Anderson, Chase2025-01-072025-01-072024-07https://hdl.handle.net/11299/269167University of Minnesota M.S.E.C.E. thesis. July 2024. Major: Electrical/Computer Engineering. Advisor: Changhyun Choi. 1 computer file (PDF); vii, 73 pages.This thesis presents AGGRO: The Autonomous Gatherer with Guided Retrieval Operations, an innovative robotic system designed to enhance object manipulation in cluttered environments. Building on the foundations of Deep Q-Learning (DQL) and advanced reinforcement learning techniques, AGGRO integrates machine learning, robotics hardware, and sophisticated algorithms to address the "Grasping the Invisible" problem at scale. The system employs a combination of primitive synergies to achieve efficient and precise manipulation of occluded objects. Through comprehensive real-world testing and simulation, the thesis explores various explortation policies, dynamic clutter generation, and the impact of structured clutter scenarios on system performance. The results demonstrate a three policy approach to efficiently reveal targets, fully uncover them, and finally singulate to grasp.enCAD/EDADeep-Q LearningMachine LearningMechanical DesignOpen SourceSelf-Supervised Reinforcement LearningAGGRO: Autonomous Gatherer with Guided Retrieval OperationsThesis or Dissertation