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Subsampling strategies to improve learning-based retina vessel segmentation

机译:改进基于学习的视网膜血管分割的子采样策略

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The proper segmentation of the vascular system of the retina has a very important role in automatic screening systems. Its detection helps the localization of other anatomical parts and also the detection of possible vascular disorders. State-of-the-art machine learning algorithms are reported to have good performance in this field. However, with the spatial resolution of the fundus images growing, it is necessary to decrease the number of training pixels to save computations. In this paper, we investigate several subsampling strategies with the motivation to find the best segmentation results with involving fewer pixels into the analyses. Besides checking the computational advantages, we demonstrate how the segmentation accuracy drops with the level of subsampling.
机译:视网膜血管系统的正确分割在自动筛查系统中具有非常重要的作用。它的检测有助于其他解剖部位的定位以及可能的血管疾病的检测。据报道,最新的机器学习算法在该领域具有良好的性能。然而,随着眼底图像的空间分辨率的增长,有必要减少训练像素的数量以节省计算量。在本文中,我们研究了几种子采样策略,以期找到最佳的分割结果,并在分析中包含较少的像素。除了检查计算优势外,我们还演示了分段精度如何随子采样级别的降低而下降。

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