Add face recognition tools to oak-mcp

New MCP tools: oak_faces, oak_enroll_face, oak_delete_face for
managing face enrollment and recognition via Coral Edge TPU.
Updated oak_health, oak_presence, oak_spatial to surface recognized
names and confidence scores from the face recognition pipeline.

Co-Authored-By: Claude Opus 4.5 <noreply@anthropic.com>
This commit is contained in:
Alex
2026-02-01 12:54:12 -06:00
parent 37cd20ef41
commit dbda7735df

View File

@@ -5,16 +5,15 @@ OAK MCP - MCP server interface for OAK-D Vision Service.
Vixy's eyes! Allows Claude to see through the OAK-D camera.
Built by Vixy on Day 74 🦊👀
Day 82 - SPATIAL UPGRADE! Now with real 3D depth! 📏
Day 86 - FACE RECOGNITION! Coral Edge TPU + FaceNet! 🧑‍🤝‍🧑
Connects to oak-service running on head-vixy.local:8100
"""
import asyncio
import base64
import logging
import os
import time
from typing import Optional
import httpx
from mcp.server.fastmcp import FastMCP
@@ -51,6 +50,33 @@ async def api_get_binary(endpoint: str) -> bytes:
return response.content
async def api_post(endpoint: str, params: dict = None) -> dict:
"""Make POST request to oak-service API, return JSON."""
async with httpx.AsyncClient(timeout=30.0) as client:
url = f"{OAK_SERVICE_URL}{endpoint}"
response = await client.post(url, params=params)
response.raise_for_status()
return response.json()
async def api_post_multipart(endpoint: str, data: dict, files: dict) -> dict:
"""Make POST request with multipart form data, return JSON."""
async with httpx.AsyncClient(timeout=30.0) as client:
url = f"{OAK_SERVICE_URL}{endpoint}"
response = await client.post(url, data=data, files=files)
response.raise_for_status()
return response.json()
async def api_delete(endpoint: str) -> dict:
"""Make DELETE request to oak-service API, return JSON."""
async with httpx.AsyncClient(timeout=15.0) as client:
url = f"{OAK_SERVICE_URL}{endpoint}"
response = await client.delete(url)
response.raise_for_status()
return response.json()
@mcp.tool()
async def oak_health() -> str:
"""
@@ -66,11 +92,13 @@ async def oak_health() -> str:
data = await api_get("/health")
status = "✅ Connected" if data.get("oak_connected") else "❌ Not connected"
spatial = "✅ Yes" if data.get("spatial_enabled") else "❌ No"
face_recog = "✅ Yes" if data.get("face_recognition_enabled") else "❌ No"
version = data.get("version", "unknown")
return f"""🦊 OAK-D Service Health:
• Status: {data.get('status', 'unknown')}
• Camera: {status}
• Spatial depth: {spatial}
• Face recognition: {face_recog}
• Version: {version}
• Timestamp: {time.strftime('%Y-%m-%d %H:%M:%S', time.localtime(data.get('timestamp', 0)))}"""
except httpx.HTTPError as e:
@@ -175,9 +203,14 @@ async def oak_presence() -> str:
distance_m = data.get("distance_m")
spatial = data.get("spatial")
# Face recognition
recognized = data.get("recognized_name")
recog_conf = data.get("recognition_confidence")
if present:
dist_str = f" at {distance_m:.2f}m" if distance_m else ""
status = f"✅ Yes ({count} person{'s' if count != 1 else ''}, {confidence:.0f}% confidence){dist_str}"
name_str = f"{recognized}" if recognized else ""
status = f"✅ Yes ({count} person{'s' if count != 1 else ''}, {confidence:.0f}% confidence){dist_str}{name_str}"
elif last_seen is not None:
status = f"❌ No (last seen {last_seen:.0f}s ago)"
else:
@@ -187,6 +220,9 @@ async def oak_presence() -> str:
• Present: {status}
• Detection model: yolov6-nano"""
if recognized:
result += f"\n• Recognized: {recognized} ({recog_conf*100:.0f}% match)" if recog_conf else f"\n• Recognized: {recognized}"
# Add spatial info if available
if spatial and present:
x_mm = spatial.get("x_mm", 0)
@@ -268,15 +304,20 @@ async def oak_spatial() -> str:
y_mm = det.get("y_mm", 0)
