2018
DOI: 10.1016/j.isprsjprs.2018.03.022
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Prioritized multi-view stereo depth map generation using confidence prediction

Abstract: In this work, we propose a novel approach to prioritize the depth map computation of multi-view stereo (MVS) to obtain compact 3D point clouds of high quality and completeness at low computational cost. Our prioritization approach operates before the MVS algorithm is executed and consists of two steps. In the first step, we aim to find a good set of matching partners for each view. In the second step, we rank the resulting view clusters (i.e. key views with matching partners) according to their impact on the f… Show more

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Cited by 9 publications
(4 citation statements)
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“…However, these methods usually require complex computation for high-quality depth map estimation. To expand the reconstruction scale to a larger extent at a lower computational cost, Xue et al [31] proposed a novel multi-view 3D dense matching method for large-scale aerial images using a divide-and-conquer scheme, and Mostegel et al [32] innovatively proposed to prioritize the depth map computation of MVS by confidence prediction to efficiently obtain compact 3D point clouds with high quality and completeness. Wei et al [33] proposed a novel selective joint bilateral upsampling and depth propagation strategy for high-resolution unstructured MVS.…”
Section: Depth-map Merging Based Methodsmentioning
confidence: 99%
“…However, these methods usually require complex computation for high-quality depth map estimation. To expand the reconstruction scale to a larger extent at a lower computational cost, Xue et al [31] proposed a novel multi-view 3D dense matching method for large-scale aerial images using a divide-and-conquer scheme, and Mostegel et al [32] innovatively proposed to prioritize the depth map computation of MVS by confidence prediction to efficiently obtain compact 3D point clouds with high quality and completeness. Wei et al [33] proposed a novel selective joint bilateral upsampling and depth propagation strategy for high-resolution unstructured MVS.…”
Section: Depth-map Merging Based Methodsmentioning
confidence: 99%
“…At the same time, they suffer from noise and artifacts, especially from reflective or transparent surfaces. In addition, depth information can also be obtained from depth defocus [4] [5], multi-view Stereo (MVS) [6] [7], and obtained structure from motion (SFM) [8]. However, these methods are either timeconsuming or have low depth accuracy.…”
Section: Introductionmentioning
confidence: 99%
“…In MVS, images must satisfy quality criteria [6] to obtain high-quality models. These criteria may slightly vary in different MVS algorithms, but there are some standard criteria such as the coverage/visibility, resolution, incidence angle, baseline, and parallax [7][8][9]. When a 3D model of the surveyed structure is available (i.e., 3D Computer-aided Design (CAD), building information modeling (BIM), 2.5D digital elevation model, rough photometric reconstruction), the UAV's camera views/paths can be designed in a model-based fashion where the optimal trajectories can be computed by maximizing the MVS quality at each observed surface of the 3D structures [10].…”
Section: Introductionmentioning
confidence: 99%