Prediction of Manipulation Actions
Cornelia Ferm\"uller, Fang Wang, Yezhou Yang, Konstantinos, Zampogiannis, Yi Zhang, Francisco Barranco, Michael Pfeiffer

TL;DR
This paper presents a recurrent neural network approach to predict dexterous manipulation actions from video, closely matching human prediction skills and also estimating finger forces, advancing real-time action understanding.
Contribution
The paper introduces a novel RNN-based method for predicting manipulation actions and forces from video data, demonstrating performance comparable to humans.
Findings
System closely matches human prediction accuracy
Able to predict both actions and finger forces
Effective on multiple datasets
Abstract
Looking at a person's hands one often can tell what the person is going to do next, how his/her hands are moving and where they will be, because an actor's intentions shape his/her movement kinematics during action execution. Similarly, active systems with real-time constraints must not simply rely on passive video-segment classification, but they have to continuously update their estimates and predict future actions. In this paper, we study the prediction of dexterous actions. We recorded from subjects performing different manipulation actions on the same object, such as "squeezing", "flipping", "washing", "wiping" and "scratching" with a sponge. In psychophysical experiments, we evaluated human observers' skills in predicting actions from video sequences of different length, depicting the hand movement in the preparation and execution of actions before and after contact with the…
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Taxonomy
TopicsHuman Pose and Action Recognition · Human Motion and Animation · Video Analysis and Summarization
