2024
DOI: 10.1049/cit2.12278
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AML‐Net: Attention‐based multi‐scale lightweight model for brain tumour segmentation in internet of medical things

Muhammad Zeeshan Aslam,
Basit Raza,
Muhammad Faheem
et al.

Abstract: Brain tumour segmentation employing MRI images is important for disease diagnosis, monitoring, and treatment planning. Till now, many encoder‐decoder architectures have been developed for this purpose, with U‐Net being the most extensively utilised. However, these architectures require a lot of parameters to train and have a semantic gap. Some work tried to make a lightweight model and do channel pruning that made a small receptive field which compromised the accuracy. The authors propose an attention‐based mu… Show more

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