Litcius/Paper detail

Attention-Aware Multi-View Stereo

Keyang Luo, Tao Guan, Lili Ju, Yuesong Wang, Zhuo Chen, Yawei Luo

2020115 citationsDOI

Abstract

Multi-view stereo is a crucial task in computer vision, that requires accurate and robust photo-consistency among input images for depth estimation. Recent studies have shown that learning-based feature matching and confidence regularization can play a vital role in this task. Nevertheless, how to design good matching confidence volumes as well as effective regularizers for them are still under in-depth study. In this paper, we propose an attention-aware deep neural network “AttMVS” for learning multi-view stereo. In particular, we propose a novel attention-enhanced matching confidence volume, that combines the raw pixel-wise matching confidence from the extracted perceptual features with the contextual information of local scenes, to improve the matching robustness. Furthermore, we develop an attention-guided regularization module, which consists of multilevel ray fusion modules, to hierarchically aggregate and regularize the matching confidence volume into a latent depth probability volume.Experimental results show that our approach achieves the best overall performance on the DTU dataset and the intermediate sequences of Tanks & Temples benchmark over many state-of-the-art MVS algorithms.

Topics & Concepts

Computer scienceArtificial intelligenceRegularization (linguistics)Robustness (evolution)Matching (statistics)Benchmark (surveying)Low ConfidenceFeature learningMachine learningComputer visionPattern recognition (psychology)MathematicsPsychologyGeographyStatisticsGeneGeodesyChemistrySocial psychologyBiochemistryAdvanced Vision and ImagingAdvanced Image Processing TechniquesImage Enhancement Techniques