Sim2Real View Invariant Visual Servoing by Recurrent Control
Fereshteh Sadeghi, Alexander Toshev, Eric Jang, Sergey Levine

TL;DR
This paper presents a deep recurrent control system for viewpoint-invariant visual servoing in robotics, capable of learning from simulation and transferring to real-world robots to accurately reach objects from unseen viewpoints.
Contribution
It introduces a novel recurrent controller trained with reinforcement learning that uses memory to handle viewpoint ambiguity without prior calibration.
Findings
Successful transfer from simulation to real robot
Effective servoing on unseen objects and viewpoints
Outperforms traditional methods in viewpoint invariance
Abstract
Humans are remarkably proficient at controlling their limbs and tools from a wide range of viewpoints and angles, even in the presence of optical distortions. In robotics, this ability is referred to as visual servoing: moving a tool or end-point to a desired location using primarily visual feedback. In this paper, we study how viewpoint-invariant visual servoing skills can be learned automatically in a robotic manipulation scenario. To this end, we train a deep recurrent controller that can automatically determine which actions move the end-point of a robotic arm to a desired object. The problem that must be solved by this controller is fundamentally ambiguous: under severe variation in viewpoint, it may be impossible to determine the actions in a single feedforward operation. Instead, our visual servoing system must use its memory of past movements to understand how the actions affect…
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Taxonomy
TopicsAdvanced Vision and Imaging · Image Processing Techniques and Applications · Cell Image Analysis Techniques
