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Combining Efficient Hand-Crafted Features with Learned Filters for Fast and Accurate Corneal Nerve Fibre Centreline Detection

机译:将高效的手工制作功能与经验丰富的滤镜相结合可快速准确地检测角膜神经纤维中心线

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摘要

We propose a new approach to corneal nerve fibre centreline detection for in vivo confocal microscopy images. Relying on a combination of efficient hand-crafted features and learned filters, our method offers an excellent compromise between accuracy and running time. Unlike previous solutions using sparse coding to learn small filter banks, we employ K-means to efficiently learn the high amount of filters needed to cope with the multiple challenges involved, e.g., low contrast and resolution, non-uniform illumination, tortuosity and confounding non-target structures. The use of K-means for dictionary learning allows us to learn banks of 100 filters in less than 30 seconds compared to several days needed when using sparse coding. Experimental results using a dataset including 100 images show that our approach outperforms significantly state-of-the-art methods in terms of precision-recall curves.
机译:我们提出了一种新的方法,用于体内共聚焦显微镜图像的角膜神经纤维中心线检测。依靠有效的手工功能和学习的滤波器的组合,我们的方法在精度和运行时间之间提供了出色的折衷方案。与以前使用稀疏编码来学习小型滤波器组的解决方案不同,我们使用K-means来高效学习大量滤波器,以应对所涉及的多种挑战,例如,低对比度和分辨率,照明不均匀,曲折和混杂目标结构。使用K均值进行字典学习可使我们在不到30秒的时间内学习100个过滤器,而使用稀疏编码则需要几天。使用包含100张图像的数据集进行的实验结果表明,就精确调用曲线而言,我们的方法明显优于最新技术。

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