
TL;DR
This paper discusses advancing mobile manipulation in robots by leveraging deep learning, big data, and simulation to develop systems that are robust across diverse and novel environments, moving beyond heuristic methods.
Contribution
It demonstrates how to build scalable, robust mobile manipulation systems trained entirely on synthetic data using deep learning, enabling operation in varied real-world conditions.
Findings
Synthetic data enables effective training for manipulation tasks.
Deep learning improves robustness to environmental variability.
Simulation accelerates development and testing of manipulation algorithms.
Abstract
Providing mobile robots with the ability to manipulate objects has, despite decades of research, remained a challenging problem. The problem is approachable in constrained environments where there is ample prior knowledge of the environment layout and manipulatable objects. The challenge is in building systems that scale beyond specific situational instances and gracefully operate in novel conditions. In the past, researchers used heuristic and simple rule-based strategies to accomplish tasks such as scene segmentation or reasoning about occlusion. These heuristic strategies work in constrained environments where a roboticist can make simplifying assumptions about everything from the geometries of the objects to be interacted with, level of clutter, camera position, lighting, and a myriad of other relevant variables. The work in this thesis will demonstrate how to build a system for…
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Taxonomy
TopicsRobotic Path Planning Algorithms · Robotics and Sensor-Based Localization · Robot Manipulation and Learning
