$mathbb {R}^nrightarrow mathbb {R}^n$ Transformations Based on Continuous Piecewise-Affine Velocity Fields
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Transformations Based on Continuous Piecewise-Affine Velocity Fields

机译:基于连续分段仿射速度场的变换

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We propose novel finite-dimensional spaces of well-behaved $mathbb {R}^nrightarrow mathbb {R}^n$ transformations. The latter are obtained by (fast and highly-accurate) integration of continuous piecewise-affine velocity fields. The proposed method is simple yet highly expressive, effortlessly handles optional constraints (e.g., volume preservation and/or boundary conditions), and supports convenient modeling choices such as smoothing priors and coarse-to-fine analysis. Importantly, the proposed approach, partly due to its rapid likelihood evaluations and partly due to its other properties, facilitates tractable inference over rich transformation spaces, including using Markov-Chain Monte-Carlo methods. Its applications include, but are not limited to: monotonic regression (more generally, optimization over monotonic functions); modeling cumulative distribution functions or histograms; time-warping; image warping; image registration; real-time diffeomorphic image editing; data augmentation for image classifiers. Our GPU-based code is publicly available.
机译:我们提出行为良好的 $ mathbb {R} ^ narrowarrow mathbb {R} ^ n $ < inline-graphic xlink:href =“ freifeld-ieq1-2646685.gif” /> 转换。后者是通过(快速且高精度)连续分段仿射速度场积分获得的。所提出的方法简单而又富有表现力,不费力地处理可选约束(例如,体积保留和/或边界条件),并支持方便的建模选择,例如平滑先验和粗到精分析。重要的是,提出的方法部分是由于其快速的似然评估,部分是由于其其他属性,有助于在丰富的变换空间上进行易于推断的推断,包括使用马尔可夫链蒙特卡洛方法。它的应用包括但不限于:单调回归(更一般而言,对单调函数的优化);以及模拟累积分布函数或直方图;时间扭曲图像变形;图像配准;实时衍射图像编辑图像分类器的数据增强。我们基于GPU的代码是公开可用的。

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