KEYWORDS: 3D modeling, Image segmentation, 3D image processing, 3D image reconstruction, Visual process modeling, Systems modeling, 3D metrology, Performance modeling, Clouds, Neural networks
imultaneous 3D scene reconstruction and semantic segmentation are required in many applications such as autonomous driving, robotics, and optical metrology. Classic 3D reconstruction methods usually perform such operations twofold. Firstly, a 3D scanner or laser scanner acquires a point cloud. Secondly, semantic segmentation of the point cloud is performed. Recently a new kind of 3D model representation was proposed that utilizes the trapezium-shaped voxels that are aligned with the camera’s frustum and pixels [1]. Frustum voxel models proved to be effective for monocular 3D scene reconstruction and segmentation from monocular images [2]. Still, many existing 3D scanning systems readily provide stereo cameras. The performance of frustum voxel model-based methods for stereo input remains an open question. This paper is focused on the evaluation of the 3D reconstruction quality of a volumetric neural network with a monocular and stereo input. We leverage an SSZ [2] volumetric neural network as a starting point for our research. We develop its modified version that we term Stereo-SSZ that receives a stereo pair as an input. We compare the performance of the original SSZ model and our Stereo-SSZ model on different real and synthetic 3D shape datasets. Specifically, we generate a stereo version of the SemanticVoxels [2] dataset and capture stereo pairs of multiple real objects using a structured light scanner. The results of our experiments are encouraging and demonstrate that the model with a stereo input outperforms the original monocular SSZ network. Specifically, the frustum voxel models generated by our Stereo-SSZ model have lower surface distance errors and demonstrate fine details in the reconstructed 3D models.
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