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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Learning Direct Optimization for scene understanding
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Learning Direct Optimization for scene understanding

机译:学习场景理解的直接优化

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摘要

We develop a Learning Direct Optimization (LiDO) method for the refinement of a latent variable model that describes input image x. Our goal is to explain a single image x with an interpretable 3D computer graphics model having scene graph latent variables z (such as object appearance, camera position). Given a current estimate of z we can render a prediction of the image g(z), which can be compared to the image x. The standard way to proceed is then to measure the error E(x, g(z)) between the two, and use an optimizer to minimize the error. However, it is unknown which error measure E would be most effective for simultaneously addressing issues such as misaligned objects, occlusions, textures, etc. In contrast, the LiDO approach trains a Prediction Network to predict an update directly to correct z, rather than minimizing the error with respect to z. Experiments show that LiDO converges rapidly as it does not need to perform a search on the error landscape, produces better solutions than error-based competitors, and is able to handle the mismatch between the data and the fitted scene model. We apply LiDO to a realistic synthetic dataset, and show that the method also transfers to work well with real images. (C) 2020 Elsevier Ltd. All rights reserved.
机译:我们开发了一种学习直接优化(LIDO)方法,用于改进描述输入图像X的潜在变量模型。我们的目标是用一个可解释的3D计算机图形模型来解释一个图像X,该可解释的3D计算机图形模型具有场景图潜伏变量Z(例如对象外观,摄像机位置)。给定当前估计Z我们可以呈现图像G(z)的预测,这可以与图像x进行比较。然后继续进行标准方法,以测量两者之间的错误E(x,g(z)),并使用优化器来最小化错误。然而,它未知哪个错误测量e最有效地对比同时解决错误的对象,闭塞,纹理等问题最有效的是,LIDO方法列举预测网络以预测直接更新以校正Z,而不是最小化关于z的误差。实验表明,LIDO在不需要对错误景观中进行搜索时迅速收敛,产生比基于错误的竞争对手更好的解决方案,并且能够在数据和拟合场景模型之间处理不匹配。我们将LIDO应用于一个现实的合成数据集,并表明该方法还与真实图像运转良好。 (c)2020 elestvier有限公司保留所有权利。

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