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Using Deep Learning to Classify Burnt Body Parts Images for Better Burns Diagnosis

机译:利用深度学习来分类烧焦的身体零件图像以便更好地烧伤诊断

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Several deaths occur each year because of burns. Despite advancements in burn care, proper burns diagnosis and treatment of burn patients still remains a major challenge. Automated methods to give an early assessment of the total body surface area (TBSA) burnt and/or the burns depth can be extremely helpful for better burns diagnosis. Researchers are considering the use of visual images of burn patients to develop these automated burns diagnosis methods. As the skin architecture varies across different parts of the body, and so the burn impact on different body parts. So, it is likely that the body part specific visual images based automatic burns diagnosis assessment methods would be more effective than generic visual images based methods. Considering this, we explore this problem of classifying the body part of burn images. To the best of our knowledge, ours is the first attempt to classify burnt body part images. In this work, we consider 4 different burnt body parts: face, hand, back, and inner arm, and we present the effectiveness of independent and dependent deep learning models (using ResNet-50) in classifying the different burnt body parts images.
机译:由于烧伤,每年发生几种死亡。尽管燃烧护理进展,但适当的烧伤诊断和治疗烧伤患者仍然是一个重大挑战。自动化方法给出早期评估总体表面积(TBSA)烧焦和/或烧伤深度对于更好的烧伤诊断可能是非常有帮助的。研究人员正在考虑使用烧伤患者的视觉图像,以开发这些自动烧伤诊断方法。由于皮肤架构在身体的不同部位变化,因此对不同身体部位的烧伤影响。因此,很可能是基于身体部分的自动烧伤的自动烧伤诊断评估方法比基于通用的视觉图像的方法更有效。考虑到这一点,我们探讨了对烧伤图像的身体部分分类的这个问题。据我们所知,我们的首次尝试分类烧焦的身体部位图像。在这项工作中,我们考虑了4种不同的烧焦身体部位:面部,手,背部和内部臂,我们呈现了独立和依赖性深度学习模型(使用Reset-50)在分类不同烧焦的身体零件图像中的有效性。

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