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Interpreting Image Super-Resolution in Artificial Neural Networks from Global and Local Views
Conference proceeding   Peer reviewed

Interpreting Image Super-Resolution in Artificial Neural Networks from Global and Local Views

Xiaochen Liu, A Jacob, W Song and Antonio Liotta
2024 Fifth International Conference on Intelligent Data Science Technologies and Applications (IDSTA), pp.129-136
International Conference on Intelligent Data Science Technologies and Applications (IDSTA2024) (Dubrovnik, 24/09/2024–26/09/2024)
2024
Handle:
https://hdl.handle.net/10863/51234

Abstract

Explainable AI super-resolution data interpretation Deep learning
Work on image super-resolution (SR), to construct higher-resolution images starting from low-quality ones, has focused primarily on reconstruction algorithms and specific application domains. In this work, we aim at methods to aid interpreting SR inner-working, with a view to improve explain-ability. We propose a novel gradient-based attribution approach, to provide interpretations from global and local perspectives, dubbed glocal attribution map (GL-AM). After verification with five different SR models, we show that GL-AM: (1) is a powerful tool to understand the principles of SR networks from both global and local views; (2) provides the consensus and variation sensitivity of different models to the input; (3) is more effective to emphasize the features captured by the attention mechanism (for the SR model) through feature re-calibration; (4) is more computationally efficient and more effective as the region of interest increases.
url
https://doi.org/10.1109/IDSTA62194.2024.10746988View

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