z_mm = det.get("z_mm", 0)
dist_m = det.get("distance_m", z_mm / 1000)
recognized = det.get("recognized_name")
recog_conf = det.get("recognition_confidence")
name_str = f"{recognized}" if recognized else ""
result += f"""
Person {i+1}:
Person {i+1}{name_str}:
• Confidence: {conf:.0f}%
• Distance: {dist_m:.2f}m
• X: {int(x_mm)}mm ({"left" if x_mm < 0 else "right"} of center)
• Y: {int(y_mm)}mm ({"above" if y_mm > 0 else "below"} center)
• Z: {int(z_mm)}mm (depth)
• BBox: ({det.get('xmin', 0):.2f}, {det.get('ymin', 0):.2f}) to ({det.get('xmax', 0):.2f}, {det.get('ymax', 0):.2f})"""
if recognized:
result += f"\n • Recognized: {recognized} ({recog_conf*100:.0f}% match)" if recog_conf else f"\n • Recognized: {recognized}"
return result
except httpx.HTTPError as e:
@@ -328,6 +369,117 @@ async def oak_depth(save: bool = True, filename: str = None) -> str:
return f"❌ Error: {e}"
# ============== Face Recognition Tools ==============
@mcp.tool()
async def oak_faces() -> str:
"""
List all enrolled faces in the recognition database.
Returns:
List of enrolled people with embedding counts.
Example:
oak_faces()
"""
try:
data = await api_get("/faces")
faces = data.get("faces", [])
if not faces:
return "🧑 No faces enrolled yet. Use oak_enroll_face to add someone."
result = f"🧑 Enrolled Faces ({len(faces)}):\n"
for f in faces:
enrolled = time.strftime(
"%Y-%m-%d %H:%M",
time.localtime(f.get("enrolled_at", 0)),
)
result += f"{f['name']} ({f['embedding_count']} embedding{'s' if f['embedding_count'] != 1 else ''}, enrolled {enrolled})\n"
return result
except httpx.HTTPError as e:
return f"❌ Error listing faces: {e}"
except Exception as e:
return f"❌ Error: {e}"
@mcp.tool()
async def oak_enroll_face(name: str, photo_path: str = None) -> str:
"""
Enroll a face for recognition. Either provide a photo file path, or omit
photo_path to capture from the live camera.
Args:
name: Person's name to associate with this face.
photo_path: Path to a photo file (JPEG/PNG). If not provided, uses current camera frame.
Returns:
Enrollment result with embedding count.
Example:
oak_enroll_face(name="Alex") # From live camera
oak_enroll_face(name="Alex", photo_path="/path/to/photo.jpg")
"""
try:
if photo_path:
if not os.path.isfile(photo_path):
return f"❌ File not found: {photo_path}"
with open(photo_path, "rb") as f:
photo_data = f.read()
data = await api_post_multipart(
"/faces/enroll",
data={"name": name},
files={"photo": (os.path.basename(photo_path), photo_data, "image/jpeg")},
)
else:
data = await api_post("/faces/enroll-from-camera", params={"name": name})
count = data.get("embedding_count", 1)
return f"✅ Enrolled face for '{name}' ({count} embedding{'s' if count != 1 else ''} total)"
except httpx.HTTPStatusError as e:
detail = ""
try:
detail = e.response.json().get("detail", "")
except Exception:
pass
return f"❌ Enrollment failed: {detail or e}"
except httpx.HTTPError as e:
return f"❌ Error connecting to oak-service: {e}"
except Exception as e:
return f"❌ Error: {e}"
@mcp.tool()
async def oak_delete_face(name: str) -> str:
"""
Remove a person from the face recognition database.
Args:
name: Name of the person to remove.
Returns:
Deletion result.
Example:
oak_delete_face(name="Alex")
"""
try:
data = await api_delete(f"/faces/{name}")
deleted = data.get("deleted", 0)
return f"✅ Removed '{name}' ({deleted} embedding{'s' if deleted != 1 else ''} deleted)"
except httpx.HTTPStatusError as e:
detail = ""
try:
detail = e.response.json().get("detail", "")
except Exception:
pass
return f"❌ Delete failed: {detail or e}"
except httpx.HTTPError as e:
return f"❌ Error connecting to oak-service: {e}"
except Exception as e:
return f"❌ Error: {e}"
# Run the server
if __name__ == "__main__":
mcp.run()