作者
Shishir Paramathma Rao, Karen Panetta, Sos Agaian
发表日期
2020/5/26
研讨会论文
Mobile Multimedia/Image Processing, Security, and Applications 2020
卷号
11399
页码范围
179-190
出版商
SPIE
简介
Neural networks have emerged to be the most appropriate method for tackling the classification problem for hyperspectral images (HIS). Convolutional neural networks (CNNs), being the current state-of-art for various classification tasks, have some limitations in the context of HSI. These CNN models are very susceptible to overfitting because of 1) lack of availability of training samples, 2) large number of parameters to fine-tune. Furthermore, the learning rates used by CNN must be small to avoid vanishing gradients, and thus the gradient descent takes small steps to converge and slows down the model runtime. To overcome these drawbacks, a novel quaternion based hyperspectral image classification network (QHIC Net) is proposed in this paper. The QHIC Net can model both the local dependencies between the spectral channels of a single-pixel and the global structural relationship describing the edges or …
引用总数
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SP Rao, K Panetta, S Agaian - Mobile Multimedia/Image Processing, Security, and …, 2020