关于PI-Net深度学习模型的图像分类

Abdellah Haddad, B. A. El Majd, D. Bennis
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引用次数: 0

摘要

在本文中,我们讨论了论文“PINet:一种提取拓扑持久性图像的深度学习方法”的实验部分,其中Som等人在Cifar10数据集上训练了一个名为AlexNet的基本分类模型,获得了80%的准确率。然后,他们将pi特征与AlexNet基础特征连接起来,并再次训练模型,以获得约81%的准确率。在这里,我们对PI-Net体系结构进行了轻微的修改。即,我们在模型的最后增加两个密集层,第一个层有1024个ReLu激活的神经元,最后一个层有10个Softmax激活的神经元,然后我们将其作为Cifar10数据集上的基本分类模型。这使我们能够达到82%的准确率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
On PI-Net deep learning model for classification of images
In this note we discuss the experiment part of the paper “PINet: A Deep Learning Approach to Extract Topological Persistence Images”, where Som et al. trained a base classification model called AlexNet on Cifar10 dataset to get an accuracy of 80%. Then, they concatenated the PIs features with AlexNet base features and trained the model once again to get an accuracy of around 81%. Here we give a slight modification of the PI-Net architecture. Namely, we add two dense layers at the end of the model, the first one has 1024 neurons with ReLu activation and the last one has 10 neurons with Softmax activation, and then we use it as a base classification model on Cifar10 dataset. This enables us to reach an accuracy of 82%.
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