Parameter-Free Attention Network for Spectral–Spatial Hyperspectral Image Classification
Mercedes E. Paoletti, Xuanwen Tao, Lirong Han, Zhaoyue Wu, Sergio Moreno‐Álvarez, Swalpa Kumar Roy, Antonio Plaza, Juan M. Haut
Abstract
Hyperspectral images (HSIs) comprise plenty of information in the spatial and spectral domain, which is highly beneficial for performing classification tasks in a very accurate way. Recently, attention mechanisms have been widely used in HSI classification due to their ability to extract relevant spatial and spectral features. Notwithstanding their positive results, most of the attentional strategies usually introduce a significant number of parameters to be trained, making the models more complex and increasing the computational load. In this paper, we develop a new parameter-free attention network for HSI classification. The main advantage of our model is that it does not add parameters to the original network (as opposed to other state-of-the-art approaches), whilst providing higher classification accuracies. Extensive experimental validations and quantitative comparisons are conducted –using different benchmark HSIs– to illustrate these advantages. Code is available on https://github.com/mhaut/Free2Resnet.