CVAIROMay 7, 2024

Novel View Synthesis with Neural Radiance Fields for Industrial Robot Applications

arXiv:2405.04345v12 citationsh-index: 7Int Arch Photogramm Remote Sens Spat Inf Sci
Originality Incremental advance
AI Analysis

This work addresses the need for reliable and metric-scaled novel view synthesis in industrial robot applications, though it is incremental as it adapts existing NeRF methods with a new pose determination approach.

The paper tackles the problem of predicting novel view synthesis quality in Neural Radiance Fields (NeRFs) for industrial applications by replacing Structure from Motion (SfM) pre-processing with robot-based camera pose determination, showing that this method achieves similar accuracy to SfM in non-demanding cases and has advantages in challenging scenarios like reflective objects.

Neural Radiance Fields (NeRFs) have become a rapidly growing research field with the potential to revolutionize typical photogrammetric workflows, such as those used for 3D scene reconstruction. As input, NeRFs require multi-view images with corresponding camera poses as well as the interior orientation. In the typical NeRF workflow, the camera poses and the interior orientation are estimated in advance with Structure from Motion (SfM). But the quality of the resulting novel views, which depends on different parameters such as the number and distribution of available images, as well as the accuracy of the related camera poses and interior orientation, is difficult to predict. In addition, SfM is a time-consuming pre-processing step, and its quality strongly depends on the image content. Furthermore, the undefined scaling factor of SfM hinders subsequent steps in which metric information is required. In this paper, we evaluate the potential of NeRFs for industrial robot applications. We propose an alternative to SfM pre-processing: we capture the input images with a calibrated camera that is attached to the end effector of an industrial robot and determine accurate camera poses with metric scale based on the robot kinematics. We then investigate the quality of the novel views by comparing them to ground truth, and by computing an internal quality measure based on ensemble methods. For evaluation purposes, we acquire multiple datasets that pose challenges for reconstruction typical of industrial applications, like reflective objects, poor texture, and fine structures. We show that the robot-based pose determination reaches similar accuracy as SfM in non-demanding cases, while having clear advantages in more challenging scenarios. Finally, we present first results of applying the ensemble method to estimate the quality of the synthetic novel view in the absence of a ground truth.

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