论文标题
发散规范的编码网络,用于降低关节维度和分类
Divergence Regulated Encoder Network for Joint Dimensionality Reduction and Classification
论文作者
论文摘要
特征表示是基于遥感的图像分类的重要方面。尽管深度卷积神经网络能够有效地合并信息,但大量参数通常使学习的特征难以理解且难以传递到替代模型。为了更好地表示用于遥感图像分类的统计纹理信息,在本文中,我们研究了使用新型直方图神经网络进行关节维度降低和分类。由T-Dimentib的随机邻居嵌入(T-SNE)的动机,我们提出的方法结合了在低维嵌入空间中计算出的分类损失。我们将学习的样品嵌入与T-SNE在分类准确性和定性评估方面发现的坐标进行了比较。我们还探索了T-SNE目标中各种分歧度量的使用。所提出的方法具有多个优点,例如容易嵌入样本外点并降低特征维度,同时保持类别可区分性。我们的结果表明,所提出的方法维持和/或提高了分类性能,并揭示了神经网络产生的特征的特征,这可能有助于其他应用。
Feature representation is an important aspect of remote-sensing based image classification. While deep convolutional neural networks are able to effectively amalgamate information, large numbers of parameters often make learned features inscrutable and difficult to transfer to alternative models. In order to better represent statistical texture information for remote-sensing image classification, in this paper, we investigate performing joint dimensionality reduction and classification using a novel histogram neural network. Motivated by a popular dimensionality reduction approach, t-Distributed Stochastic Neighbor Embedding (t-SNE), our proposed method incorporates a classification loss computed on samples in a low-dimensional embedding space. We compare the learned sample embeddings against coordinates found by t-SNE in terms of classification accuracy and qualitative assessment. We also explore use of various divergence measures in the t-SNE objective. The proposed method has several advantages such as readily embedding out-of-sample points and reducing feature dimensionality while retaining class discriminability. Our results show that the proposed approach maintains and/or improves classification performance and reveals characteristics of features produced by neural networks that may be helpful for other applications.