← 返回 Skills 市场
violet17

image-ocr-local-AIPC

作者 violet17 · GitHub ↗ · v1.0.0 · MIT-0
cross-platform ⚠ suspicious
176
总下载
0
收藏
0
当前安装
1
版本数
在 OpenClaw 中安装
/install image-ocr-local-aipc
功能描述
Image OCR, text recognition, extract text from image, scan document, read image text, invoice OCR, receipt OCR, contract recognition, table extraction, busin...
使用说明 (SKILL.md)

Image OCR (Windows · GLM-OCR · llama.cpp Vulkan)

Model: ggml-org/GLM-OCR-GGUF (Q8_0, HuggingFace / hf-mirror)
Inference: llama-cli (llama.cpp Vulkan prebuilt)
SKILL_VERSION: v1.0

Directory Structure (auto-created or user-specified)

\x3COCR_DIR>\                        ← auto-selected drive or user-specified (e.g. C:\image-ocr or D:\image-ocr)
├── llama.cpp\                    ← llama-cli.exe and related binaries
└── models\
    └── GLM-OCR-GGUF\
        ├── GLM-OCR-Q8_0.gguf        ← main model (~950 MB)
        └── mmproj-GLM-OCR-Q8_0.gguf ← vision projection layer (~484 MB, required)

Dependencies: Model files (GLM-OCR-Q8_0.gguf, mmproj-GLM-OCR-Q8_0.gguf) are downloaded via Python's huggingface_hub (hf download) or modelscope. If Python is not installed, Step 2 will automatically install Miniforge (recommended — lightweight, includes conda/pip, no admin rights required).


⚠️ AI Assistant Instructions

  1. Execute one command at a time; wait for output before proceeding.
  2. Stop immediately on error; refer to the Troubleshooting table at the end.
  3. Wrap all paths in double quotes.
  4. \x3COCR_DIR> is the absolute working directory path, determined after Pre-flight.
  5. Single goal: Recognize image content and return text results.

Execution flow (do not skip steps):

Pre-flight: Check working dir + llama.cpp + models      → STATUS values
Step 1:     Install / update llama.cpp (only if MISSING) → LLAMA_OK
Step 2:     Download models (only if MISSING)            → MODEL_OK
Step 3:     Process recognition result + output          → Return result

Progress reporting: Announce each step before starting, e.g.: 🔍 Pre-flight: Checking environment…


Pre-flight: Check Environment

🔍 Pre-flight: Checking working directory, llama.cpp, and model files…

Locate Working Directory

# ── Fix encoding for non-ASCII paths (required at the start of every PowerShell script) ──
chcp 65001 | Out-Null
[Console]::OutputEncoding = [System.Text.Encoding]::UTF8
$OutputEncoding = [System.Text.Encoding]::UTF8

# ── Optional: if you already have a path, fill it in; leave blank to auto-select drive ──
$customOcrDir = ""   # e.g. "C:\image-ocr" or "D:\image-ocr"
# ──────────────────────────────────────────────────────────────────────────────────────────

if ($customOcrDir -and (Test-Path (Split-Path $customOcrDir))) {
    $OCR_DIR = $customOcrDir
    New-Item -ItemType Directory -Force -Path $OCR_DIR | Out-Null
    Write-Host "OCR_DIR=$OCR_DIR (user-specified)"
} else {
    $best = Get-PSDrive -PSProvider FileSystem |
        Where-Object { $_.Free -gt 0 } |
        Sort-Object Free -Descending |
        Select-Object -First 1
    $OCR_DIR = Join-Path "$($best.Root)" "image-ocr"
    New-Item -ItemType Directory -Force -Path $OCR_DIR | Out-Null
    Write-Host "OCR_DIR=$OCR_DIR (auto-selected drive: $($best.Name))"
}
$env:OCR_DIR = $OCR_DIR

Success criteria: Output contains a line with OCR_DIR=. Record the path and substitute \x3COCR_DIR> in subsequent steps.


