A learning-based framework for depth ordering

Zhaoyin Jia, Andrew C. Gallagher, Yao-Jen Chang, Tsuhan Chen
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引用次数: 33

Abstract

Depth ordering is instrumental for understanding the 3D geometry of an image. Humans are surprisingly good at depth ordering even with abstract 2D line drawings. In this paper we propose a learning-based framework for depth ordering inference. Boundary and junction characteristics are important clues for this task, and we have developed new features based on these attributes. Although each feature individually can produce reasonable depth ordering results, each still has limitations, and we can achieve better performance by combining them. In practice, local depth ordering inferences can be contradictory. Therefore, we propose a Markov Random Field model with terms that are more global than previous work, and use graph optimization to encourage a globally consistent ordering. In addition, to produce better object segmentation for the task of depth ordering, we propose to explicitly enforce closed loops and long edges for the occlusion boundary detection. We collect a new depth-order dataset for this problem, including more than a thousand human-labeled images with various daily objects and configurations. The proposed algorithm shows promising performance over conventional methods on both synthetic and real scenes.
基于学习的深度排序框架
深度排序有助于理解图像的三维几何形状。即使是抽象的2D线条画,人类也非常擅长深度排序。本文提出了一种基于学习的深度排序推理框架。边界和连接特征是这项任务的重要线索,我们基于这些属性开发了新的特征。虽然每个特征单独可以产生合理的深度排序结果,但每个特征仍然有局限性,我们可以通过组合它们来获得更好的性能。在实践中,局部深度排序推断可能是矛盾的。因此,我们提出了一个马尔可夫随机场模型,其术语比以前的工作更具全局性,并使用图优化来鼓励全局一致的排序。此外,为了在深度排序任务中产生更好的目标分割,我们建议在遮挡边界检测中显式地强制执行闭环和长边。我们为这个问题收集了一个新的深度顺序数据集,其中包括一千多张带有各种日常物体和配置的人工标记图像。该算法在合成场景和真实场景中都比传统方法表现出良好的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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