HMPO: Human Motion Prediction in Occluded Environments for Safe Motion Planning
This addresses safety in human-robot interaction for domains like manufacturing or healthcare, but it is incremental as it builds on existing deep learning methods.
The paper tackles the problem of generating collision-free robot trajectories in occluded environments with human obstacles, achieving up to 68% improvement in motion prediction accuracy and 38% reduction in joint position error.
We present a novel approach to generate collision-free trajectories for a robot operating in close proximity with a human obstacle in an occluded environment. The self-occlusions of the robot can significantly reduce the accuracy of human motion prediction, and we present a novel deep learning-based prediction algorithm. Our formulation uses CNNs and LSTMs and we augment human-action datasets with synthetically generated occlusion information for training. We also present an occlusion-aware planner that uses our motion prediction algorithm to compute collision-free trajectories. We highlight performance of the overall approach (HMPO) in complex scenarios and observe upto 68% performance improvement in motion prediction accuracy, and 38% improvement in terms of error distance between the ground-truth and the predicted human joint positions.