Remote Sensing Image Scene Classification Based on Densely Connected Multilayer Kernel ELM

X. Jiang, T. Yan, Q. Xu, B. He, Haiping Du, Weihua Li
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引用次数: 3

Abstract

The remote sensing images are captured by high-altitude satellites, and the coverage of each image scene is relatively large. It tends to have large intraclass differences and small differences between classes. Using conventional Hierarchical ELM (H-ELM) and multilayer kernel ELM (ML-KELM) to classify remote sensing image scenes, the network structure of the learning model is deep and the parameters are many. This leads to long training time and large memory consumption. In order to solve this problem, based on the ML-KELM, this paper proposes a densely connected kernel ELM (Dense-KELM) learning model, which is used to classify remote sensing image scenes. Experimental results show that at the same model depth, the Dense-KELM model has higher classification accuracy in remote sensing image scenes than the H-ELM and the ML-KELM. Its training time is slightly larger than the ML-KELM but much smaller than the H-ELM. This densely connected learning model can extract high-level features of remote sensing images more effectively, represent the details between remote sensing scenes, and improve the classification accuracy of remote sensing image scenes. Moreover, the densely connected network structure can effectively reduce the number of parameters of the depth model, improve the training speed of the model, and save the storage space of the model.
基于密集连接多层核ELM的遥感图像场景分类
遥感图像是由高空卫星捕获的,每个图像场景的覆盖范围比较大。它往往有较大的类内差异和较小的类间差异。采用传统的层次ELM (H-ELM)和多层核ELM (ML-KELM)对遥感图像场景进行分类,学习模型的网络结构深度大,参数多。这导致训练时间长,内存消耗大。为了解决这一问题,本文在ML-KELM的基础上,提出了一种密集连接核ELM (Dense-KELM)学习模型,用于遥感图像场景的分类。实验结果表明,在相同模型深度下,Dense-KELM模型在遥感影像场景中的分类精度高于H-ELM和ML-KELM。它的训练时间比ML-KELM略大,但比H-ELM小得多。这种密集连接的学习模型可以更有效地提取遥感图像的高级特征,代表遥感场景之间的细节,提高遥感图像场景的分类精度。此外,密集连接的网络结构可以有效减少深度模型的参数数量,提高模型的训练速度,节省模型的存储空间。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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