Scalable Modular Synthetic Data Generation for Advancing Aerial Autonomy
Mehrnaz Sabet, Praveen Palanisamy, Sakshi Mishra

TL;DR
This paper presents ASDA, a scalable framework for synthetic aerial data augmentation that automatically generates diverse datasets to improve drone model training and generalization.
Contribution
We introduce a novel, scalable, and automated data augmentation framework for aerial synthetic data generation, enhancing diversity and efficiency for drone training applications.
Findings
ASDA effectively generates diverse aerial datasets.
The framework improves training model performance.
It reduces manual effort in data preparation.
Abstract
One major barrier to advancing aerial autonomy has been collecting large-scale aerial datasets for training machine learning models. Due to costly and time-consuming real-world data collection through deploying drones, there has been an increasing shift towards using synthetic data for training models in drone applications. However, to increase widespread generalization and transferring models to real-world, increasing the diversity of simulation environments to train a model over all the varieties and augmenting the training data, has been proved to be essential. Current synthetic aerial data generation tools either lack data augmentation or rely heavily on manual workload or real samples for configuring and generating diverse realistic simulation scenes for data collection. These dependencies limit scalability of the data generation workflow. Accordingly, there is a major challenge in…
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Taxonomy
TopicsRobotics and Sensor-Based Localization · Advanced Neural Network Applications · Computer Graphics and Visualization Techniques
MethodsBalanced Selection