Check llama.cpp

$llamaDir = "\x3COCR_DIR>\llama.cpp"
$cliExe   = "$llamaDir\llama-cli.exe"

if (Test-Path $cliExe) {
    $ver = & $cliExe --version 2>&1
    if ($ver -match "version:\s*(\d+)") {
        $build = [int]$Matches[1]
        if ($build -ge 8400) {
            Write-Host "OK: llama.cpp build $build >= b8400, skip Step 1"
            Write-Host "LLAMA_STATUS=READY"
        } else {
            Write-Host "WARN: llama.cpp build $build \x3C b8400, upgrade required"
            Write-Host "LLAMA_STATUS=OUTDATED"
        }
    }
} else {
    Write-Host "ERROR: llama-cli.exe not found"
    Write-Host "LLAMA_STATUS=MISSING"
    Write-Host "   Checked path: $llamaDir"
}

Check Model Files

$modelDir   = "\x3COCR_DIR>\models\GLM-OCR-GGUF"
$modelFile  = "$modelDir\GLM-OCR-Q8_0.gguf"
$mmprojFile = "$modelDir\mmproj-GLM-OCR-Q8_0.gguf"

$modelOk  = Test-Path $modelFile
$mmprojOk = Test-Path $mmprojFile

if ($modelOk -and $mmprojOk) {
    Write-Host "OK: GLM-OCR model files ready, skip Step 2"
    Write-Host "MODEL_STATUS=READY"
} else {
    if (-not $modelOk)  { Write-Host "ERROR: Missing GLM-OCR-Q8_0.gguf" }
    if (-not $mmprojOk) { Write-Host "ERROR: Missing mmproj-GLM-OCR-Q8_0.gguf" }
    Write-Host "MODEL_STATUS=MISSING"
    Write-Host "   Checked path: $modelDir"
}
Output Action
Both READY ✅ Skip to Step 3
LLAMA_STATUS=MISSING/OUTDATED ⬇️ Execute Step 1
MODEL_STATUS=MISSING ⬇️ Execute Step 2

Announce: ✅ Environment check complete. Execute steps as needed.


Step 1: Install / Update llama.cpp Vulkan

⬇️ Step 1: Downloading and installing llama.cpp Vulkan… (only when LLAMA_STATUS=MISSING/OUTDATED)

$tag      = "b8400"   # Replace with the latest tag from https://github.com/ggml-org/llama.cpp/releases/latest
$llamaDir = "\x3COCR_DIR>\llama.cpp"
$zip      = "$env:TEMP\llama-vulkan.zip"
$url      = "https://github.com/ggml-org/llama.cpp/releases/download/$tag/llama-$tag-bin-win-vulkan-x64.zip"

Write-Host "Downloading llama.cpp $tag ..."
Invoke-WebRequest -Uri $url -OutFile $zip

New-Item -ItemType Directory -Force -Path $llamaDir | Out-Null
Expand-Archive $zip -DestinationPath $llamaDir -Force
Remove-Item $zip
Write-Host "LLAMA_INSTALL=DONE"
Output Action
LLAMA_INSTALL=DONE ✅ Continue to Step 2 to download models
Download error ⛔ Check network, or manually download from browser and extract to \x3COCR_DIR>\llama.cpp\

Announce: ✅ llama.cpp installed. Continue to Step 2 to download models.


Step 2: Download GLM-OCR Models

📦 Step 2: Checking Python and downloading GLM-OCR models… (only when MODEL_STATUS=MISSING)

Note: Models are downloaded via Python's hf download (huggingface_hub) or modelscope. The script will auto-locate any existing Python installation; if none is found, Miniforge will be installed automatically to %USERPROFILE%\miniforge3 (no admin rights required).

