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Learning to Navigate the Energy Landscape

机译:学习导航能源格局

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In this paper, we present a novel, general, and efficient architecture for addressing computer vision problems that are approached from an 'Analysis by Synthesis' standpoint. Analysis by synthesis involves the minimization of reconstruction error, which is typically a non-convex function of the latent target variables. State-of-the-art methods adopt a hybrid scheme where discriminatively trained predictors like Random Forests or Convolutional Neural Networks are used to initialize local search algorithms. While these hybrid methods have been shown to produce promising results, they often get stuck in local optima. Our method goes beyond the conventional hybrid architecture by not only proposing multiple accurate initial solutions but by also defining a navigational structure over the solution space that can be used for extremely efficient gradient-free local search. We demonstrate the efficacy and generalizability of our approach on tasks as diverse as Hand Pose Estimation, RGB Camera Relocalization, and Image Retrieval.
机译:在本文中,我们提出了一种新颖,通用且有效的体系结构,用于解决从“综合分析”的角度解决的计算机视觉问题。通过综合分析涉及最小化重构误差,这通常是潜在目标变量的非凸函数。最先进的方法采用了一种混合方案,其中使用经过严格训练的预测变量(例如随机森林或卷积神经网络)来初始化本地搜索算法。尽管这些混合方法已显示出可喜的结果,但它们常常陷于局部最优中。我们的方法超越了传统的混合体系结构,不仅提出了多个准确的初始解,而且还定义了在解空间上的导航结构,该导航结构可用于极其有效的无梯度局部搜索。我们展示了我们的方法在各种任务上的有效性和可推广性,这些任务包括手部姿势估计,RGB相机重新定位和图像检索。

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