Interactive Segmentation Using Prior Knowledge-Based Distance Map

Youdam Chung, Wen-kai Lu, X. Tian
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Abstract

In this paper, we aim to solve problems in interactive segmentation, a technique which is widely used for data labeling tasks. It requires the user to provide clicks for the objects of interest. The user-provided clicks are transformed into the distance map, which plays an important role in the interactive segmentation. Therefore, we propose a novel distance map that is obtained by combining the automatic segmentation result with the user-provided clicks. Since we have validated that better automatic segmentation result leads to better interactive segmentation result, we concatenate the original image with its LOG (Laplacian of Gaussian) filter image to improve the automatic segmentation results. Besides, given that its successful implementation requires correct labels so as to enable the computer to simulate the user interaction, a data cleansing technique is applied to filter out samples with inaccurate labels also known as noisy labels. The effectiveness of our proposed method is assessed using the Kaggle’s TGS Salt Identification Challenge dataset. The obtained results indicate that when using the proposed algorithm, the average IoU reaches 91.81% for only one user-provided click.
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基于先验知识距离图的交互式分割
在本文中,我们的目标是解决交互式分割问题,这是一种广泛用于数据标记任务的技术。它要求用户为感兴趣的对象提供点击。用户提供的点击量被转换成距离图,在交互式分割中起着重要的作用。因此,我们提出了一种将自动分割结果与用户提供的点击次数相结合的新型距离图。由于我们已经验证了更好的自动分割结果会导致更好的交互式分割结果,因此我们将原始图像与其LOG(拉普拉斯高斯)滤波图像进行连接,以提高自动分割结果。此外,考虑到其成功实现需要正确的标签以使计算机能够模拟用户交互,因此采用数据清洗技术过滤掉标签不准确的样本,也称为噪声标签。使用Kaggle的TGS盐识别挑战数据集评估了我们提出的方法的有效性。结果表明,使用本文算法时,用户提供一次点击,平均IoU达到91.81%。
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