First-time Download Notice (required reading when MODEL_STATUS=MISSING)

Announce the following to the user, then ask whether to proceed:

📥 First-time model download is approximately 1.5 GB
   (GLM-OCR-Q8_0.gguf ~950 MB + mmproj ~484 MB).
   Estimated download time:
   • 100 Mbps connection: ~2 minutes
   •  50 Mbps connection: ~4 minutes
   •  10 Mbps connection: ~20 minutes

   Downloads support resumption — if interrupted, re-running this step
   will automatically continue from where it left off.

   ✅ Ready — start automatic download
   📂 I prefer to download manually — skip automatic download
  • User chooses automatic download → continue with Python check and download commands below
  • User chooses manual download → jump to the "Manual Download Fallback" section at the end of this step

Check Disk Space

$drive = Split-Path "\x3COCR_DIR>" -Qualifier
$free  = (Get-PSDrive ($drive.TrimEnd(':'))).Free / 1GB
Write-Host "DISK_FREE=$([math]::Round($free,1))GB"
if ($free -lt 2) {
    Write-Host "DISK_STATUS=LOW"
    Write-Host "[WARN] Less than 2 GB available — download may fail"
} else {
    Write-Host "DISK_STATUS=OK"
}
Output Action
DISK_STATUS=OK ✅ Continue to Python check
DISK_STATUS=LOW ⚠️ Ask user to free space before continuing

Check Python

# ── Optional: if you know the Python path, fill it in; leave blank to auto-search ──
$customPythonExe = ""   # e.g. "C:\Python311\python.exe"
# ──────────────────────────────────────────────────────────────────────────────────

$pythonExe = $null

# 1. User-specified path
if ($customPythonExe -and (Test-Path $customPythonExe)) {
    $ver = & $customPythonExe --version 2>&1
    Write-Host "OK: Using specified Python: $customPythonExe -> $ver"
    $pythonExe = $customPythonExe
}

# 2. Search PATH
if (-not $pythonExe) {
    foreach ($cmd in @("python", "python3", "py")) {
        if (Get-Command $cmd -ErrorAction SilentlyContinue) {
            $ver = & $cmd --version 2>&1
            Write-Host "OK: Found Python in PATH: $cmd -> $ver"
            $pythonExe = (Get-Command $cmd).Source
            break
        }
    }
}

# 3. Scan common install directories
if (-not $pythonExe) {
    $searchPaths = @(
        "$env:USERPROFILE\miniforge3\python.exe",
        "$env:USERPROFILE\miniconda3\python.exe",
        "$env:USERPROFILE\anaconda3\python.exe",
        "$env:LOCALAPPDATA\Programs\Python\Python3*\python.exe",
        "C:\Python3*\python.exe"
    )
    foreach ($pattern in $searchPaths) {
        $found = Get-Item $pattern -ErrorAction SilentlyContinue | Select-Object -First 1
        if ($found) {
            $ver = & $found.FullName --version 2>&1
            Write-Host "OK: Found Python in common directory: $($found.FullName) -> $ver"
            $pythonExe = $found.FullName
            break
        }
    }
}

if ($pythonExe) {
    $env:PYTHON_EXE = $pythonExe
    Write-Host "PYTHON_OK"
} else {
    Write-Host "ERROR: Python not found. Install Miniforge or set `$customPythonExe"
    Write-Host "PYTHON_MISSING"
}

If Python is not found, install Miniforge:

$mf = "$env:TEMP\Miniforge3-Windows-x86_64.exe"
Invoke-WebRequest `
  -Uri "https://github.com/conda-forge/miniforge/releases/latest/download/Miniforge3-Windows-x86_64.exe" `
  -OutFile $mf
Start-Process $mf -ArgumentList "/S /D=$env:USERPROFILE\miniforge3" -Wait
Remove-Item $mf
$env:PYTHON_EXE = "$env:USERPROFILE\miniforge3\python.exe"
& $env:PYTHON_EXE --version
Write-Host "PYTHON_OK"

Download Models

Option A: hf download (recommended)

