Image classification has achieved unprecedented advance with the the rapid development of deep learning. However, the classification of tiny object images is still not well investigated. In this paper, we first briefly review the development of Convolutional Neural Network and Visual Transformer in deep learning, and introduce the sources and development of conventional noises and adversarial attacks. Then we use various models of Convolutional Neural Network and Visual Transformer to conduct a series of experiments on the image dataset of tiny objects (sperms and impurities), and compare various evaluation metrics in the experimental results to obtain a model with stable performance. Finally, we discuss the problems in the classification of tiny objects and make a prospect for the classification of tiny objects in the future.
翻译:随着深层学习的迅速发展,图像分类取得了前所未有的进展,然而,微小物体图像的分类仍然没有得到很好地调查。在本文中,我们首先简要回顾深层学习的进化神经网络和视觉变异器的发展,并介绍传统噪音和对抗性攻击的来源和发展。然后,我们利用各种进化神经网络和视觉变异器模型进行一系列小物体(孔径和杂质)图像数据集的实验,比较实验结果中的各种评价指标,以获得具有稳定性能的模型。最后,我们讨论了微小物体分类方面的问题,并为今后微小物体分类提供了前景。