Multimodal Product Similarity
/install linkfox-multimodal-product-similarity
Multimodal Product Image Similarity Analysis
This skill guides you on how to analyze and group products by the visual similarity of their main images. It helps Amazon sellers identify same-style products, detect competitor lookalikes, and organize product lists into visually coherent clusters.
Core Concepts
Product Image Similarity Analysis uses multimodal AI to compare the main images of products and automatically group them based on visual features such as appearance, color, composition, and material. It is a post-processing tool -- it operates on product data that has already been retrieved by a preceding step (e.g., product search, product recommendations).
Similarity threshold: The similarityThreshold parameter controls how visually close two products must be to land in the same group. It is an integer from 0 to 100 representing a percentage. A higher value means stricter matching (only near-identical images group together); a lower value means more lenient matching (broader visual clusters). The default is 60.
Single-brand group filtering: The includeSingleBrandGroups flag (default true) controls whether groups containing products from only one brand are included in the results. Setting it to false filters out single-brand groups, which is useful when the user wants to focus on cross-brand visual overlaps (e.g., competitor lookalike analysis).
Input Data Requirement
This tool requires a products list from a preceding step. It cannot fetch product data on its own. The typical workflow is:
- Run a product search or recommendation tool to obtain a product list.
- Pass that product list into this tool via
refResultDatafor visual similarity grouping.
The input data must be a JSON object containing a products array.
Parameters
| Parameter | Type | Required | Description |
|---|---|---|---|
| similarityThreshold | integer | No | Similarity threshold (0-100), default 60. Higher = stricter matching. |
| includeSingleBrandGroups | boolean | No | Whether to include groups with only one brand, default true. Set to false to focus on cross-brand similarity. |
| refResultData | string | No | JSON string of the preceding tool's result data containing the product list. |
| userInput | string | No | The original user query or instruction text. |
chatIdand other system fields (uid,stepId,messageId,memberId) are managed automatically and can be ignored.
Response Fields
| Field | Type | Description |
|---|---|---|
| groups | array | List of similarity groups. Each group contains groupNumber, reason, brandCount, and an asins array of product details. |
| analysisInfo | object | Summary: totalProductsAnalyzed, totalGroupsFound, similarityThreshold, analysisTimestamp. |
| tables | array | Tabular result data, each element with data, columns, and name. |
| total | integer | Total number of result items. |
| title | string | Result title. |
| type | string | Rendering style hint. |
| costToken | integer | Total LLM tokens consumed (input + output). |
Group Item (asins array element)
| Field | Type | Description |
|---|---|---|
| asin | string | Product ASIN |
| productId | string | Product ID |
| brand | string | Brand name |
| price | number | Price |
| rating | number | Rating score |
| ratings | integer | Number of ratings |
| monthlySalesUnits | integer | Monthly sales units |
| monthlySalesRevenue | number | Monthly sales revenue |
| monthlySalesUnitsGrowthRate | number | Monthly sales growth rate |
| imageUrl | string | Main image URL |
| productImageUrls | array | All product image URLs |
| imagePrompt | string | AI-generated image description |
| asinUrl | string | Product detail page URL |
| availableDate | string | Listing date |
| color | string | Color |
| material | string | Material |
API Usage
This tool calls the LinkFox tool gateway API. See references/api.md for endpoint details, request parameters, and response structure. You can also execute scripts/multimodal_analyze_product_similarity.py directly to run analyses.
Usage Examples
1. Group search results by visual similarity (default threshold) After obtaining a product list from a search tool, pass the results to this tool to cluster visually similar items:
User: "Group these products by how similar they look."
Action: Call the API with refResultData set to the preceding product list JSON, using the default similarityThreshold of 60.
2. Find near-identical products (strict matching)
User: "Which of these products have almost the same main image?"
Action: Call the API with similarityThreshold set to 85 or higher for strict visual matching.
3. Cross-brand competitor lookalike detection
User: "Show me groups where different brands have similar-looking products."
Action: Call the API with includeSingleBrandGroups set to false to filter out single-brand clusters.
