论文标题
在2D嵌入式空间中基于标签传播的半监督深度学习
Semi-supervised deep learning based on label propagation in a 2D embedded space
论文作者
论文摘要
虽然卷积神经网络需要大量标记的集合来培训图像,但人类对此类数据集的专家监督可能非常费力。拟议的解决方案将标签从一小群监督图像到一组无监督的图像传播标签,以获取足够的真正和明显标记的样品以训练深层神经网络模型。但是,这些解决方案需要许多监督图像进行验证。我们提出了一个循环,其中深度神经网络(VGG-16)是通过沿迭代术的序列进行训练的,该循环沿迭代术,使用T-SNE将其最后一个最大式层的特征投射到2D嵌入式空间中,其中使用Optimum-Path sem-path sem-sem-Semuperversedsuperversefier进行了标签。随着标记的集合沿迭代的改善,它改善了神经网络的功能。我们表明,这可以显着改善三个私人充满挑战数据集和两个公共数据集的测试数据(仅使用1 \%至5 \%)的分类结果。
While convolutional neural networks need large labeled sets for training images, expert human supervision of such datasets can be very laborious. Proposed solutions propagate labels from a small set of supervised images to a large set of unsupervised ones to obtain sufficient truly-and-artificially labeled samples to train a deep neural network model. Yet, such solutions need many supervised images for validation. We present a loop in which a deep neural network (VGG-16) is trained from a set with more correctly labeled samples along iterations, created by using t-SNE to project the features of its last max-pooling layer into a 2D embedded space in which labels are propagated using the Optimum-Path Forest semi-supervised classifier. As the labeled set improves along iterations, it improves the features of the neural network. We show that this can significantly improve classification results on test data (using only 1\% to 5\% of supervised samples) of three private challenging datasets and two public ones.