Light has many properties that can be passively measured by vision sensors. Colour-band separated wavelength and intensity are arguably the most commonly used ones for monocular 6D object pose estimation. This paper explores how complementary polarisation information, i.e. the orientation of light wave oscillations, can influence the accuracy of pose predictions. A hybrid model that leverages physical priors jointly with a data-driven learning strategy is designed and carefully tested on objects with different amount of photometric complexity. Our design not only significantly improves the pose accuracy in relation to photometric state-of-the-art approaches, but also enables object pose estimation for highly reflective and transparent objects.
翻译:光具有许多可以用视觉传感器被动测量的特性。 色带分隔波长和强度是单眼 6D 物体最常用的估计值。 本文探讨了互补的两极化信息,即光波振荡方向,如何影响表面预测的准确性。 设计了一个混合模型,利用物理前科和数据驱动的学习战略,对具有不同程度光度复杂度的物体进行仔细测试。 我们的设计不仅大大提高了光度测量状态方法的准确性,而且还使物体能够对高反射度和透明的物体作出估计。