& $env:PYTHON_EXE -m pip install huggingface_hub -q

# For users in China: set mirror (skip if outside China)
$env:HF_ENDPOINT = "https://hf-mirror.com"

$modelDir = "\x3COCR_DIR>\models\GLM-OCR-GGUF"
New-Item -ItemType Directory -Force -Path $modelDir | Out-Null

hf download ggml-org/GLM-OCR-GGUF `
  --include "GLM-OCR-Q8_0.gguf" "mmproj-GLM-OCR-Q8_0.gguf" `
  --local-dir $modelDir

Write-Host "MODEL_DOWNLOAD=DONE"

Option B: ModelScope (alternative for users in China)

& $env:PYTHON_EXE -m pip install modelscope -q
& $env:PYTHON_EXE -c "
from modelscope.hub.file_download import model_file_download
import os
dest = r'\x3COCR_DIR>\models\GLM-OCR-GGUF'
os.makedirs(dest, exist_ok=True)
model_file_download('ggml-org/GLM-OCR-GGUF', file_path='GLM-OCR-Q8_0.gguf', local_dir=dest)
model_file_download('ggml-org/GLM-OCR-GGUF', file_path='mmproj-GLM-OCR-Q8_0.gguf', local_dir=dest)
print('MODEL_DOWNLOAD=DONE')
"

Verify:

$modelDir = "\x3COCR_DIR>\models\GLM-OCR-GGUF"
Get-Item "$modelDir\GLM-OCR-Q8_0.gguf", "$modelDir\mmproj-GLM-OCR-Q8_0.gguf" |
  Select-Object Name, @{N='MB';E={[math]::Round($_.Length/1MB,0)}}
Output Action
MODEL_DOWNLOAD=DONE ✅ Continue to Step 3
Timeout / repeated failure ⚠️ Direct user to "Manual Download Fallback" section, or switch between Option A / B and retry

Announce: ✅ Model download complete.


Manual Download Fallback

If automatic download repeatedly fails, guide the user to download manually and place files in the correct directory:

⚠️ Automatic download failed. Please manually download the following two files:

1. GLM-OCR-Q8_0.gguf (~950 MB)
   HuggingFace: https://huggingface.co/ggml-org/GLM-OCR-GGUF/resolve/main/GLM-OCR-Q8_0.gguf
   HF Mirror:   https://hf-mirror.com/ggml-org/GLM-OCR-GGUF/resolve/main/GLM-OCR-Q8_0.gguf
   ModelScope:  https://modelscope.cn/models/ggml-org/GLM-OCR-GGUF/resolve/master/GLM-OCR-Q8_0.gguf

2. mmproj-GLM-OCR-Q8_0.gguf (~484 MB)
   HuggingFace: https://huggingface.co/ggml-org/GLM-OCR-GGUF/resolve/main/mmproj-GLM-OCR-Q8_0.gguf
   HF Mirror:   https://hf-mirror.com/ggml-org/GLM-OCR-GGUF/resolve/main/mmproj-GLM-OCR-Q8_0.gguf
   ModelScope:  https://modelscope.cn/models/ggml-org/GLM-OCR-GGUF/resolve/master/mmproj-GLM-OCR-Q8_0.gguf

Once downloaded, place both files into:
   \x3COCR_DIR>\models\GLM-OCR-GGUF\

Then re-run the Verify command to confirm the files are intact before continuing to Step 3.

Step 3: Process Recognition Result

🔍 Step 3: Processing GLM-OCR recognition result…

Determine Input Source

Situation Action
User message contains a local file path (e.g. C:\Users\...\xxx.png) ⬇️ Case A: extract path from message, call llama-cli
User uploaded an image via the interface; OpenClaw provides a temp path ⬇️ Case B: retrieve temp path from context, call llama-cli
Neither ⛔ Ask user to provide a local file path or upload an image

Case A: User Provides a Local File Path

Extract the file path from the user's message, then call llama-cli directly:

# ── Fix encoding ──
chcp 65001 | Out-Null
[Console]::OutputEncoding = [System.Text.Encoding]::UTF8
$OutputEncoding = [System.Text.Encoding]::UTF8

