ROAICVFeb 25, 2015

Building with Drones: Accurate 3D Facade Reconstruction using MAVs

arXiv:1502.07019v183 citations
AI Analysis

This addresses the need for high-resolution, accurate 3D models in Architecture, Engineering, and Construction for users unskilled in computer vision, representing an incremental improvement.

The paper tackles the problem of inaccurate 3D facade reconstruction from drone images by proposing a closed-loop interactive system with real-time feedback on data quality and a multi-scale camera network to prevent drift, achieving compelling accuracy compared to state-of-the-art methods.

Automatic reconstruction of 3D models from images using multi-view Structure-from-Motion methods has been one of the most fruitful outcomes of computer vision. These advances combined with the growing popularity of Micro Aerial Vehicles as an autonomous imaging platform, have made 3D vision tools ubiquitous for large number of Architecture, Engineering and Construction applications among audiences, mostly unskilled in computer vision. However, to obtain high-resolution and accurate reconstructions from a large-scale object using SfM, there are many critical constraints on the quality of image data, which often become sources of inaccuracy as the current 3D reconstruction pipelines do not facilitate the users to determine the fidelity of input data during the image acquisition. In this paper, we present and advocate a closed-loop interactive approach that performs incremental reconstruction in real-time and gives users an online feedback about the quality parameters like Ground Sampling Distance (GSD), image redundancy, etc on a surface mesh. We also propose a novel multi-scale camera network design to prevent scene drift caused by incremental map building, and release the first multi-scale image sequence dataset as a benchmark. Further, we evaluate our system on real outdoor scenes, and show that our interactive pipeline combined with a multi-scale camera network approach provides compelling accuracy in multi-view reconstruction tasks when compared against the state-of-the-art methods.

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