Synthetica: Large Scale Synthetic Data for Robot Perception
Ritvik Singh, Jingzhou Liu, Karl Van Wyk, Yu-Wei Chao, Jean-Francois, Lafleche, Florian Shkurti, Nathan Ratliff, Ankur Handa

TL;DR
Synthetica introduces a scalable synthetic data generation method using photorealistic rendering to train real-time, high-accuracy object detectors for robotics, significantly improving robustness and speed in real-world applications.
Contribution
The paper presents a novel large-scale synthetic data generation approach that enhances sim-to-real transfer for object detection in robotics, achieving state-of-the-art accuracy and real-time performance.
Findings
Generated 2.7 million images for training.
Achieved 50-100Hz detection speed, outperforming previous SOTA.
Demonstrated effective transfer to real-world robotic scenarios.
Abstract
Vision-based object detectors are a crucial basis for robotics applications as they provide valuable information about object localisation in the environment. These need to ensure high reliability in different lighting conditions, occlusions, and visual artifacts, all while running in real-time. Collecting and annotating real-world data for these networks is prohibitively time consuming and costly, especially for custom assets, such as industrial objects, making it untenable for generalization to in-the-wild scenarios. To this end, we present Synthetica, a method for large-scale synthetic data generation for training robust state estimators. This paper focuses on the task of object detection, an important problem which can serve as the front-end for most state estimation problems, such as pose estimation. Leveraging data from a photorealistic ray-tracing renderer, we scale up data…
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Taxonomy
TopicsImage Processing and 3D Reconstruction · Medical Image Segmentation Techniques · Robotics and Sensor-Based Localization
