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Benchmark before comparison

AI product photography benchmark template for ecommerce.

Run a small product truth test before claiming an AI product photography tool is good enough for store, marketplace, landing page, or ad use.

Direct answer: A useful AI product photography benchmark tests multiple product categories, multiple scene types, and product truth failures, then records publish, repair, or reject decisions.
Test matrix

Test five product categories across three scene types.

Bottle or jar

Scenes: studio background, lifestyle surface, paid social crop

Failure risk: label drift, reflection drift, cap or lid deformation

Box or pouch

Scenes: marketplace image, seasonal background, landing page hero

Failure risk: package geometry, typography, fake badges

Transparent or glossy product

Scenes: white background, dark surface, shelf-style scene

Failure risk: transparency, material finish, contact shadow

Apparel or soft goods

Scenes: flat lay, model-free lifestyle, ad variant

Failure risk: fabric texture, scale, color and pattern drift

Accessory or small object

Scenes: macro crop, bundle image, comparison layout

Failure risk: scale, edges, missing parts, invented accessories

Scoring

Score product truth before judging visual quality.

Pretty outputs are not enough. Each image receives a product truth score before the team decides whether the output can be used commercially.

Identity and variant preserved
Label, logo, and claim text preserved
Material and color truth preserved
Geometry, scale, shadow, and contact points believable
No unsupported badges, discounts, ratings, endorsements, or platform logos

Benchmark decision rules

18-20: publish after final channel review
14-17: repair failed details before publishing
0-13: reject or regenerate with narrower edit scope