Improving Robotic Grasping on Monocular Images Via Multi-Task Learning and Positional Loss
Abstract
In this paper, we introduce two methods of improving real-time object grasping performance from monocular colour images in an end-to-end CNN architecture. The first is the addition of an auxiliary task during model training (multi-task learning). Our multi-task CNN model improves grasping performance from a baseline average of 72.04% to 78.14% on the large Jacquard grasping dataset when performing a supplementary depth reconstruction task. The second is introducing a positional loss function that emphasises loss per pixel for secondary parameters (gripper angle and width) only on points of an object where a successful grasp can take place. This increases performance from a baseline average of 72.04% to 78.92% as well as reducing the number of training epochs required. These methods can be also performed in tandem resulting in a further performance increase to 79.12% while maintaining sufficient inference speed to afford real-time grasp processing.
Cite
@article{arxiv.2011.02888,
title = {Improving Robotic Grasping on Monocular Images Via Multi-Task Learning and Positional Loss},
author = {William Prew and Toby Breckon and Magnus Bordewich and Ulrik Beierholm},
journal= {arXiv preprint arXiv:2011.02888},
year = {2020}
}
Comments
8 pages, 6 figures, Accepted at the International Conference on Pattern Recognition 2020 (ICPR)