CVOct 24, 2024

Segmentation-aware Prior Assisted Joint Global Information Aggregated 3D Building Reconstruction

arXiv:2410.18433v16 citationsh-index: 6Adv Eng Informatics
Originality Incremental advance
AI Analysis

This work addresses a specific challenge in civil engineering for 3D building reconstruction, with incremental improvements in handling weakly-textured areas.

The paper tackles the problem of inaccurate depth estimation in weakly-textured regions of large-scale building scenes in Multi-View Stereo, proposing an algorithm that uses segmentation and plane priors with a global information aggregation cost function, resulting in superior 3D building models compared to state-of-the-art methods on benchmarks like ETH3D.

Multi-View Stereo plays a pivotal role in civil engineering by facilitating 3D modeling, precise engineering surveying, quantitative analysis, as well as monitoring and maintenance. It serves as a valuable tool, offering high-precision and real-time spatial information crucial for various engineering projects. However, Multi-View Stereo algorithms encounter challenges in reconstructing weakly-textured regions within large-scale building scenes. In these areas, the stereo matching of pixels often fails, leading to inaccurate depth estimations. Based on the Segment Anything Model and RANSAC algorithm, we propose an algorithm that accurately segments weakly-textured regions and constructs their plane priors. These plane priors, combined with triangulation priors, form a reliable prior candidate set. Additionally, we introduce a novel global information aggregation cost function. This function selects optimal plane prior information based on global information in the prior candidate set, constrained by geometric consistency during the depth estimation update process. Experimental results on both the ETH3D benchmark dataset, aerial dataset, building dataset and real scenarios substantiate the superior performance of our method in producing 3D building models compared to other state-of-the-art methods. In summary, our work aims to enhance the completeness and density of 3D building reconstruction, carrying implications for broader applications in urban planning and virtual reality.

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