Synthetic Data Resources

Our products create unbiased, labeled, synthetic datasets ideal for training top-performing Computer Vision AI models.

Filter Resources : All Resources
images for resource pages miniatures 2 – See How Synthetic Images Transformed Our Weapon Detection Model Training | AI Verse
Blog

See How Synthetic Images Transformed Our Weapon Detection Model Training

The Need for Weapon Detection in Today’s Security Landscape In an era where threats evolve rapidly, the demand for cutting-edge security solutions has never been more critical. Weapon detection technology is a foundational in safeguarding public spaces and critical infrastructures, from airports to schools and corporate offices. Advanced security surveillance systems that can accurately detect […]

images for resource pages miniatures 1 – Smart City Expo World Congress – Innovating Urban Security | AI Verse
Events

Smart City Expo World Congress – Innovating Urban Security

The Smart City Expo World Congress 2024 (November 5-7) is a global platform for exploring cutting-edge urban security and smart city solutions. Attendees will discover the latest advancements and innovations in urban living. Visit Our Booth:Find us at Hall P3, Level 0, Street S, Stand 40 to discuss how our team contributes to smart city […]

untitled design 2 2 – Procedural Engine vs Generative AI: Key Differences for Image Generation | AI Verse
Blog

Procedural Engine vs Generative AI: Key Differences for Image Generation

Procedural Engine vs generative AI represents one of the most important architectural decisions in modern image creation and computer vision training. Both approaches synthesize images artificially, but they differ fundamentally in how they work, how much control they offer, and what results they produce. This guide breaks down the core differences, trade-offs, and ideal use […]

untitled design 3 – Synthetic Data vs. Real-World Data: A Game Changer for AI Model Training | AI Verse
Blog

Synthetic Data vs. Real-World Data: A Game Changer for AI Model Training

In the realm of AI and machine learning, the debate between synthetic datasets and real-world images is a pivotal one. Both have their merits, but when it comes to efficiency, flexibility, and performance, synthetic data is emerging as the clear frontrunner. Let’s explore why. Speed, Cost, and Flexibility: The Case for Synthetic Data Building a […]

untitled design 1 2 – Discover how synthetic data revolutionized our tank detection model training. | AI Verse
Blog

Discover how synthetic data revolutionized our tank detection model training.

Training a tank detection model using conventional data presents several challenges. One of the biggest obstacles is the scarcity of labeled data. Tanks are not everyday objects, and acquiring enough annotated images for training is extremely difficult due to confidentiality of images.

Synthetic
Datasets

versus – AI Verse synthetic image dataset for computer vision training | AI Verse

Real World
Images

Speed, Cost, Flexibility

You can build a synthetic dataset for a fraction of the cost of a real-world image dataset. A 3D scene and a fully labeled image matching your use case are produced in seconds. Easily extend your dataset to match each new edge case throughout your development cycle.

Data Collection

Even if possible, in most cases, collecting real-world images is a daunting task. Privacy issues may also complicate the process. Procedural generation of synthetic datasets is a game changer. You create your own images in a few clicks and avoid any privacy issues.

Labelling

You can build a synthetic dataset for a fraction of the cost of a real-world image dataset. A 3D scene and a fully labeled image matching your use case are produced in seconds. Easily extend your dataset to match each new edge case throughout your development cycle.

Optimization

Even if possible, in most cases, collecting real-world images is a daunting task. Privacy issues may also complicate the process. Procedural generation of synthetic datasets is a game changer. You create your own images in a few clicks and avoid any privacy issues.

Winner:

Synthetic Datasets!

The Benchmarks prove it

Research Summary

To evaluate the efficiency of synthetic datasets to train a model, we conducted a series of benchmarks, comparing trainings done with synthetic images against trainings done with real-world images (COCO dataset). As of today, the results were established for two different models (Yolo V5 and Mask R CNN), for three different tasks of increasing difficulty (sofa, bed and potted plant detection). We conducted these tests with a 1000 assets in our database.