$imgPath = "\x3Cfile path extracted from user message>"
$m       = "\x3COCR_DIR>\models\GLM-OCR-GGUF\GLM-OCR-Q8_0.gguf"
$mm      = "\x3COCR_DIR>\models\GLM-OCR-GGUF\mmproj-GLM-OCR-Q8_0.gguf"

if (-not (Test-Path $imgPath)) {
    Write-Host "ERROR: File not found: $imgPath"
    exit 1
}

$cliExe = "\x3COCR_DIR>\llama.cpp\llama-cli.exe"
$result = & $cliExe `
  -m $m `
  --mmproj $mm `
  --image $imgPath `
  -p "Please recognize and extract all text from this image. Output the text content line by line, preserving the original layout." `
  -ngl 99 `
  --device Vulkan0 `
  -c 12000 `
  2>$null

Write-Host $result

Success criteria: stdout contains the recognized text content.


Case B: User Uploaded an Image via the Interface

OpenClaw saves uploaded images to a temporary path. Retrieve that path from context and call llama-cli the same way:

# ── Fix encoding ──
chcp 65001 | Out-Null
[Console]::OutputEncoding = [System.Text.Encoding]::UTF8
$OutputEncoding = [System.Text.Encoding]::UTF8

# imgPath is the temporary image path provided by OpenClaw in context
$imgPath = "\x3Ctemporary image path provided by OpenClaw>"
$m       = "\x3COCR_DIR>\models\GLM-OCR-GGUF\GLM-OCR-Q8_0.gguf"
$mm      = "\x3COCR_DIR>\models\GLM-OCR-GGUF\mmproj-GLM-OCR-Q8_0.gguf"

if (-not (Test-Path $imgPath)) {
    Write-Host "ERROR: File not found: $imgPath"
    exit 1
}

$cliExe = "\x3COCR_DIR>\llama.cpp\llama-cli.exe"
$result = & $cliExe `
  -m $m `
  --mmproj $mm `
  --image $imgPath `
  -p "Please recognize and extract all text from this image. Output the text content line by line, preserving the original layout." `
  -ngl 99 `
  --device Vulkan0 `
  -c 12000 `
  2>$null

Write-Host $result

Success criteria: stdout contains the recognized text content.


Format Output

Once the recognized text is obtained, process it according to the user's intent:

Scenario Handling
General text extraction Output the recognized text as-is, preserving original layout
Invoice / receipt Extract structured fields from the text; output as JSON + human-readable format
Table Reformat the recognized text as a Markdown table
Business card Extract name, title, company, phone, email, address; output as JSON
ID / certificate Output structured by original layout
Screenshot / document Organize output by paragraph
User-defined Process according to the user's stated requirements

Completion announcement:

✅ Recognition complete!
Let me know if you'd like to re-process, change the output format, or export to a file.
Situation Handling
ERROR: File not found File path does not exist — ask user to verify the path
Empty / garbled output Low image quality — ask user to retake or rescan
Blurry / low-resolution image Ask user to retake or zoom in before retrying
No text detected Inform user that no recognizable text was found in the image

Troubleshooting

Error Cause Solution
llama-cli command not found llama-cli.exe path not set correctly Verify \x3COCR_DIR>\llama.cpp\llama-cli.exe exists
ggml_vulkan: no devices found Vulkan driver not installed Update GPU driver
error: unable to open model Incorrect model path Re-run Pre-flight model check to verify path
MODEL_DOWNLOAD= no output Download interrupted Switch between Option A / B, or configure proxy
PYTHON_MISSING Python not installed Install Miniforge (see Step 2)
Garbled / blank output Low image quality Improve image quality
VRAM insufficient / crash Not enough GPU memory Lower -ngl value, or use --device none

