← 返回 Skills 市场
higgsfield

Higgsfield Product Photoshoot

作者 Yerzat Dulat · GitHub ↗ · v1.0.0 · MIT-0
cross-platform ⚠ suspicious
50
总下载
0
收藏
0
当前安装
1
版本数
在 OpenClaw 中安装
/install higgsfield-product-photoshoot
功能描述
Generate brand-quality product images via mode-specific prompt enhancement on Higgsfield's gpt_image_2 model. The single entry point for any professional bra...
使用说明 (SKILL.md)

Product Photoshoot

Brand-image generation via the higgsfield product-photoshoot create command. The CLI calls a backend prompt enhancer that holds mode-specific photography vocabulary and structural templates, then submits to gpt_image_2 and returns image URLs.

Step 0 — Bootstrap

Before any other command:

  1. If higgsfield is not on $PATH, install it:
    curl -fsSL https://raw.githubusercontent.com/higgsfield-ai/cli/main/install.sh | sh
    
  2. If higgsfield account status fails with Session expired / Not authenticated, ask the user to run higgsfield auth login (interactive) and wait for confirmation.

UX Rules

  1. Be concise. Print only image URLs in the final reply.
  2. Detect language, respond in it. Mode names and CLI flags stay English.
  3. Ask at most 4 short questions before submitting. Use labeled options, never open-ended.
  4. Skip questions whose answer is obvious from context (uploaded image, prior turn, brand memory).
  5. Never write the gpt_image_2 prompt yourself — backend assembles it.
  6. Polling is silent. Wait until URLs are ready, then deliver.

Modes

Mode When user wants…
product_shot Product on neutral / studio / catalog background
lifestyle_scene Product in real-world environment, hands, action, atmosphere
closeup_product_with_person Tight crop with hands / partial face — beauty application, holding, demonstrating
pinterest_pin Vertical 2:3 Pinterest-native aesthetic, moodboard feel
hero_banner Wide-format website / email / campaign header
social_carousel 3–10 connected slides for IG / LinkedIn / Facebook
ad_creative_pack Coordinated pack of static ad variants for Meta / TikTok / Pinterest / Google Ads
virtual_model_tryout Product worn or used by an AI-rendered model
conceptual_product Surreal / CGI-style / levitating / splash / sculptural product
restyle Transform an existing image's aesthetic, mood, or seasonal context

Mode selection

Pick by intent, not surface keyword. When two modes could apply, prefer the more specific one.

  • product + neutral / clean / white / studio / catalog / Shopify → product_shot
  • product + scene / in use / kitchen / outdoor / cafe / gym → lifestyle_scene
  • hands holding / face with product / beauty application / demonstrating → closeup_product_with_person
  • Pinterest, pin, vertical pin → pinterest_pin
  • hero, banner, website header, landing page, email header, wide format → hero_banner
  • carousel, slide post, multi-slide, swipeable → social_carousel
  • ads, ad pack, paid social, Meta / TikTok / Pinterest ads → ad_creative_pack
  • model wearing, virtual try-on, on body, fashion shoot, lookbook → virtual_model_tryout
  • levitating, floating, splash, frozen motion, surreal, CGI, sculptural → conceptual_product
  • modify EXISTING image's aesthetic, mood, season — without changing subject → restyle

Tie-breakers:

  • "Pinterest pin of my product on a kitchen counter" → pinterest_pin (Pinterest is the platform)
  • "Hero banner showing my product in use" → hero_banner (banner format wins)
  • "Carousel of my product in different scenes" → social_carousel (multi-slide wins)
  • "Closeup of person applying my serum" → closeup_product_with_person (specific genre wins)

Pre-generation interview

Ask 3–4 short questions before submitting. Always labeled options, never open-ended. Skip a question whose answer is obvious from context.

