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Computing CNN Loss and Gradients for Pose Estimation with Riemannian Geometry

机译:用黎曼几何计算CNN损失和梯度以进行姿势估计

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Pose estimation, i.e. predicting a 3D rigid transformation with respect to a fixed co-ordinate frame in, SE(3), is an omnipresent problem in medical image analysis. Deep learning methods often parame-terise poses with a representation that separates rotation and translation. As commonly available frameworks do not provide means to calculate loss on a manifold, regression is usually performed using the L2-norm independently on the rotation's and the translation's parameterisations. This is a metric for linear spaces that does not take into account the Lie group structure of SE(3). In this paper, we propose a general Riemannian formulation of the pose estimation problem, and train CNNs directly on SE(3) equipped with a left-invariant Riemannian metric. The loss between the ground truth and predicted pose (elements of the manifold) is calculated as the Riemannian geodesic distance, which couples together the translation and rotation components. Network weights are updated by back-propagating the gradient with respect to the predicted pose on the tangent space of the manifold SE(3). We thoroughly evaluate the effectiveness of our loss function by comparing its performance with popular and most commonly used existing methods, on tasks such as image-based localisation and intensity-based 2D/3D registration. We also show that hyper-parameters, used in our loss function to weight the contribution between rotations and translations, can be intrinsically calculated from the dataset to achieve greater performance margins.
机译:在医学图像分析中,姿势估计(即相对于SE(3)中的固定坐标系预测3D刚性变换)是一个无所不在的问题。深度学习方法通​​常将参数表示姿势与旋转和平移分开。由于通常可用的框架不提供计算流形上损失的方法,因此通常使用L2范数独立于旋转和平移的参数设置执行回归。这是线性空间的度量标准,未考虑SE(3)的李群结构。在本文中,我们提出了姿势估计问题的一般黎曼公式,并直接在配备了左不变黎曼度量的SE(3)上训练了CNN。地面真值与预测姿态(流形的元素)之间的损失计算为黎曼测地距离,该距离将平移和旋转分量耦合在一起。通过相对于歧管SE(3)的切线空间上的预测姿势反向传播梯度来更新网络权重。我们通过将损失函数的性能与流行的和最常用的现有方法进行比较,在基于图像的定位和基于强度的2D / 3D配准上进行比较,从而全面评估损失函数的有效性。我们还表明,可以在损失函数中用来加权旋转和平移之间的贡献的超参数可以从数据集内在地计算出来,从而获得更大的性能余量。

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