Lhuillier M, Quan L
IEEE Trans Pattern Anal Mach Intell. 2005 Mar;27(3):418-433. doi: 10.1109/TPAMI.2005.44.
This paper proposes a quasi-dense approach to 3D surface model acquisition from uncalibrated images. First, correspondence information and geometry are computed based on new quasi-dense point features that are resampled subpixel points from a disparity map. The quasi-dense approach gives more robust and accurate geometry estimations than the standard sparse approach. The robustness is measured as the success rate of full automatic geometry estimation with all involved parameters fixed. The accuracy is measured by a fast gauge-free uncertainty estimation algorithm. The quasi-dense approach also works for more largely separated images than the sparse approach, therefore, it requires fewer images for modeling. More importantly, the quasidense approach delivers a high density of reconstructed 3D points on which a surface representation can be reconstructed. This fills the gap of insufficiency of the sparse approach for surface reconstruction, essential for modeling and visualization applications. Second, surface reconstruction methods from the given quasi-dense geometry are also developed. The algorithm optimizes new unified functionals integrating both 3D quasi-dense points and 2D image information, including silhouettes. Combining both 3D data and 2D images is more robust than the existing methods using only 2D information or only 3D data. An efficient bounded regularization method is proposed to implement the surface evolution by level-set methods. Its properties are discussed and proven for some cases. As a whole, a complete automatic and practical system of 3D modeling from raw images captured by hand-held cameras to surface representation is proposed. Extensive experiments demonstrate the superior performance of the quasi-dense approach with respect to the standard sparse approach in robustness, accuracy, and applicability.
本文提出了一种从未校准图像中获取三维表面模型的准密集方法。首先,基于从视差图中重新采样的亚像素点的新准密集点特征来计算对应信息和几何形状。与标准稀疏方法相比,准密集方法能给出更稳健、准确的几何估计。稳健性通过在所有相关参数固定的情况下全自动几何估计的成功率来衡量。准确性通过一种快速的无量具不确定性估计算法来衡量。准密集方法在处理分离程度更大的图像时也比稀疏方法更有效,因此,它在建模时所需的图像更少。更重要的是,准密集方法能提供高密度的重建三维点,在此基础上可以重建表面表示。这填补了稀疏方法在表面重建方面的不足,而表面重建对于建模和可视化应用至关重要。其次,还开发了从给定的准密集几何形状进行表面重建的方法。该算法优化了新的统一泛函,将三维准密集点和二维图像信息(包括轮廓)整合在一起。结合三维数据和二维图像比现有的仅使用二维信息或仅使用三维数据的方法更稳健。提出了一种有效的有界正则化方法,通过水平集方法实现表面演化。讨论并证明了其在某些情况下的性质。总体而言,提出了一个完整的从手持相机拍摄的原始图像到表面表示的全自动实用三维建模系统。大量实验证明了准密集方法相对于标准稀疏方法在稳健性、准确性和适用性方面的卓越性能。