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Retraction Note: FireXnet: an explainable AI-based tailored deep learning model for wildfire detection on resource-constrained devices

The Original Article was published on 20 September 2023

Retraction Note: Fire Ecology 19, 54 (2023)

https://doi.org/10.1186/s42408-023-00216-0


The Editor-in-Chief has retracted this article. An investigation by the Publisher has found a number of articles, including this one, which share similar concerns, involving but not limited to, irregularities with respect to submission, authorship, and peer review. The Editor-in-Chief therefore no longer has confidence in the results and conclusions presented in this article.

All authors disagree to this retraction.

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Correspondence to Jawad Ahmad.

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Ahmad, K., Khan, M.S., Ahmed, F. et al. Retraction Note: FireXnet: an explainable AI-based tailored deep learning model for wildfire detection on resource-constrained devices. fire ecol 20, 66 (2024). https://doi.org/10.1186/s42408-024-00309-4

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  • DOI: https://doi.org/10.1186/s42408-024-00309-4