Type A — uploaded a product photo, "make me images / photoshoots"

  1. How many? [1 / 3 / 5]
  2. What style/mood? [Clean studio / Lifestyle / Conceptual / With a model / Other]
  3. Where will you use them? [Shopify / Instagram / Pinterest / Paid ads / Website hero]
  4. Brand colors to match? (skip if obvious)

Type B — uploaded a product photo, named a use case

E.g. "make ads for my product", "make a Pinterest pin", "make a hero banner". Mode is obvious. Ask only the gaps:

  1. How many? (if multi-output mode)
  2. What's the offer / mood / hook?
  3. Anything in particular to emphasize?

Type C — text only, no product photo

  1. Can you upload a product photo? (preferred — much higher fidelity)
  2. If not, describe the product — category, packaging, color, distinctive features.
  3. What style? (same options as Type A)
  4. Where will you use it?

Type D — uploaded existing image, "redo / change vibe / different version"

restyle

  1. What aesthetic? [Clean girl / Cottagecore / Quiet luxury / Dark academia / Y2K / Other]
  2. Seasonal context? [Christmas / Valentine's / Halloween / Black Friday / None]
  3. What to preserve, what to change? (only if ambiguous)

Type E — model wearing a product (fashion, accessories)

virtual_model_tryout

  1. Model archetype? (suggest 2–3 based on brand audience)
  2. Environment? [Studio clean / Outdoor natural / Street style / Editorial / Home cozy]
  3. Framing? [Full body / Three-quarter / Waist up / Closeup on product area]

Type F — vague request, unclear subject

E.g. "make me something cool for my brand".

  1. What product or topic?
  2. Goal? [Sell on a marketplace / Build awareness / Run paid ads / Update website]
  3. Upload a reference image?

After answers → return to the relevant Type A–E.

Generation

Single command. Backend assembles the final prompt and submits to gpt_image_2. URLs print on stdout.

higgsfield product-photoshoot create \
  --mode \x3Cmode> \
  --prompt "\x3Cshort user-intent description from interview answers>" \
  [--image \x3Cpath-or-upload-id>]... \
  [--count \x3C1-10>] \
  [--aspect_ratio \x3Coverride>]

Examples:

higgsfield product-photoshoot create \
  --mode lifestyle_scene \
  --prompt "bottle of cold-brew on a sunlit kitchen counter, IG feed" \
  --image bottle.jpg \
  --count 3
higgsfield product-photoshoot create \
  --mode pinterest_pin \
  --prompt "vertical pin for my candle brand, cottagecore mood" \
  --image candle.jpg
higgsfield product-photoshoot create \
  --mode restyle \
  --prompt "Christmas version, quiet-luxury aesthetic" \
  --image existing-shot.jpg

Image inputs

--image accepts a local file path (auto-uploaded) OR an existing upload UUID. Repeat the flag for multiple references.

Multi-variant

--count 3 returns 3 distinct image URLs. Backend asks the enhancer to vary preset, lighting, angle, and palette across variants — they will not be paraphrased copies of one another.

For social_carousel and ad_creative_pack, count = number of slides / variants in the pack. Backend locks the visual system across all slides automatically.

Aspect ratio

Backend picks a sensible default per mode. Override with --aspect_ratio only if the user explicitly asks for a different one. Allowed values: 1:1, 4:5, 5:4, 3:4, 4:3, 2:3, 3:2, 9:16, 16:9.

Delivering results

Print the image URLs as a short bulleted list. No JSON, no IDs, no internal model names, no enhanced prompt text. If a job failed, mention it briefly with the failure status.

3 lifestyle shots ready:
- https://cdn.higgsfield.ai/.../job_abc.jpg
- https://cdn.higgsfield.ai/.../job_def.jpg
- https://cdn.higgsfield.ai/.../job_ghi.jpg

What this skill does NOT do

  • Does not write gpt_image_2 prompts directly. Backend owns prompt assembly.
  • Does not auto-pick a different image-gen model. Always gpt_image_2.
  • Does not replace higgsfield-generate Marketing Studio for branded video / avatar workflows.
  • Does not replace higgsfield-generate for raw text-to-image without a product or brand context.

