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Rapid extraction of the hottest or coldest regions of medical thermographic images

机译:快速提取医疗热量图像最热门或最冷的区域

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Early detection of breast tumors, feet pre-ulcers diagnosing in diabetic patients, and identifying the location of pain in patients are essential to physicians. Hot or cold regions in medical thermographic images have potential to be suspicious. Hence extracting the hottest or coldest regions in the body thermographic images is an important task. Lazy snapping is an interactive image cutout algorithm that can be applied to extract the hottest or coldest regions in the body thermographic images quickly with easy detailed adjustment. The most important advantage of this technique is that it can provide the results for physicians in real time readily. In other words, it is a good interactive image segmentation algorithm since it has two basic characteristics: (1) the algorithm produces intuitive segmentation that reflects the user intent with given a certain user input and (2) the algorithm is efficient enough to provide instant visual feedback. Comparing to other methods used by the authors for segmentation of breast thermograms such as K-means, fuzzy c-means, level set, and mean shift algorithms, lazy snapping was more user-friendly and could provide instant visual feedback. In this study, twelve test cases were presented and by applying lazy snapping algorithm, the hottest or coldest regions were extracted from the corresponding body thermographic images. The time taken to see the results varied from 7 to 30s for these twelve cases. It was concluded that lazy snapping was much faster than other methods applied by the authors such as K-means, fuzzy c-means, level set, and mean shift algorithms for segmentation.Time taken to implement lazy snapping algorithm to extract suspicious regions in different presented thermograms (in seconds). In this study, ten test cases are presented that by applying lazy snapping algorithm, the hottest or coldest regions were extracted from the corresponding body thermographic images. The time taken to see the results varied from 7 to 30s for the ten cases. It concludes lazy snapping is much faster than other methods applied by the authors.
机译:早期发现乳腺肿瘤,脚的溃疡诊断患者诊断,并识别患者疼痛的位置对医生至关重要。医疗热量图像中的热或寒冷地区有可能是可疑的。因此,在体积摄影图像中提取最热或最冷的区域是一个重要的任务。延迟捕捉是一种交互式图像切换算法,可以应用于快速地提取体温图像中最热或最冷的区域,简便详细调整。这种技术的最重要的优点是它可以随时为医生提供结果。换句话说,它是一个很好的交互式图像分割算法,因为它具有两个基本特征:(1)算法产生直观的分割,其反映给定某个用户输入的用户意图和(2)算法足够有效以提供即时算法视觉反馈。与作者使用的其他方法相比,用于分割乳房热图,例如K-means,模糊C型,水平集和平均移位算法,懒惰捕捉更用户友好,可以提供即时视觉反馈。在本研究中,提出了十二个测试用例,并通过施加怠速捕捉算法,从相应的身体热成像图像中提取最热或最冷的区域。看到结果所花费的时间在这十二个案例中从7到30秒变化。得出结论,懒惰的捕捉比作者,模糊的C型级别,级别集等其他方法更快,以及用于分割的平均移位算法。&实现延迟捕捉算法提取可疑地区的时间在不同呈现的热分析图(以秒为单位)。在本研究中,提出了十个测试用例,通过施加延迟捕捉算法,从相应的身体热成像图像中提取最热或最冷的区域。看到结果所花费的时间从7个案例中的7到30秒变化。它结束了懒惰的捕捉比作者所申请的其他方法快得多。

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