Object Finding in Cluttered Scenes Using Interactive Perception
This addresses the challenge of efficient object search in complex environments for robotics, representing an incremental improvement over heuristic-based methods.
The paper tackles the problem of object finding in cluttered scenes by proposing a reinforcement learning-based interactive perception system, achieving over 88% success rate in real-world robotic experiments.
Object finding in clutter is a skill that requires perception of the environment and in many cases physical interaction. In robotics, interactive perception defines a set of algorithms that leverage actions to improve the perception of the environment, and vice versa use perception to guide the next action. Scene interactions are difficult to model, therefore, most of the current systems use predefined heuristics. This limits their ability to efficiently search for the target object in a complex environment. In order to remove heuristics and the need for explicit models of the interactions, in this work we propose a reinforcement learning based active and interactive perception system for scene exploration and object search. We evaluate our work both in simulated and in real-world experiments using a robotic manipulator equipped with an RGB and a depth camera, and compare our system to two baselines. The results indicate that our approach, trained in simulation only, transfers smoothly to reality and can solve the object finding task efficiently and with more than 88% success rate.