Common mistakes to avoid

  • Asking more than 4 interview questions in a single message.
  • Picking the wrong mode (e.g. product_shot when the user wants a Pinterest pin).
  • Calling higgsfield generate create gpt_image_2 --prompt ... directly instead of higgsfield product-photoshoot create — bypasses the prompt enhancer and produces noticeably worse output.
  • Pasting the assembled prompt back to the user — they want the URLs.
  • Using a --mode value not in the table above.
安全使用建议
Review or manually install the Higgsfield CLI before using this skill, and only provide product photos or brand materials that you are comfortable sending to Higgsfield. There is no artifact evidence of credential theft or destructive behavior, but the remote installer and account-backed external processing deserve care.
功能分析
Type: OpenClaw Skill Name: higgsfield-product-photoshoot Version: 1.0.0 The skill instructions in `SKILL.md` direct the agent to install a CLI tool using a high-risk `curl | sh` pattern from a remote GitHub repository (`https://raw.githubusercontent.com/higgsfield-ai/cli/main/install.sh`). While this appears to be a standard installation method for the legitimate Higgsfield AI service, the use of unverified remote script execution and the requirement for `Bash` tool access to run CLI commands constitute significant security risks. No evidence of intentional malice or data exfiltration was found, but the bootstrap process and shell dependencies align with the criteria for a suspicious classification.
能力评估
Purpose & Capability
The stated purpose is coherent: SKILL.md says it generates product photos through `higgsfield product-photoshoot create` and submits to `gpt_image_2`, but that also means user product/brand inputs are sent to an external backend.
Instruction Scope
The mode-selection and interview rules are focused on product photography workflows. The broad instruction to use this skill for product/brand creative appears purpose-aligned.
Install Mechanism
There is no install spec, but SKILL.md instructs runtime installation with `curl -fsSL https://raw.githubusercontent.com/higgsfield-ai/cli/main/install.sh | sh`, an unpinned remote shell script.
Credentials
The registry declares no required binaries or credentials, while SKILL.md expects the `higgsfield` CLI and an authenticated Higgsfield session. This is purpose-aligned but under-declared.
Persistence & Privilege
SKILL.md checks `higgsfield account status` and asks the user to run `higgsfield auth login` if needed, meaning the workflow uses the user's local Higgsfield account session.
如何使用
  1. 确保已安装 OpenClaw(本地或 Docker 部署)
  2. 在对话框中输入安装命令:/install higgsfield-product-photoshoot
  3. 安装完成后,直接呼叫该 Skill 的名称或使用 /higgsfield-product-photoshoot 触发
  4. 根据 Skill 的参数说明提供必要输入,即可获得结构化输出
版本历史
v1.0.0
Initial release of Higgsfield Product Photoshoot skill. - Provides a CLI tool to generate brand-quality product images using mode-specific prompt enhancements. - Supports multiple generation modes, including studio, lifestyle, Pinterest pin, hero banner, carousel, ad packs, virtual try-on, conceptual, and restyle. - Includes an interactive pre-generation interview with concise, labeled questions to refine outputs. - Delivers only image URLs as output, with silent polling until results are ready. - Not intended for unbranded text-to-image, marketing videos, or Soul Character training.
元数据
Slug higgsfield-product-photoshoot
版本 1.0.0
许可证 MIT-0
累计安装 0
当前安装数 0
历史版本数 1
常见问题

Higgsfield Product Photoshoot 是什么?

Generate brand-quality product images via mode-specific prompt enhancement on Higgsfield's gpt_image_2 model. The single entry point for any professional bra... 它是一个面向 Claude Code / OpenClaw 的 AI Agent Skill 插件,目前累计下载 50 次。

如何安装 Higgsfield Product Photoshoot?

在 OpenClaw 或 Claude Code 对话框中运行命令「/install higgsfield-product-photoshoot」即可一键安装,无需额外配置。

Higgsfield Product Photoshoot 是免费的吗?

是的,Higgsfield Product Photoshoot 完全免费,采用 MIT-0 许可证,可自由下载、安装和使用。

Higgsfield Product Photoshoot 支持哪些平台?

Higgsfield Product Photoshoot 跨平台运行,可在任意部署了 OpenClaw / Claude Code 的环境中使用(cross-platform)。

谁开发了 Higgsfield Product Photoshoot?

由 Yerzat Dulat(@higgsfield)开发并维护,当前版本 v1.0.0。

💬 留言讨论