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Proceedings ArticleDOI

Automatic segmentation and degree identification in burn color images

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TLDR
The aim of this work is to develop an automatic system with the ability of providing the first assessment to burn injury from burn color images by identifying degree of the burn through segmentation and degree of burn identification.
Abstract
When burn injury occurs, the most important step is to provide treatment to the injury immediately by identifying degree of the burn which can only be diagnosed by specialists. However, specialists for burn trauma are still inadequate for some local hospitals. Hence, the invention of an automatic system that is able to help evaluating the burn would be extremely beneficial to those hospitals. The aim of this work is to develop an automatic system with the ability of providing the first assessment to burn injury from burn color images. The method used in this work can be divided into 2 parts, i.e., burn image segmentation and degree of burn identification. Burn image segmentation employs the Cr-transformation, Luv-transformation and fuzzy c-means clustering technique to separate the burn wound area from healthy skin and then mathematical morphology is applied to reduce segmentation errors. The segmentation algorithm performance is evaluated by the positive predictive value (PPV) and the sensitivity (S). Burn degree identification uses h-transformation and texture analysis to extract feature vectors and the support vector machine (SVM) is applied to identify the degree of burn. The classification results are compared with that of Bayes and K-nearest neighbor classifiers. The experimental results show that our proposed segmentation algorithm yields good results for the burn color images. The PPV and S are about 0.92 and 0.84, respectively. Degree of burn identification experiments show that SVM yields the best results of 89.29 % correct classification on the validation sets of the 4-fold cross validation. SVM also yields 75.33 % correct classification on the blind test experiment.

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Area Determination of Diabetic Foot Ulcer Images Using a Cascaded Two-Stage SVM-Based Classification

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Fully automatic wound segmentation with deep convolutional neural networks

TL;DR: Wang et al. as mentioned in this paper proposed a novel convolutional framework based on MobileNetV2 and connected component labeling to segment wound regions from natural images, which is a lightweight and less compute-intensive architecture.
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Computerized segmentation and measurement of chronic wound images

TL;DR: A four-dimensional probability map specific to wound characteristics is defined, a computationally efficient method to segment wound images utilizing the probability map, and auto-calibration of wound measurements using the content of the image are applied.
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A Smartphone App and Cloud-Based Consultation System for Burn Injury Emergency Care

TL;DR: An interactive mobile phone application is developed that enables transfer of both patient data and pictures of a wound from the point-of-care to a remote burns expert who, in turn, provides advice back.
Journal ArticleDOI

Time-Independent Prediction of Burn Depth Using Deep Convolutional Neural Networks.

TL;DR: Application of AI is very promising for prediction of burn depth and therefore can be a useful tool to help in guiding clinical decision and initial treatment of burn wounds.
References
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Steve R. Gunn
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Support Vector Machines for classification and regression

TL;DR: The increasing interest in Support Vector Machines (SVMs) over the past 15 years is described, including its application to multivariate calibration, and why it is useful when there are outliers and non-linearities.
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