Generator
AI Product Photo Generator on Martini
Generate a product photo on the canvas and keep going — the same image is the upstream of your next video ad. Drop the brand-approved still, pick a backdrop, fan out white-seamless / lifestyle / flat-lay variants in one pass, then wire the chosen frame straight into a Seedance 2 hero spin or a Runway Gen-4 lifestyle cutaway. Built for Shopify owners shipping the next SKU drop, Amazon FBA sellers automating PDP photography, and agencies that have stopped re-booking studio days.
What you can generate
- E-commerce hero shots on white seamless or brand-color backdrops
- Lifestyle scenes in kitchen, bathroom, vanity, or desk environments
- Packaging mockups before the print run is committed
- Brand-color hero compositions with matching backdrop and rim light
- Top-down flat-lay arrangements for skincare, food, and accessories
- Macro detail and texture close-ups for material storytelling
- Amazon listing packshots aligned to marketplace size specs
- PDP hero frames already framed for pan-and-zoom motion
Best Martini workflow
Why this is more than a one-shot generator on Martini.
- Multi-anchor reference is the differentiator — drop the product still, the brand-color script, and the scene reference as separate canvas nodes instead of stuffing them into one prompt.
- The same image node feeds Seedance 2 for the hero spin and Runway Gen-4 for the lifestyle cutaway, so one approved photo becomes the entire ad cut without re-uploading.
- Chain through the ai-product-video-generator feature for the full motion pipeline, then hand off to NLE export for 1:1 / 9:16 / 16:9 cutdowns.
- Save the canvas as a SKU template once the chain works — the next launch reuses every node, and only the product still changes.
- Run the cleanup pass on gpt-image-2 or upscale before the video step; raw artifacts amplify across 24fps.
Recommended models
nano-banana-2
imageStrongest reference adherence to product detail — labels, materials, and packaging text survive scene swaps.
imagen-4
imagePhotoreal premium hero placements with natural-light fidelity for beverage, beauty, and tech SKUs.
flux-kontext
imageEdit-aware product placement into new scenes while preserving the original packaging detail.
seedream
imageEditorial / lifestyle stylistic range when the brief calls for mood-led PDP frames.
gpt-image-2
imageCleanup pass for fine label legibility, color contrast, and edge polish before the video chain.
Prompt examples
Beverage can on white seamless, soft front key plus rim light from camera right, brand-orange backdrop fade, deep contact shadow, 4:5 PDP framing.
White-seamless hero for marketplace listings — keeps the can label crisp and centers the product for pan-and-zoom motion.
Beauty serum dropper bottle on marble vanity, morning daylight from camera left, soft linen draped behind, condensation droplets, 4:5 lifestyle framing.
Lifestyle vanity scene that doubles as the establishing frame for a Seedance 2 macro reveal.
Sneaker on minimal concrete plinth, deep cool shadow, brand-blue accent gel from above, low camera angle, 16:9 hero framing.
Editorial sneaker packshot — the plinth gives the orbit motion in the next step a clean foreground.
Top-down flat-lay of a skincare set on warm linen, soft north-facing window light, gold leaf accents, even spacing, 1:1 social framing.
Flat-lay composition for IG carousel — the symmetry survives lifestyle resequencing without looking generated.
Smartphone retail packaging unboxing scene on walnut desk, sunset key from camera right, ambient fill, focus on packaging seam, 9:16 framing.
Vertical unboxing setup — pre-built for an image-to-video Reels cut.
Candle on wooden side table next to open hardback book, warm tungsten side light, soft bokeh blanket in background, 4:5 framing, deep negative space top-right for headline overlay.
Cozy lifestyle frame that keeps headline space free for ad-creative iteration.
Macro material detail of leather wallet stitching, hard rim light, neutral grey backdrop, shallow depth of field, 1:1 framing for detail card.
Texture-led close-up for the detail-loop step in a multi-shot product cut.
Packaging mockup of a 500ml glass bottle with custom label, studio softbox lighting from front-left, neutral seamless, 1:1 framing for label proof.
Pre-print mockup — surface label drift before the print run, then approve into the video pipeline.
Turn this output into a workflow
Generation is the first node — here's where to take it next.
Wire the chosen still into the /workflows/ai-product-video pipeline as the canvas anchor for the hero spin, lifestyle insert, and detail loop.
Open /features/ai-product-photography for the deep-dive explainer on multi-anchor references, brand-color scripts, and the model whitelist.
Send the approved frame into /features/ai-product-video-generator to become the campaign cut without re-uploading the product image.
Hand the bundle to /features/ai-video-nle-export for clean 1:1 / 9:16 / 16:9 versioning into Premiere or DaVinci.
Pair with /prompts/image/product-photography-prompts for the catalog of paste-ready studio and lifestyle recipes.
Related features
Related how-to guides
Related prompts
Related workflows
Related reading
Frequently asked questions
Why generate a product photo on Martini instead of a single-prompt tool?
Single-prompt tools end at the JPEG. Martini lands the photo on a canvas where the same image node feeds Seedance 2 for the hero spin, Runway Gen-4 for the lifestyle insert, and the NLE export for shipping. The product photo is the upstream of the campaign, not the deliverable.
How do I prevent label and packaging text from drifting?
Use nano-banana-2 as the upstream model, feed the brand-approved still as a reference node, and run a cleanup pass on gpt-image-2 before exporting. Re-describing the label in the prompt fights the reference and is the most common cause of drift.
Can I generate Amazon-spec packshots?
Yes — generate at the marketplace size, then check the cleanup pass for white-seamless RGB compliance and product-frame ratio. Save the canvas as a template for the next ASIN so the spec re-applies automatically.
What is the difference between this generator and /features/ai-product-photography?
This page is action-oriented — paste a prompt, generate, chain into the next step. The feature page explains the workflow, the multi-anchor reference primitive, and the recommended-model rationale. Use this page to ship; use the feature page to plan.
Do I need a separate tool for the video version?
No. The product photo node on Martini already wires into Seedance 2 / Runway Gen-4 / Kling 3 video nodes on the same canvas — see /workflows/ai-product-video for the end-to-end pipeline.
Can I reuse the canvas for the next SKU?
Yes. Save the chain as a SKU template after the first launch — only the product still and brand-color anchor change for the next product. The lighting, framing, and motion nodes stay locked.
Generate it on the canvas
Open Martini, drop this generator on the canvas, and wire it into the workflow you actually need. Free to start — no card required.