This paper is concerned with polarimetric dense map reconstruction based on a polarization camera with the help of relative depth information as a prior. In general, polarization imaging is able to reveal information about surface normal such as azimuth and zenith angles, which can support the development of solutions to the problem of dense reconstruction, especially in texture-poor regions. However, polarimetric shape cues are ambiguous due to two types of polarized reflection (specular/diffuse). Although methods have been proposed to address this issue, they either are offline and therefore not practical in robotics applications, or use incomplete polarimetric cues, leading to sub-optimal performance. In this paper, we propose an online reconstruction method that uses full polarimetric cues available from the polarization camera. With our online method, we can propagate sparse depth values both along and perpendicular to iso-depth contours. Through comprehensive experiments on challenging image sequences, we demonstrate that our method is able to significantly improve the accuracy of the depthmap as well as increase its density, specially in regions of poor texture.
翻译:本文关注以前在相对深度信息的帮助下,利用极化摄像头,在极化摄像头的基础上对极地密集的地图进行重建。一般而言,极化成像能够揭示关于表层正常度的信息,如方位角和正方位角,这可以支持制定解决密集重建问题的办法,特别是在质谱贫乏地区。然而,由于两种极化反射(视觉/面形)类型,极化形状的信号模糊不清。虽然提出了解决这一问题的方法,但它们要么离线,因此在机器人应用中不切实际,要么使用不完整的极地标,导致次优性性表现。在本文件中,我们提出了一种在线重建方法,使用极化摄像头提供的极地标码。用我们的在线方法,我们可以将稀薄的深度值随处传播,而与深度等深线的垂直。通过对具有挑战性的图像序列的全面实验,我们证明我们的方法能够显著提高深度的精确度,并提高其密度,特别是在贫穷的纹质区域。