Advances in deep learning-based image segmentation,classification and detection of skin burn and scald wounds
Burns and scalds are common causes of skin damage and injuries,and requiring significant attention.Traditionally,the assessment of burns relied on the clinical experience of burn specialists,making it challenging to accurately evaluate the depth and severity of different wounds.Factors like lighting and wound contamination could lead to assessment biases.In recent years,the importance of deep learning based on machine language in the precise evaluation of burn and scald wounds has gradually increased.This article reviews the progress made by scholars over the past few years in using deep learning for the automated diagnosis of burn and scald wounds,focusing on three key areas:wound image segmentation,classification,and detection.It summarizes and categorizes the application of different deep learning techniques in these areas,further explores the challenges faced in automated diagnosis of burn and scald wounds using deep learning,and looks forward to its future application prospects.
BurnsDeep learningImage segmentationImage classification and detection