深度细菌:有限细菌菌落数据集的鲁棒深度学习数据增强设计

Nour Eldeen M. Khalifa, M. Taha, A. Hassanien, A. Hemedan
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引用次数: 29

摘要

菌落分类是微生物学中的一个重要问题。随着计算机辅助软件的进步,在过去的十年中,类似的问题已经以一种快速而准确的方式得到了解决。本文将采用深度神经网络架构来解决菌落分类问题。此外,还将介绍依赖于大量使用数据增强的训练和测试策略。使用的数据集是有限的,因为它包含33类细菌菌落的660张图像。任何神经网络都不能直接从这些数据中学习,并且在学习的情况下神经网络会过拟合。所采用的培训和测试策略导致了培训和测试阶段的显著改进。它将训练阶段的数据集图像增加到6600张,验证阶段的数据集图像增加到5940张。采用增强技术的神经网络测试准确率达到98.22%。给出了对比结果,并与其他相关工作的测试精度进行了比较。所提出的体系结构在测试精度方面优于其他相关工作。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep bacteria: robust deep learning data augmentation design for limited bacterial colony dataset
Bacterial colony classification is an important problem in microbiology. With the advances in computer-aided software's, similar problems have been solved in a speedy and accurate manner during the last decade. In this paper, deep neural network architecture will be presented to solve the bacterial colony classification problem. In addition, the training and testing strategy that relies on the strong use of data augmentation will be introduced. The used dataset was limited as it contains 660 images for 33 classes of a bacterial colony. Any neural network cannot learn from this data directly and in case of learning the neural network will overfit. The adopted training and testing strategy lead to a significant improvement in the training and testing phases. It raised the dataset images to 6,600 images for the training phase and 5,940 images for verification phase. The proposed neural network with the adopted augmentation techniques achieved 98.22% in testing accuracy. A comparative result is presented, and the testing accuracy was compared with those of other related works. The proposed architecture outperformed the other related works in terms of its testing accuracy.
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