Procedure

Real-world image training datasets were extracted from MS Coco (HERE) for each class of interest. We obtained 3682 images containing the label “bed”, 4618 containing the label “couch” and 4624 images containing the label “potted plant” from MS Coco.

For each test, we used our procedural engine to generate a synthetic dataset. For “beds” detection, we used a 63k synthetic dataset, for “couches”, 72k synthetic images and for “potted plants”, 99k images.

We also used Imagenet (HERE) for pre-training models in several experiments.

Validation Datasets were constructed for each class of interest from OpenImage (HERE). We extracted 199 images containing the label “bed”, 799 images for the label “couch” and 1533 images for the label “plant”.

Conclusions

The domain gap between training sets and validation sets or live images is not exclusive to synthetic datasets. It is a general issue which also exists from real images to real images.


In fact, synthetic images are generally more efficient than real images for training models. This might seem counter intuitive because synthetic images are less realistic than real images.


However, image realism is not key to train a model due to the domain gap. Variance and distribution of the parameters are the crucial factors to obtain a model which generalizes well.


Variance and distribution of parameters are not easily controllable with real images.


Models may be successfully pre-trained on synthetic images and fine-tuned on real images or the other way round. It depends on the task and on the model.

BEDS

AI Verse Synthetic Dataset Sample Images

AI Verse synthetic image dataset for computer vision training – training data example | AI Verse
AI Verse synthetic image dataset for computer vision training – data visualization | AI Verse
AI Verse synthetic image dataset for computer vision training – workflow diagram | AI Verse
AI Verse synthetic image dataset for computer vision training – visual example | AI Verse
AI Verse synthetic image dataset for computer vision training – comparison chart | AI Verse
AI Verse synthetic image dataset for computer vision training – supporting diagram | AI Verse
AI Verse synthetic image dataset for computer vision training – infographic | AI Verse
AI Verse synthetic image dataset for computer vision training – featured illustration | AI Verse
AI Verse synthetic image dataset for computer vision training – concept illustration | AI Verse
bed 10 – AI Verse synthetic image dataset for computer vision training | AI Verse

Bed: RCNN

bed rcnn 2 – AI Verse synthetic image dataset for computer vision training | AI Verse

Bed: YOLO

bed yolo 2 2 – AI Verse synthetic image dataset for computer vision training | AI Verse

PLANTS & COUCHES

AI Verse Synthetic Dataset Sample Images

plants couches 1 – AI Verse synthetic image dataset for computer vision training | AI Verse
plants couches 6 – AI Verse synthetic image dataset for computer vision training | AI Verse
plants couches 2 – AI Verse synthetic image dataset for computer vision training | AI Verse
plants couches 7 – AI Verse synthetic image dataset for computer vision training | AI Verse
plants couches 3 – AI Verse synthetic image dataset for computer vision training | AI Verse
plants couches 8 – AI Verse synthetic image dataset for computer vision training | AI Verse
plants couches 4 – AI Verse synthetic image dataset for computer vision training | AI Verse
plants couches 9 – AI Verse synthetic image dataset for computer vision training | AI Verse
plants couches 5 – AI Verse synthetic image dataset for computer vision training | AI Verse
plants couches 10 – AI Verse synthetic image dataset for computer vision training | AI Verse

Potted Plants: RCNN

plants rcnn 2 – AI Verse synthetic image dataset for computer vision training | AI Verse

Potted Plants: YOLO

plants yolo 2 – AI Verse synthetic image dataset for computer vision training | AI Verse

Couch: RCNN

couch rcnn 2 – AI Verse synthetic image dataset for computer vision training | AI Verse

Couch: YOLO

couch yolo 2 2 – AI Verse synthetic image dataset for computer vision training | AI Verse
ai verse logo footer – AI Verse synthetic image dataset for computer vision training | AI Verse

Ready to Eliminate Your Data Bottleneck?