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S2R-DepthNet: Learning a Generalizable Depth-specific Structural Representation

Xiaotian Chen, Yuwang Wang, Xuejin Chen, Wenjun Zeng

202148 citationsDOI

Abstract

Human can infer the 3D geometry of a scene from a sketch instead of a realistic image, which indicates that the spatial structure plays a fundamental role in understanding the depth of scenes. We are the first to explore the learning of a depth-specific structural representation, which captures the essential feature for depth estimation and ignores irrelevant style information. Our S2R-DepthNet (Synthetic to Real DepthNet) can be well generalized to un-seen real-world data directly even though it is only trained on synthetic data. S2R-DepthNet consists of: a) a Structure Extraction (STE) module which extracts a domain-invariant structural representation from an image by dis-entangling the image into domain-invariant structure and domain-specific style components, b) a Depth-specific Attention (DSA) module, which learns task-specific knowledge to suppress depth-irrelevant structures for better depth estimation and generalization, and c) a depth prediction module (DP) to predict depth from the depth-specific representation. Without access of any real-world images, our method even outperforms the state-of-the-art unsupervised domain adaptation methods which use real-world images of the tar-get domain for training. In addition, when using a small amount of labeled real-world data, we achieve the state-of-the-art performance under the semi-supervised setting.

Topics & Concepts

Artificial intelligenceComputer scienceRepresentation (politics)Domain (mathematical analysis)Invariant (physics)Feature learningImage (mathematics)SketchGeneralizationPattern recognition (psychology)Domain adaptationComputer visionSubnetworkFeature extractionMachine learningMathematicsAlgorithmComputer securityPolitical scienceLawMathematical analysisClassifier (UML)PoliticsMathematical physicsAdvanced Vision and ImagingOptical measurement and interference techniquesImage Processing Techniques and Applications
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