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Median-Pooling Grad-CAM: An Efficient Inference Level Visual Explanation for CNN Networks in Remote Sensing Image Classification

  • 2021
  • OriginalPaper
  • Chapter
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Abstract

The chapter delves into the challenges of interpreting deep learning models, particularly in remote sensing image classification. It introduces Median-Pooling Grad-CAM, a method that enhances the localization of objects in saliency maps while maintaining computational efficiency. Additionally, it proposes a new metric, confidence drop %, to evaluate the precision of visual explanations. The chapter also compares Median-Pooling Grad-CAM with other state-of-the-art techniques, demonstrating its effectiveness through extensive experiments on various datasets and CNN models. This work aims to advance the field of visual explanation methods for deep learning models, making them more interpretable and reliable.

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Title
Median-Pooling Grad-CAM: An Efficient Inference Level Visual Explanation for CNN Networks in Remote Sensing Image Classification
Authors
Wei Song
Shuyuan Dai
Dongmei Huang
Jinling Song
Liotta Antonio
Copyright Year
2021
DOI
https://doi.org/10.1007/978-3-030-67835-7_12
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