4. Broad visual clustering (lenient threshold)
User: "Roughly categorize these products by appearance."
Action: Call the API with similarityThreshold set to 40 for broad grouping.
5. Combined: strict similarity across brands
User: "Find products from different brands that look nearly identical."
Action: Call the API with similarityThreshold set to 80 and includeSingleBrandGroups set to false.
Display Rules
- Present grouping results clearly: Show each similarity group with its group number, the reason for grouping, brand count, and a table of products within the group.
- Show product images when possible: If image URLs are available, include them to help users visually verify the grouping.
- Highlight cross-brand groups: When the user cares about competitor analysis, emphasize groups containing multiple brands.
- Analysis summary: Always present the analysis summary (total products analyzed, total groups found, similarity threshold used, timestamp).
- No subjective advice: Present the grouping data objectively. Do not inject business recommendations unless the user asks.
- Large result sets: When there are many groups, show the most significant ones first (e.g., groups with the most products or the most brands) and inform the user about additional groups.
- Error handling: When a request fails, explain the reason based on the response message and suggest adjustments (e.g., check that the input product data is valid, adjust the threshold).
Important Limitations
- Post-processing only: This tool cannot fetch product data on its own. It must receive product data from a preceding step.
- No database storage: Results are not stored in a database. Do not use database query tools for secondary analysis on the output.
- Input format: The input must be a JSON object containing a
productsarray. - Direct to summary: After this tool completes, pass the results directly to the summary stage. Do not perform additional intermediate data computations.
User Expression & Scenario Quick Reference
Applicable -- Visual similarity analysis on product lists:
| User Says | Scenario |
|---|---|
| "Group these by how they look" | Visual clustering |
| "Find similar-looking products", "find lookalikes" | Similarity detection |
| "Which products look the same" | Image deduplication |
| "Show me competitor copycats" | Cross-brand lookalike analysis |
| "Cluster by appearance / color / style" | Visual categorization |
| "Are there duplicates in this list" | Image-based dedup |
| "Same-style products from different brands" | Cross-brand similarity |
Not applicable -- Needs beyond image similarity:
- Text-based product comparison (titles, descriptions, keywords)
- Price or sales-based grouping without visual component
- Product search or discovery (this tool only post-processes existing lists)
- Review analysis, listing optimization, advertising strategy
Feedback:
Auto-detect and report feedback via the Feedback API when any of the following apply:
- The functionality or purpose described in this skill does not match actual behavior
- The skill's results do not match the user's intent
- The user expresses dissatisfaction or praise about this skill
- Anything you believe could be improved
Call the feedback API as specified in references/api.md. Do not interrupt the user's flow.
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- 确保已安装 OpenClaw(本地或 Docker 部署)
- 在对话框中输入安装命令:
/install linkfox-multimodal-product-similarity - 安装完成后,直接呼叫该 Skill 的名称或使用
/linkfox-multimodal-product-similarity触发 - 根据 Skill 的参数说明提供必要输入,即可获得结构化输出
Multimodal Product Similarity 是什么?
多模态产品图片相似度分析与分组。当用户提到产品图片相似度、视觉分组、查找外观相似的商品、基于图片去重、竞品同款检测、同款商品聚类、按外观分组、image similarity, product image comparison, visual clustering, same-style recognition,... 它是一个面向 Claude Code / OpenClaw 的 AI Agent Skill 插件,目前累计下载 77 次。
如何安装 Multimodal Product Similarity?
在 OpenClaw 或 Claude Code 对话框中运行命令「/install linkfox-multimodal-product-similarity」即可一键安装,无需额外配置。
Multimodal Product Similarity 是免费的吗?
是的,Multimodal Product Similarity 完全免费,采用 MIT-0 许可证,可自由下载、安装和使用。
Multimodal Product Similarity 支持哪些平台?
Multimodal Product Similarity 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 Multimodal Product Similarity?
由 linkfox-ai(@linkfox-ai)开发并维护,当前版本 v1.0.0。