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Affinity Workshop: Tiny Papers Oral Session 4

A Shared Encoder for Multi-Source Hyperspectral Images

Weili Kong · Baisen Liu · Xiaojun Bi · Jiaming Pei


Abstract:

Multi-source hyperspectral images(HSIs) which captured from diverse sensors commonly possess varying bands.When employing deep learning techniques for their processing, individual models are necessitated for each source due to the disparate dimensions.To tackle this problem, we propose a shared encoder to project all HSIs into a unified feature space.It establishes a general framework for the representation of multi-source HSIs, providing foundational conditions for the development of a universal HSI analysis model.

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