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Gaussian Process Deep Belief Networks: A Smooth Generative Model of Shape with Uncertainty Propagation

机译:高斯过程深层信任网络:具有不确定性传播的形状的平滑生成模型

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The shape of an object is an important characteristic for many vision problems such as segmentation, detection and tracking. Being independent of appearance, it is possible to generalize to a large range of objects from only small amounts of data. However, shapes represented as silhouette images are challenging to model due to complicated likelihood functions leading to intractable posteriors. In this paper we present a generative model of shapes which provides a low dimensional latent encoding which importantly resides on a smooth manifold with respect to the silhouette images. The proposed model propagates uncertainty in a principled manner allowing it to learn from small amounts of data and providing predictions with associated uncertainty. We provide experiments that show how our proposed model provides favorable quantitative results compared with the state-of-the-art while simultaneously providing a representation that resides on a low-dimensional inter-pretable manifold.
机译:物体的形状是许多视觉问题(例如分割,检测和跟踪)的重要特征。与外观无关,仅从少量数据就可以将其推广到大范围的对象。但是,由于复杂的似然函数会导致难以处理的后代,因此以剪影图像表示的形状很难建模。在本文中,我们提出了一种形状生成模型,该模型提供了低维潜在编码,该编码重要地位于相对于轮廓图像而言平滑的流形上。所提出的模型以原则性的方式传播不确定性,从而使其能够从少量数据中学习并提供具有相关不确定性的预测。我们提供的实验表明,与最新技术相比,我们提出的模型如何提供令人满意的定量结果,同时提供了驻留在低维可预组装歧管上的表示形式。

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