作者
Dipen Saini, Rahul Malik, Rachit Garg, Mohammad Khalid Imam Rahmani, Md Ezaz Ahmed, Deepak Prashar, Sudan Jha, Jabeen Nazeer, Sultan Ahmad
发表日期
2023/5/5
期刊
IEEE Access
卷号
11
页码范围
47781-47793
出版商
IEEE
简介
The augmentation of hyperspectral images requires the design of high-density feature analysis & band-fusion models that can generate multimodal imagery from limited information sets. The feature analysis models use deep learning operations to maximize inter-class variance while minimizing inter-class variance levels for efficient classification operations. When combined with intelligent band-fusion methods, such models allow the augmentation model to enhance its classification efficiency under different use cases. Existing band-fusion-based augmentation models for hyperspectral images do not incorporate continuous efficiency enhancements and showcase higher complexity levels. Furthermore, these models can’t be scaled for more varied use cases because their use is restricted to specific image types. To overcome these issues, we designed a novel multimodal hybrid bioinspired model for the …
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