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Depth from a Single Image by Harmonizing Overcomplete Local Network Predictions

机译:通过协调overcomplete当地网络预测来从单个图像中深度深度

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A single color image can contain many cues informative towards different aspects of local geometric structure. We approach the problem of monocular depth estimation by using a neural network to produce a mid-level representation that summarizes these cues. This network is trained to characterize local scene geometry by predicting, at every image location, depth derivatives of different orders, orientations and scales. However, instead of a single estimate for each derivative, the network outputs probability distributions that allow it to express confidence about some coefficients, and ambiguity about others. Scene depth is then estimated by harmonizing this overcomplete set of network predictions, using a globalization procedure that finds a single consistent depth map that best matches all the local derivative distributions. We demonstrate the efficacy of this approach through evaluation on the NYU v2 depth data set.
机译:单个彩色图像可以包含许多朝向当地几何结构的不同方面的线索。通过使用神经网络来产生总结这些提示的中级表示来探讨单眼深度估计问题。通过在每个图像位置,不同订单的深度导数,方向和尺度的每个图像位置,深度衍生物,训练该网络以表征本地场景几何。然而,而不是对每个衍生物的单个估计,网络输出允许它能够表达对某些系数的信心以及对他人的模糊的概率分布。然后,使用找到最佳匹配所有本地导数分布的单一一致深度图的全球化过程来估计场景深度估计这一超越网络预测。我们通过对NYU V2深度数据集的评估来证明这种方法的功效。

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