Depth sensing is an essential technology in robotics and many other fields. Many depth sensing (or RGB-D) cameras are available on the market and selecting the best one for your application can be challenging. In this work, we tested four stereoscopic RGB-D cameras that sense the distance by using two images from slightly different views. We empirically compared four cameras (Intel RealSense D435, Intel RealSense D455, StereoLabs ZED 2, and Luxonis OAK-D Pro) in three scenarios: (i) planar surface perception, (ii) plastic doll perception, (iii) household object perception (YCB dataset). We recorded and evaluated more than 3,000 RGB-D frames for each camera. For table-top robotics scenarios with distance to objects up to one meter, the best performance is provided by the D435 camera that is able to perceive with an error under 1 cm in all of the tested scenarios. For longer distances, the other three models perform better, making them more suitable for some mobile robotics applications. OAK-D Pro additionally offers integrated AI modules (e.g., object and human keypoint detection). ZED 2 is overall the best camera which is able to keep the error under 3 cm even at 4 meters. However, it is not a standalone device and requires a computer with a GPU for depth data acquisition. All data (more than 12,000 RGB-D frames) are publicly available at https://rustlluk.github.io/rgbd-comparison.
@ARTICLE{10965625,
author={Rustler, Lukas and Volprecht, Vojtech and Hoffmann, Matej},
journal={IEEE Access},
title={Empirical Comparison of Four Stereoscopic Depth Sensing Cameras for Robotics Applications},
year={2025},
volume={13},
number={},
pages={67564-67577},
keywords={Cameras;Robot vision systems;Robot sensing systems;Sensors;Robots;Graphics processing units;Accuracy;Stereo image processing;Three-dimensional printing;Plastics;Depth sensing;Intel RealSense;Luxonis OAK-D Pro;ZED 2;object detection;RGB-D;segmentation},
doi={10.1109/ACCESS.2025.3560810}}