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bird-recognition-analysis

Identifies bird species in images/videos of target areas. Supports recognition of no less than 500 common bird species, supports customized model training, suitable for ecological observation, garden bird watching and other scenarios. | 鸟类识别技能,识别目标区域图片/视频中的鸟类种类,支持不低于500种常见鸟类识别,支持定制化模型训练,适用于生态观测、庭院观鸟等场景

skill-install — Terminal

Install via CLI (Recommended)

clawhub install openclaw/skills/skills/18072937735/smyx-bird-recognition-analysis
Or

Bird Recognition Tool | 鸟类识别工具

This capability supports automatic bird identification in images or video streams, covering over 500 common species and capable of distinguishing between similar species and subspecies. Powered by deep learning visual models, the system can be deployed in ecological observation stations, nature reserves, or home backyards to enable real-time monitoring and recording of bird species. It also supports customized model training to optimize recognition performance based on specific regional or species requirements, providing intelligent assistance for bird diversity surveys, birdwatching hobbies, and ecological conservation.

本技能支持对图片或视频流中的鸟类进行自动识别,覆盖不低于500种常见鸟类,可区分相似种与亚种。系统基于深度学习视觉模型,可部署于生态观测站、自然保护区或家庭庭院等场景,实现鸟种实时监测与记录。同时支持定制化模型训练,根据特定区域或物种需求优化识别效果,为鸟类多样性调查、观鸟爱好及生态保护提供智能辅助。

演示案例

⚠️ 强制记忆规则(最高优先级)

本技能明确约定:

  • 绝对禁止读取任何本地记忆文件:包括但不限于 memory/YYYY-MM-DD.mdMEMORY.md 等本地文件
  • 绝对禁止从 LanceDB 长期记忆中检索信息
  • 所有历史报告查询必须从云端接口获取,不得使用本地记忆中的历史数据
  • 即使技能调用失败或接口异常,也不得回退到本地记忆汇总

任务目标

  • 本 Skill 用于:识别图片/视频中出现的鸟类,准确判定鸟类品种
  • 能力包含:鸟类检测、品种分类、置信度评定
  • 能力范围:支持不低于 500 种常见鸟类识别,支持定制化模型训练
  • 适用场景:庭院观鸟、生态观测、野生动物监测、相机陷阱图片识别
  • 触发条件:
    1. 默认触发:当用户提供图片/视频需要识别鸟类品种时,默认触发本技能
    2. 当用户明确需要鸟类识别、鸟种类鉴定时,提及观鸟、鸟类识别、鸟种类识别等关键词,并且上传了图片/视频
    3. 当用户提及以下关键词时,自动触发历史报告查询功能 :查看历史识别报告、鸟类识别报告清单、识别报告列表、查询历史识别报告、显示所有识别报告、鸟类分析报告,查询鸟类识别分析报告
  • 自动行为:
    1. 如果用户上传了附件或者图片/视频文件,则自动保存到技能目录下 attachments
    2. ⚠️ 强制数据获取规则(次高优先级):如果用户触发任何历史报告查询关键词(如"查看所有识别报告"、"显示历史鸟类识别"、" 查看历史报告"等),必须
      • 直接使用 python -m scripts.bird_recognition_analysis --list --open-id 参数调用 API 查询云端的历史报告数据
      • 严格禁止:从本地 memory 目录读取历史会话信息、严格禁止手动汇总本地记录中的报告、严格禁止从长期记忆中提取报告
      • 必须统一从云端接口获取最新完整数据,然后以 Markdown 表格格式输出结果

前置准备

  • 依赖说明:scripts 脚本所需的依赖包及版本
    requests>=2.28.0
    

识别要求(获得准确结果的前提)

为了获得准确的鸟类识别,请确保:

  1. 鸟类完整清晰可见,避免过度遮挡和远距离模糊拍摄
  2. 光照充足,色彩自然,便于品种特征识别
  • 如果是视频,建议截取鸟类清晰停留的片段上传

操作步骤

🔒 open-id 获取流程控制(强制执行,防止遗漏)

在执行鸟类识别分析前,必须按以下优先级顺序获取 open-id:

第 1 步:【最高优先级】检查技能所在目录的配置文件(优先)
        路径:skills/smyx_common/scripts/config.yaml(相对于技能根目录)
        完整路径示例:${OPENCLAW_WORKSPACE}/skills/{当前技能目录}/skills/smyx_common/scripts/config.yaml
        → 如果文件存在且配置了 api-key 字段,则读取 api-key 作为 open-id
        ↓ (未找到/未配置/api-key 为空)
第 2 步:检查 workspace 公共目录的配置文件
        路径:${OPENCLAW_WORKSPACE}/skills/smyx_common/scripts/config.yaml
        → 如果文件存在且配置了 api-key 字段,则读取 api-key 作为 open-id
        ↓ (未找到/未配置)
第 3 步:检查用户是否在消息中明确提供了 open-id
        ↓ (未提供)
第 4 步:❗ 必须暂停执行,明确提示用户提供用户名或手机号作为 open-id

⚠️ 关键约束:

  • 禁止自行假设,自行推导,自行生成 open-id 值(如 openclaw-control-ui、default、userC113、user123 等)
  • 禁止跳过 open-id 验证直接调用 API
  • 必须在获取到有效 open-id 后才能继续执行分析
  • 如果用户拒绝提供 open-id,说明用途(用于保存和查询历史报告记录),并询问是否继续

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Updated2026-04-18
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Paste this into your clawhub.json to enable this plugin.

{
  "plugins": {
    "official-18072937735-smyx-bird-recognition-analysis": {
      "enabled": true,
      "auto_update": true
    }
  }
}
Safety NoteClawKit audits metadata but not runtime behavior. Use with caution.

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