Deep Projective Rotation Estimation through Relative Supervision

Brian Okorn, Chuer Pan, M. Hebert, David Held
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Abstract

Orientation estimation is the core to a variety of vision and robotics tasks such as camera and object pose estimation. Deep learning has offered a way to develop image-based orientation estimators; however, such estimators often require training on a large labeled dataset, which can be time-intensive to collect. In this work, we explore whether self-supervised learning from unlabeled data can be used to alleviate this issue. Specifically, we assume access to estimates of the relative orientation between neighboring poses, such that can be obtained via a local alignment method. While self-supervised learning has been used successfully for translational object keypoints, in this work, we show that naively applying relative supervision to the rotational group $SO(3)$ will often fail to converge due to the non-convexity of the rotational space. To tackle this challenge, we propose a new algorithm for self-supervised orientation estimation which utilizes Modified Rodrigues Parameters to stereographically project the closed manifold of $SO(3)$ to the open manifold of $\mathbb{R}^{3}$, allowing the optimization to be done in an open Euclidean space. We empirically validate the benefits of the proposed algorithm for rotational averaging problem in two settings: (1) direct optimization on rotation parameters, and (2) optimization of parameters of a convolutional neural network that predicts object orientations from images. In both settings, we demonstrate that our proposed algorithm is able to converge to a consistent relative orientation frame much faster than algorithms that purely operate in the $SO(3)$ space. Additional information can be found at https://sites.google.com/view/deep-projective-rotation/home .
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基于相对监督的深度投影旋转估计
方向估计是各种视觉和机器人任务的核心,如相机和物体姿态估计。深度学习提供了一种开发基于图像的方向估计器的方法;然而,这样的估计器通常需要在大型标记数据集上进行训练,这可能需要大量的时间来收集。在这项工作中,我们探讨了是否可以使用未标记数据的自监督学习来缓解这个问题。具体来说,我们假设可以通过局部对齐方法获得相邻姿态之间的相对方向估计。虽然自监督学习已经成功地用于平移对象关键点,但在这项工作中,我们表明,由于旋转空间的非凸性,对旋转群$SO(3)$天真地应用相对监督通常会无法收敛。为了解决这一问题,我们提出了一种新的自监督方向估计算法,该算法利用改进的Rodrigues参数将封闭流形$SO(3)$立体投影到开放流形$\mathbb{R}^{3}$上,使得优化可以在开放的欧几里得空间中进行。我们在两种情况下经验验证了所提出的算法在旋转平均问题上的优势:(1)直接优化旋转参数,(2)优化从图像中预测物体方向的卷积神经网络的参数。在这两种情况下,我们证明了我们提出的算法能够比纯粹在$SO(3)$空间中操作的算法更快地收敛到一致的相对方向帧。更多信息请访问https://sites.google.com/view/deep-projective-rotation/home。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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