments to classify genera of harmful algae bloom (HAB). Furthermore, we compare each pre-train architecture performance on our unique dataset. As the transfer learning model needs more data to train it, we used a direct generative adversarial network (Dc-GAN) to enhance the quantity of data. In this work the four popular pre-train models are used, namely, VGG-16, Alex Net, Google Net, and ResNet-18. Among these, the ResNet-18 model performed well with the highest accuracy of 97.10%. The transfer learning model approach would be an effective tool for rapid operational response to algae bloom events. The experimental results show that the transfer learning method is more effective and reliable to detect and classify algae.