6% Weight - Sharpness Detection

Edge Sharpness Analysis

Depth-of-Field Consistency

Analyzes sharpness distribution across the image and validates depth-of-field consistency. AI often produces unnaturally uniform sharpness.

78-86%
Accuracy
6%
Weight
Edge Sharpness Analysis

Frequently Asked Questions

What is edge sharpness distribution?

Real photos have varying sharpness based on focus distance - objects at the focal plane are sharp while others are blurred. AI often produces uniformly sharp images throughout.

How is depth-of-field analyzed?

The detector measures sharpness at different estimated depths. Real DoF follows optical laws with smooth blur transitions; AI blur often has abrupt changes.

Why do AI images have uniform sharpness?

AI models don't simulate lens optics. They generate all details equally unless specifically prompted for bokeh, resulting in flat sharpness profiles.

Can AI-generated bokeh be detected?

Yes, AI-generated blur patterns often have unrealistic characteristics like uniform blur circles, incorrect bokeh shapes, or blur that doesn't correlate with depth.

What about photos with f/16 aperture?

Deep depth-of-field photos still have subtle sharpness variations and proper lens characteristics like diffraction softening. AI doesn't replicate these optical properties.

How does this detect upscaled images?

AI upscaling often adds sharpness uniformly. This creates unnaturally consistent edge profiles that differ from optically captured detail.

What is the sharpness coefficient of variation?

This measures how much sharpness varies across the image. Real photos have high variation (0.3-0.8); AI images often have low variation (0.1-0.3).

Are motion blur and DoF blur different?

Yes, motion blur is directional while DoF blur is uniform. AI often confuses these, creating motion-style blur when DoF is intended.

Does sharpening affect detection?

Post-processing sharpening can affect results, but it creates distinctive halo artifacts that the detector also identifies as non-natural patterns.

Why is this weighted at 6%?

Sharpness analysis provides useful signals but can be affected by post-processing and display scaling. It complements other methods rather than serving as a primary detector.

Méthodes associées

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