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Unified Depth Prediction and Intrinsic Image Decomposition from a Single Image via Joint Convolutional Neural Fields

机译:通过联合卷积神经字段从单个图像统一深度预测和内在图像分解

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We present a method for jointly predicting a depth map and intrinsic images from single-image input. The two tasks are formulated in a synergistic manner through a joint conditional random field (CRF) that is solved using a novel convolutional neural network (CNN) architecture, called the joint convolutional neural field (JCNF) model. Tailored to our joint estimation problem, JCNF differs from previous CNNs in its sharing of convolutional activations and layers between networks for each task, its inference in the gradient domain where there exists greater correlation between depth and intrinsic images, and the incorporation of a gradient scale network that learns the confidence of estimated gradients in order to effectively balance them in the solution. This approach is shown to surpass state-of-the-art methods both on single-image depth estimation and on intrinsic image decomposition.
机译:我们提出了一种方法,用于共同预测来自单图像输入的深度图和内在图像。这两个任务通过使用新颖的卷积神经网络(CNN)架构进行了协同条件的随机场(CRF)以协同条件的方式配制,称为联合卷积神经网络(JCNF)模型。针对我们的联合估计问题量身定制,JCNF与先前的CNN分享在其共享每个任务之间的网络之间的卷积激活和层中,其在深度和内在图像之间存在更大相关性的梯度域中的推断,以及渐变尺度的结合学习估计梯度置信度的网络,以便在解决方案中有效地平衡它们。该方法被示出在单图像深度估计和内在图像分解上超越最先进的方法。

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