用峰谷法重新定义烧伤嫁接图像复原。

B P Pradeep Kumar, E Naresh, A Ashwitha, Kadiri Thirupal Reddy, N N Srinidhi
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引用次数: 0

摘要

烧伤是一项重大的公共卫生挑战,往往需要医疗专业人员的专门知识进行诊断。然而,在没有专门设施的情况下,自动烧伤评估工具的效用变得明显。诸如烧伤面积、深度和位置等因素在决定烧伤严重程度方面起着关键作用。在这项研究中,我们提出了一个烧伤诊断的分类模型,利用自动机器学习技术。我们的方法包括一个图像复原系统,该系统结合了峰谷算法,确保在始终如一地提供高质量结果的同时去除噪声。通过使用偏度和峰度,我们证明了诊断准确性的实质性提高。我们提出的系统使用峰谷变换从增强的嫁接样本中获取关键特征,使bq的计算和独特的bin分析能够增强图像复原。我们的实验结果显示了效率的提高,特别是在14张匹配图像上增强了移植物样本的匹配特征。预期的工作包括创建一个燃烧分类回收模型。该方法采用支持向量机(SVM)。该模型的评估将使用未经训练的目录进行,特别侧重于其在回收需要移植的图像并将其与不需要移植的图像区分开来方面的有效性。我们的方法有望在紧急情况下移植样本回收,从而加快对急性烧伤的更准确的诊断和治疗。这项工作具有挽救生命和改善烧伤创伤患者结局的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The Burn Grafting Image Reclamation Redefined with the Peak-Valley Approach.

Burn injuries constitute a significant public health challenge, often necessitating the expertise of medical professionals for diagnosis. However, in scenarios where specialized facilities are unavailable, the utility of automated burn assessment tools becomes evident. Factors such as burn area, depth, and location play a pivotal role in determining burn severity. In this study, we present a classification model for burn diagnosis, leveraging automated machine learning techniques. Our approach includes an image reclamation system that incorporates the peak and valley algorithm, ensuring the removal of noise while consistently delivering high-quality results. By using skewness and kurtosis, we demonstrate substantial improvements in diagnostic accuracy. Our proposed system sources key features from enhanced grafting samples using peak valley transformation, enabling the computation of BQs and a unique bin analysis to enhance image reclamation. Our experimental results highlight efficiency gains, notably growing the matching features of graft samples for 14 matching images. The intended work involves the creation of a burn classification reclamation model. The proposed approach utilizes a support vector machine (SVM). The evaluation of the model will be conducted using an untrained catalogue, with a specific focus on its effectiveness in reclaiming images that necessitate grafts and distinguishing them from those that do not. Our approach holds promise in grafting sample reclamation in emergency settings, thereby expediting more accurate diagnoses and treatments for acute burn injuries. This work has the latent to save lives and improve patient upshots in burn traumas.

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