2023
DOI: 10.3934/mbe.2023445
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GL-FusionNet: Fusing global and local features to classify deep and superficial partial thickness burn

Abstract: <abstract><p>Burns constitute one of the most common injuries in the world, and they can be very painful for the patient. Especially in the judgment of superficial partial thickness burns and deep partial thickness burns, many inexperienced clinicians are easily confused. Therefore, in order to make burn depth classification automated as well as accurate, we have introduced the deep learning method. This methodology uses a U-Net to segment burn wounds. On this basis, a new thickness burn classifica… Show more

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