SDC-Depth: Semantic Divide-and-Conquer Network for Monocular Depth Estimation

Lijun Wang, Jianming Zhang, Oliver Wang, Zhe L. Lin, Huchuan Lu
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引用次数: 93

Abstract

Monocular depth estimation is an ill-posed problem, and as such critically relies on scene priors and semantics. Due to its complexity, we propose a deep neural network model based on a semantic divide-and-conquer approach. Our model decomposes a scene into semantic segments, such as object instances and background stuff classes, and then predicts a scale and shift invariant depth map for each semantic segment in a canonical space. Semantic segments of the same category share the same depth decoder, so the global depth prediction task is decomposed into a series of category-specific ones, which are simpler to learn and easier to generalize to new scene types. Finally, our model stitches each local depth segment by predicting its scale and shift based on the global context of the image. The model is trained end-to-end using a multi-task loss for panoptic segmentation and depth prediction, and is therefore able to leverage large-scale panoptic segmentation datasets to boost its semantic understanding. We validate the effectiveness of our approach and show state-of-the-art performance on three benchmark datasets.
SDC-Depth:用于单目深度估计的语义分治网络
单目深度估计是一个不适定问题,因此严重依赖于场景先验和语义。由于其复杂性,我们提出了一种基于语义分而治之方法的深度神经网络模型。我们的模型将场景分解为语义段,如对象实例和背景材料类,然后在规范空间中预测每个语义段的尺度和位移不变深度图。同一类别的语义段共享相同的深度解码器,因此将全局深度预测任务分解为一系列特定于类别的深度预测任务,这些任务更容易学习并且更容易推广到新的场景类型。最后,我们的模型通过基于图像的全局上下文预测其规模和位移来缝合每个局部深度段。该模型使用多任务损失进行端到端训练,用于全光分割和深度预测,因此能够利用大规模的全光分割数据集来提高其语义理解。我们验证了我们方法的有效性,并在三个基准数据集上展示了最先进的性能。
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