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📄 Abstract
Abstract: Recent advances in generative AI, particularly in computer vision (CV), offer
new opportunities to optimize workflows across industries, including logistics
and manufacturing. However, many AI applications are limited by a lack of
expertise and resources, which forces a reliance on general-purpose models.
Success with these models often requires domain-specific data for fine-tuning,
which can be costly and inefficient. Thus, using synthetic data for fine-tuning
is a popular, cost-effective alternative to gathering real-world data. This
work investigates the impact of synthetic data on the performance of object
detection models, compared to models trained on real-world data only,
specifically within the domain of warehouse logistics. To this end, we examined
the impact of synthetic data generated using the NVIDIA Omniverse Replicator
tool on the effectiveness of object detection models in real-world scenarios.
It comprises experiments focused on pallet detection in a warehouse setting,
utilizing both real and various synthetic dataset generation strategies. Our
findings provide valuable insights into the practical applications of synthetic
image data in computer vision, suggesting that a balanced integration of
synthetic and real data can lead to robust and efficient object detection
models.
Key Contributions
Investigates the impact of synthetic data generated using NVIDIA Omniverse Replicator on object detection model performance in warehouse logistics. It provides a comparative analysis against models trained solely on real-world data, demonstrating the effectiveness of synthetic data for fine-tuning.
Business Value
Offers a cost-effective solution for acquiring training data in specialized domains like warehouse logistics, enabling faster deployment of AI models for tasks such as inventory management and quality control, thereby improving operational efficiency.