Active Alignments of Lens Systems with Reinforcement Learning
- URL: http://arxiv.org/abs/2503.02075v1
- Date: Mon, 03 Mar 2025 21:57:08 GMT
- Title: Active Alignments of Lens Systems with Reinforcement Learning
- Authors: Matthias Burkhardt, Tobias Schmähling, Michael Layh, Tobias Windisch,
- Abstract summary: We propose a reinforcement learning (RL) approach that learns exclusively in the pixel space of the sensor output.<n>We conduct an extensive benchmark study and show that our approach surpasses other methods in speed, precision, and robustness.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Aligning a lens system relative to an imager is a critical challenge in camera manufacturing. While optimal alignment can be mathematically computed under ideal conditions, real-world deviations caused by manufacturing tolerances often render this approach impractical. Measuring these tolerances can be costly or even infeasible, and neglecting them may result in suboptimal alignments. We propose a reinforcement learning (RL) approach that learns exclusively in the pixel space of the sensor output, eliminating the need to develop expert-designed alignment concepts. We conduct an extensive benchmark study and show that our approach surpasses other methods in speed, precision, and robustness. We further introduce relign, a realistic, freely explorable, open-source simulation utilizing physically based rendering that models optical systems with non-deterministic manufacturing tolerances and noise in robotic alignment movement. It provides an interface to popular machine learning frameworks, enabling seamless experimentation and development. Our work highlights the potential of RL in a manufacturing environment to enhance efficiency of optical alignments while minimizing the need for manual intervention.
Related papers
- Tolerance-Aware Deep Optics [15.445359232123133]
Deep optics has emerged as a promising approach by co-designing optical elements with deep learning algorithms.<n>We present the first end-to-end tolerance-aware optimization framework that incorporates multiple tolerance types into the deep optics design pipeline.<n>Our method combines physics-informed modelling with data-driven training to enhance optical design by accounting for and compensating for structural deviations in manufacturing and assembly.
arXiv Detail & Related papers (2025-02-07T07:42:25Z) - Robotic World Model: A Neural Network Simulator for Robust Policy Optimization in Robotics [50.191655141020505]
We introduce a novel framework for learning world models.<n>By providing a scalable and robust framework, we pave the way for adaptive and efficient robotic systems in real-world applications.
arXiv Detail & Related papers (2025-01-17T10:39:09Z) - RobustCalib: Robust Lidar-Camera Extrinsic Calibration with Consistency
Learning [42.90987864456673]
Current methods for LiDAR-camera extrinsics estimation depend on offline targets and human efforts.
We propose a novel approach to address the extrinsic calibration problem in a robust, automatic, and single-shot manner.
We conduct comprehensive experiments on different datasets, and the results demonstrate that our method achieves accurate and robust performance.
arXiv Detail & Related papers (2023-12-02T09:29:50Z) - Revealing the preference for correcting separated aberrations in joint
optic-image design [19.852225245159598]
We characterize the optics with separated aberrations to achieve efficient joint design of complex systems such as smartphones and drones.
An image simulation system is presented to reproduce the genuine imaging procedure of lenses with large field-of-views.
Experiments reveal that the preference for correcting separated aberrations in joint design is as follows: longitudinal chromatic aberration, lateral chromatic aberration, spherical aberration, field curvature, and coma, with astigmatism coming last.
arXiv Detail & Related papers (2023-09-08T14:12:03Z) - Computational Optics for Mobile Terminals in Mass Production [17.413494778377565]
We construct the perturbed lens system model to illustrate the relationship between the system parameters and the deviated frequency response measured from photographs.
An optimization framework is proposed based on this model to build proxy cameras from the machining samples' SFRs.
Engaging with the proxy cameras, we synthetic data pairs, which encode the optical aberrations and the random manufacturing biases, for training the aberration-based algorithms.
arXiv Detail & Related papers (2023-05-10T04:17:33Z) - EasyHeC: Accurate and Automatic Hand-eye Calibration via Differentiable
Rendering and Space Exploration [49.90228618894857]
We introduce a new approach to hand-eye calibration called EasyHeC, which is markerless, white-box, and delivers superior accuracy and robustness.
We propose to use two key technologies: differentiable rendering-based camera pose optimization and consistency-based joint space exploration.
Our evaluation demonstrates superior performance in synthetic and real-world datasets.
arXiv Detail & Related papers (2023-05-02T03:49:54Z) - SAM-RL: Sensing-Aware Model-Based Reinforcement Learning via
Differentiable Physics-Based Simulation and Rendering [49.78647219715034]
We propose a sensing-aware model-based reinforcement learning system called SAM-RL.
With the sensing-aware learning pipeline, SAM-RL allows a robot to select an informative viewpoint to monitor the task process.
We apply our framework to real world experiments for accomplishing three manipulation tasks: robotic assembly, tool manipulation, and deformable object manipulation.
arXiv Detail & Related papers (2022-10-27T05:30:43Z) - Toward Fast, Flexible, and Robust Low-Light Image Enhancement [87.27326390675155]
We develop a new Self-Calibrated Illumination (SCI) learning framework for fast, flexible, and robust brightening images in real-world low-light scenarios.
Considering the computational burden of the cascaded pattern, we construct the self-calibrated module which realizes the convergence between results of each stage.
We make comprehensive explorations to SCI's inherent properties including operation-insensitive adaptability and model-irrelevant generality.
arXiv Detail & Related papers (2022-04-21T14:40:32Z) - Generic Lithography Modeling with Dual-band Optics-Inspired Neural
Networks [52.200624127512874]
We introduce a dual-band optics-inspired neural network design that considers the optical physics underlying lithography.
Our approach yields the first published via/metal layer contour simulation at 1nm2/pixel resolution with any tile size.
We also achieve 85X simulation speedup over traditional lithography simulator with 1% accuracy loss.
arXiv Detail & Related papers (2022-03-12T08:08:50Z) - A parameter refinement method for Ptychography based on Deep Learning
concepts [55.41644538483948]
coarse parametrisation in propagation distance, position errors and partial coherence frequently menaces the experiment viability.
A modern Deep Learning framework is used to correct autonomously the setup incoherences, thus improving the quality of a ptychography reconstruction.
We tested our system on both synthetic datasets and also on real data acquired at the TwinMic beamline of the Elettra synchrotron facility.
arXiv Detail & Related papers (2021-05-18T10:15:17Z) - Object-based Illumination Estimation with Rendering-aware Neural
Networks [56.01734918693844]
We present a scheme for fast environment light estimation from the RGBD appearance of individual objects and their local image areas.
With the estimated lighting, virtual objects can be rendered in AR scenarios with shading that is consistent to the real scene.
arXiv Detail & Related papers (2020-08-06T08:23:19Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.