Sensorimotor learning for artificial body perception
Diez-Valencia, German, Ohashi, Takuya, Lanillos, Pablo, Cheng, Gordon
–arXiv.org Artificial Intelligence
The great challenge was to generalize the reconstruction of the arm for any background without using segmentation. For that purpose, several background images were synthetically generated and were overlaid by automated labelled masks (i.e., boolean mask of the arm in the visual field) by means of background subtraction (Figure 1(b)). An example of the results of the generated arm given the a joint angle configuration is shown in Figure 1(c). The most right generated image shows difficulties of the model to properly reconstruct the robot arm when the majority of it is outside the field of view. Anyhow, the statistical evaluation of the network, over all experiments, showed an accuracy of 84.4% when comparing the matching between the original versus the generated image mask.
arXiv.org Artificial Intelligence
Jan-15-2019