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Learning to Efficiently Detect Repeatable Interest Points in Depth Data

机译:学习有效地检测深度数据中的可重复兴趣点

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Interest point (IP) detection is an important component of many computer vision methods. While there are a number of methods for detecting IPs in RGB images, modalities such as depth images and range scans have seen relatively little work. In this paper, we approach the IP , detection problem from a machine learning viewpoint and formulate it as a regression problem. We learn a regression forest (RF) model that, given an image patch, tells us if there is an IP in the center of the patch. Our RF based method for IP detection allows an easy trade-off between speed and repeatability by adapting the depth and number of trees used for approximating the interest point response maps. The data used for training the RF model is obtained by running state-of-the-art IP detection methods on the depth images. We show further how the IP response map used for training the RF can be specifically designed to increase repeatability by employing 3D models of scenes generated by reconstruction systems such as KinectFusion [1]. Our experiments demonstrate that the use of such data leads to considerably improved IP detection.
机译:兴趣点(IP)检测是许多计算机视觉方法的重要组成部分。尽管有很多方法可以检测RGB图像中的IP,但是诸如深度图像和范围扫描之类的方法工作相对较少。在本文中,我们从机器学习的角度处理IP检测问题,并将其表述为回归问题。我们学习了回归森林(RF)模型,该模型在给定图像补丁的情况下告诉我们补丁中心是否有IP。我们的基于IP的IP检测方法通过调整用于近似兴趣点响应图的树的深度和数量,可以在速度和可重复性之间轻松权衡。用于训练RF模型的数据是通过在深度图像上运行最新的IP检测方法获得的。我们进一步展示了如何通过使用诸如KinectFusion [1]之类的重建系统生成的场景的3D模型,专门设计用于训练RF的IP响应图,以提高可重复性。我们的实验表明,使用此类数据可显着改善IP检测。

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