Paper ID: 2503.16629 • Published Mar 20, 2025
Utilizing Reinforcement Learning for Bottom-Up part-wise Reconstruction of 2D Wire-Frame Projections
Julian Ziegler, Patrick Frenzel, Mirco Fuchs
Leipzig University of Applied Sciences
TL;DR
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This work concerns itself with the task of reconstructing all edges of an
arbitrary 3D wire-frame model projected to an image plane. We explore a
bottom-up part-wise procedure undertaken by an RL agent to segment and
reconstruct these 2D multipart objects. The environment's state is represented
as a four-colour image, where different colours correspond to background, a
target edge, a reconstruction line, and the overlap of both. At each step, the
agent can transform the reconstruction line within a four-dimensional action
space or terminate the episode using a specific termination action. To
investigate the impact of reward function formulations, we tested episodic and
incremental rewards, as well as combined approaches. Empirical results
demonstrated that the latter yielded the most effective training performance.
To further enhance efficiency and stability, we introduce curriculum learning
strategies. First, an action-based curriculum was implemented, where the agent
was initially restricted to a reduced action space, being able to only perform
three of the five possible actions, before progressing to the full action
space. Second, we test a task-based curriculum, where the agent first solves a
simplified version of the problem before being presented with the full, more
complex task. This second approach produced promising results, as the agent not
only successfully transitioned from learning the simplified task to mastering
the full task, but in doing so gained significant performance. This study
demonstrates the potential of an iterative RL wire-frame reconstruction in two
dimensions. By combining optimized reward function formulations with curriculum
learning strategies, we achieved significant improvements in training success.
The proposed methodology provides an effective framework for solving similar
tasks and represents a promising direction for future research in the field.
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