Synthetic✦ Production-Ready⬡ Open SourceIndustrialSafetyDetectionManufacturingComputer Vision

Suspended Loads in Industrial Environments

Industrial factory scenes featuring heavy machinery transporting suspended loads with precise bounding box annotations for both workers and cargo. Diverse warehouse configurations and varied lighting conditions ensure robust model performance for site safety monitoring.

Sample Frames

20 annotated samples drawn from the train split. Toggle annotations to inspect bounding-box quality.

All images in this dataset are 100% synthetically generated. No real-world footage was used.

Class Distribution

2 annotation classes · 500 total images. Sorted by object count, descending.

Annotation counts
0200400600worker796suspended_load500

Class Balance

Per-class counts, frequency, and average bounding-box area. Sort any column to surface the rarest or most prevalent classes for re-balancing.

2 / 2
Class
Images
with class
Objects
total
Per image
average
Area
% of frame
suspended_load
500
500
1
3.76%
worker
450
796
1.77
0.63%

Co-occurrence Matrix

How frequently pairs of classes appear in the same image. Diagonal cells show standalone image count for that class. Useful for spotting biased or correlated labels.

Pair frequency
workersuspended_load
worker450450
suspended_load450500
Hover any cell for image count0450

Average Object Area

Each rectangle is one class, sized by the average area its bounding boxes occupy as a percentage of the frame. Surfaces tiny vs. dominant objects at a glance.

% of frame
suspended_load3.8%worker0.6%

Spatial Distribution

Where annotations of each class tend to fall across the frame. Brighter regions indicate higher density — useful for detecting positional bias in your training data.

Per-class heatmaps
worker796
suspended_load500
lowhigh density

Model Performance

Validation metrics from a YOLOv8 detector trained on this dataset. Reference checkpoint: yolov8m.pt.

Validation set
These results are based on training on 100% synthetic images from this dataset, validated on 100% real-world held-out images. For production deployments, AnywayLabs.ai recommends mixing 10–25% real images into your training set.
0.9929
mAP@0.5
0.7866
mAP@0.5:0.95
0.9867
Precision
0.9917
Recall

Validation curves over training

mAP@0.5
0.000.250.500.7511316191120
mAP@0.5:0.95
0.000.250.500.7511316191120
Precision
0.000.250.500.7511316191120
Recall
0.000.250.500.7511316191120

Dataset Metadata

Annotation formatYOLO
Total images500
Classes2
ResolutionMixed
LicenseCC BY 4.0
Last updated2026-05

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