References

安全使用建议
This skill appears to implement a local Windows OCR pipeline and will download and extract binaries and large model files into a directory you choose (or auto-selected). Before installing, verify you trust the GitHub release URL and the Hugging Face / ModelScope model source; confirm whether the model requires authentication (HUGGINGFACE_TOKEN) — the skill does not declare that but may prompt for or require a token. Expect the installer to create folders, place executables (llama-cli) and models on disk, and possibly install Miniforge/Python. If you need to hold downloads to known-good checksums or avoid automatic installers, review the PowerShell steps in SKILL.md and run them manually rather than granting autonomous execution.
功能分析
Type: OpenClaw Skill Name: image-ocr-local-aipc Version: 1.0.0 The skill automates the setup of a local OCR environment by downloading and executing binaries (`llama-cli.exe`) and installers (`Miniforge`) from GitHub repositories (github.com/ggml-org and github.com/conda-forge) via PowerShell in `SKILL.md`. While these actions are plausibly required for the stated purpose and the sources are reputable, the automated fetching and execution of remote artifacts, combined with silent software installation on the host system, constitute high-risk behaviors that could be leveraged for exploitation if the sources were compromised.
能力评估
Purpose & Capability
The name/description (local OCR with GLM-OCR and llama.cpp Vulkan) matches the instructions: creating an OCR directory, downloading a pretrained GGUF model and a llama.cpp Vulkan binary, and running local inference. No unrelated capabilities or credentials are requested in the manifest.
Instruction Scope
SKILL.md instructs the agent to run PowerShell to create directories, set an environment variable, download/extract binaries, and run inference — all expected for a local OCR installer. It does not instruct the agent to read unrelated user files or secrets. However, the instructions reference downloading model files via huggingface_hub or modelscope but do not explain authentication or consent prompts if private models or rate limits apply.
Install Mechanism
The skill uses legitimate sources: a GitHub releases URL for llama.cpp and huggingface_hub/modelscope for model downloads. These are expected for this use case. Risk: the install will write and execute binaries and large model files to disk and can automatically install Miniforge if Python is missing — benign if you trust the sources, but carries the usual risks of executing downloaded binaries.
Credentials
The declared requirements list no credentials, but the runtime instructions rely on huggingface_hub or modelscope to download model artifacts. If the model is gated or large-files require an HF token, the skill may implicitly require HUGGINGFACE_TOKEN or similar credentials (not declared). This is a proportionality mismatch and worth clarifying before use.
Persistence & Privilege
The skill does not request always:true and does not modify other skills or global agent settings. It creates files and installs software under a user-specified or auto-selected directory (normal for a local tool). It sets an environment variable in-session only.
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 image-ocr-local-aipc
  3. 安装完成后,直接呼叫该 Skill 的名称或使用 /image-ocr-local-aipc 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
image-ocr-local-aipc v1.0.0 - Initial release of local image OCR skill for Windows using the GLM-OCR model. - Recognizes and extracts text from images, supporting mixed Chinese/English. - Prioritizes Intel iGPU (Vulkan) for on-device inference, no cloud API needed. - Automatic setup: checks/installations for llama.cpp, model downloads, and environment preparation. - Supports progress announcements, user opt-in for large initial model downloads, and manual model fallback.
元数据
Slug image-ocr-local-aipc
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

image-ocr-local-AIPC 是什么?

Image OCR, text recognition, extract text from image, scan document, read image text, invoice OCR, receipt OCR, contract recognition, table extraction, busin... 它是一个面向 Claude Code / OpenClaw 的 AI Agent Skill 插件,目前累计下载 176 次。

如何安装 image-ocr-local-AIPC?

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

image-ocr-local-AIPC 是免费的吗?

是的,image-ocr-local-AIPC 完全免费,采用 MIT-0 许可证,可自由下载、安装和使用。

image-ocr-local-AIPC 支持哪些平台?

image-ocr-local-AIPC 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 image-ocr-local-AIPC?

由 violet17(@violet17)开发并维护,当前版本 v1.0.0。

💬 留言讨论