对快速3D重建使用轮廓和稀疏运动

D. Eason, J. Heather, Gadi Ben-Tal
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引用次数: 1

摘要

针对工业视觉系统,提出了一种高效的三维重建算法。该算法生成3D模型和旋转物体沿传送带移动的运动估计,经过一组校准的摄像机。对于我们的应用来说,感兴趣的对象(天然农产品)具有相对简单的表面几何形状,并且可以在重建过程中利用这一特征。所提出的方法结合了轮廓形状概念和稀疏运动跟踪,并且有可能足够快地扩展到实时工业应用。除了具有鲁棒性和极高的计算效率外,这项工作的关键区别还包括:(a)充分利用先验模型知识,(b)处理高度动态和不可预测的物体运动,以及(c)支持包含相对较少形状和纹理定义的物体。该方法在一组合成示例图像序列上进行了演示和评估,表面误差已被量化为距离地面真实值小于0.2mm,为解决方案提供了信心。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Towards Fast 3D Reconstruction Using Silhouettes and Sparse Motion
An efficient new 3D reconstruction algorithm designed for an industrial vision system is presented. The algorithm generates 3D models and motion estimates of rotating objects moving along a conveyor past a set of calibrated cameras. For our application the objects of interest (natural produce) have relatively simple surface geometries and this feature can be exploited in the reconstruction process. The proposed method combines shape-from-silhouette concepts with sparse motion tracking and is potentially fast enough to extend to real-time industrial applications. In addition to being robust and extremely computationally efficient, key differentiators for this work include (a) full exploitation of a priori model knowledge, (b) handling of highly dynamic and unpredictable object motions, and (c) support for objects containing relatively little shape and texture definition. The method is demonstrated and evaluated on a collection of synthetic example image sequences, and surface errors have been quantified as being less than 0.2mm from the ground-truth, providing confidence in the solution.
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