4.7 Article

A Spatial-Channel Collaborative Attention Network for Enhancement of Multiresolution Classification

Journal

REMOTE SENSING
Volume 13, Issue 1, Pages -

Publisher

MDPI
DOI: 10.3390/rs13010106

Keywords

deep learning; multiresolution classification; sample enhancement; feature enhancement; attention mechanism; remote sensing images

Funding

  1. State Key Program of National Natural Science of China [61836009]
  2. National Natural Science Foundation of China [U1701267, 61671350, 62006179]
  3. China Postdoctoral Science [2020T130492]
  4. China Postdoctoral Science Foundation [2019M663634]

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This study introduces a dual-branch interactive spatial-channel collaborative attention enhancement network (SCCA-net) for multiresolution remote sensing classification, utilizing deep learning techniques. Through strategies like ANTSS and modules like LSA-module and GCA-module, the method effectively enhances classification accuracy by combining sample enhancement and feature enhancement. Quantitative and qualitative experimental results confirm the robustness and effectiveness of the approach.
Recently, with the popularity of space-borne earth satellites, the resolution of high-resolution panchromatic (PAN) and multispectral (MS) remote sensing images is also increasing year by year, multiresolution remote sensing classification has become a research hotspot. In this paper, from the perspective of deep learning, we design a dual-branch interactive spatial-channel collaborative attention enhancement network (SCCA-net) for multiresolution classification. It aims to combine sample enhancement and feature enhancement to improve classification accuracy. In the part of sample enhancement, we propose an adaptive neighbourhood transfer sampling strategy (ANTSS). Different from the traditional pixel-centric sampling strategy with orthogonal sampling angle, our algorithm allows each patch to adaptively transfer the neighbourhood range by finding the homogeneous region of the pixel to be classified. And it also adaptively adjust the sampling angle according to the texture distribution of the homogeneous region to capture neighbourhood information that is more conducive for classification. Moreover, in the part of feature enhancement part, we design a local spatial attention module (LSA-module) for PAN data to highlight the spatial resolution advantages and a global channel attention module (GCA-module) for MS data to improve the multi-channel representation. It not only highlights the spatial resolution advantage of PAN data and the multi-channel advantage of MS data, but also improves the difference between features through the interaction between the two modules. Quantitative and qualitative experimental results verify the robustness and effectiveness of the method.

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