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A deep learning approach for detecting and correcting highlights in endoscopic images

机译:一种深入学习方法,用于检测和校正内窥镜图像中的亮点

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The image of an object changes dramatically depending on the lightning conditions surrounding that object. Shadows, reflections and highlights can make the object very difficult to be recognized for an automatic system. Additionally, images used in medical applications, such as endoscopic images and videos contain a large amount of such reflective components. This can pose an extra difficulty for experts to analyze such type of videos and images. It can then be useful to detect - and possibly correct - the locations where those highlights happen. In this work we designed a Convolutional Neural Network for that task. We trained such a network using a dataset that contains groundtruth highlights showing that those reflective elements can be learnt and thus located and extracted. We then used that trained network to localize and correct the highlights in endoscopic images from the El Salvador Atlas Gastrointestinal videos obtaining promising results.
机译:对象的图像根据该对象周围的闪电条件而变化。阴影,反射和亮点可以使物体很难被识别为自动系统。另外,在医学应用中使用的图像,例如内窥镜图像和视频包含大量的这种反射部件。这可能对专家造成额外的困难来分析这种类型的视频和图像。然后它可以检测 - 并且可能是正确的 - 那些突出显示的位置。在这项工作中,我们为该任务设计了一个卷积神经网络。我们使用包含Toundtruth亮点的数据集培训了这样的网络,显示可以学习那些反射元素并因此地提取并提取。然后,我们使用培训的网络来定位和纠正来自El Salvador Atlas胃肠视频的内窥镜图像中的亮点获得有希望的结果。

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