Abstract:Due to the weakness of match information and influence of noise
the calculation precision of depth cannot be guaranteed. Therefore fusion of multiple depth maps is a typical technique for multi-view stereo (MVS) reconstruction. This paper introduced an antinoise fusion method that took advantage of the confidence of 3D points. This method first performed a refinement process on every depth map to enforce consistency over its neighbors
which could remove most errors and fill many holes simultaneously. After refinement
it deleted redundancies of every point by retaining the point that its confidence was maximal in its neighbors. Finally
it obtained a point cloud by merging all depth maps and used an iterative least square algorithm to further eliminate the noise points. The quality performance of the proposed method was evaluated on several data sets and the comparison with other algorithm was also given in the paper.
关键词
多目立体视觉三维重建深度图融合置信度迭代最小二乘法
Keywords
multiple view stereo3D reconstructionfusion of depth mapsconfidenceiterative least square algorithm