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Machine Learning for Mobile Wound Assessment

机译:用于移动伤口评估的机器学习

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Chronic wounds affect millions of people around the world. In particular, elderly persons in home care may develop decubitus. Here, mobile image acquisition and analysis can provide a good assistance. We develop a system for mobile wound capture using mobile devices such as smartphones. The photographs are acquired with the integrated camera of the device and then calibrated and processed to determine the size of various tissues that are present in a wound, i.e., necrotic, sloughy, and granular tissue. The random forest classifier based on various color and texture features is used for that. These features are Sobel, Hessian, membrane projections, variance, mean, median, anisotropic diffusion, and bilateral as well as Kuwahara filters. The resultant probability output is thresholded using the Otsu technique. The similarity between manual ground truth labeling and the classification is measured. The acquired results are compared to those achieved with a basic technique of color thresholding, as well as those produced by the SVM classifier. The fast random forest was found to produce better results. It is also seen to have a superior performance when the method is applied only to the wound regions having the background subtracted. Mean similarity is 0.89, 0.39, and 0.44 for necrotic, sloughy, and granular tissue, respectively. Although the training phase is time consuming, the trained classifier performs fast enough to be implemented on the mobile device. This will allow comprehensive monitoring of skin lesions and wounds.
机译:慢性伤口影响着全球数百万人。特别是,家庭护理中的老年人可能会出现褥疮。在这里,移动图像的获取和分析可以提供很好的帮助。我们开发了一种使用智能手机等移动设备进行移动伤口捕获的系统。用设备的集成相机获取照片,然后对其进行校准和处理,以确定伤口中存在的各种组织的大小,即坏死的,腐烂的和颗粒状的组织。为此,使用了基于各种颜色和纹理特征的随机森林分类器。这些特征包括Sobel,Hessian,膜投影,方差,均值,中值,各向异性扩散,双边以及Kuwahara过滤器。使用Otsu技术对结果概率输出进行阈值处理。测量了人工地面真相标签和分类之间的相似性。将获得的结果与使用颜色阈值化的基本技术获得的结果以及由SVM分类器产生的结果进行比较。发现快速随机森林可以产生更好的结果。当仅将本方法应用于减去了背景的伤口区域时,还具有优异的性能。坏死组织,皮损组织和颗粒组织的平均相似度分别为0.89、0.39和0.44。尽管训练阶段很耗时,但是训练有素的分类器执行得足够快,可以在移动设备上实现。这样可以对皮肤病变和伤口进行全面监测。

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