Multiscale Spatial-Spectral Feature Extraction Network for Hyperspectral Image Classification
Multiscale Spatial-Spectral Feature Extraction Network for Hyperspectral Image Classification
Blog Article
Convolutional neural networks have garnered increasing interest for the supervised classification of hyperspectral imagery.However, images with a wide variety ofspatial land-cover sizes can hinder the feature-extraction ability of traditional convolutional networks.Consequently, many approaches intended to extract multiscale features have emerged; these techniques typically extract features in multiple parallel branches using convolutions of differing kernel sizes with concatenation or Assessment of the quality of the healing process in experimentally induced skin lesions treated with autologous platelet concentrate associated or unassociated with allogeneic mesenchymal stem cells: preliminary results in a large animal model addition employed to fuse the features resulting from the various branches.In contrast, the present work explores a multiscale spatial-spectral feature-extraction network that operates in a more granular manner.Specifically, in the proposed network, a multibranch structure expands the convolutional receptive fields through the partitioning of input feature maps, applying hierarchical connections across the partitions, crosschannel feature fusion via pointwise convolution, and depthwise LncRNA MCM3AP-AS1 sponges miR-148a to enhance cell invasion and migration in small cell lung cancer three-dimensional (3-D) convolutions for feature extraction.
Experimental results reveal that the proposed multiscale spatial-spectral feature-fusion network outperforms other state-of-the-art networks at the supervised classification of hyperspectral imagery while being robust to limited training data.