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photo-content-recognition-curation-expert

@erichowens/some_claude_skills
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Expert in photo content recognition, intelligent curation, and quality filtering. Specializes in face/animal/place recognition, perceptual hashing for de-duplication, screenshot/meme detection, burst photo selection, and quick indexing strategies. Activate on "face recognition", "face clustering", "perceptual hash", "near-duplicate", "burst photo", "screenshot detection", "photo curation", "photo indexing", "NSFW detection", "pet recognition", "DINOHash", "HDBSCAN faces". NOT for GPS-based location clustering (use event-detection-temporal-intelligence-expert), color palette extraction (use color-theory-palette-harmony-expert), semantic image-text matching (use clip-aware-embeddings), or video analysis/frame extraction.

Install Skill

1Download skill
2Enable skills in Claude

Open claude.ai/settings/capabilities and find the "Skills" section

3Upload to Claude

Click "Upload skill" and select the downloaded ZIP file

Note: Please verify skill by going through its instructions before using it.

SKILL.md

name photo-content-recognition-curation-expert
description Expert in photo content recognition, intelligent curation, and quality filtering. Specializes in face/animal/place recognition, perceptual hashing for de-duplication, screenshot/meme detection, burst photo selection, and quick indexing strategies. Activate on 'face recognition', 'face clustering', 'perceptual hash', 'near-duplicate', 'burst photo', 'screenshot detection', 'photo curation', 'photo indexing', 'NSFW detection', 'pet recognition', 'DINOHash', 'HDBSCAN faces'. NOT for GPS-based location clustering (use event-detection-temporal-intelligence-expert), color palette extraction (use color-theory-palette-harmony-expert), semantic image-text matching (use clip-aware-embeddings), or video analysis/frame extraction.
allowed-tools Read,Write,Edit,Bash,Grep,Glob,mcp__firecrawl__firecrawl_search,WebFetch
category AI & Machine Learning
tags face-recognition, deduplication, curation, indexing, nsfw
pairs-with [object Object], [object Object]

Photo Content Recognition & Curation Expert

Expert in photo content analysis and intelligent curation. Combines classical computer vision with modern deep learning for comprehensive photo analysis.

When to Use This Skill

Use for:

  • Face recognition and clustering (identifying important people)
  • Animal/pet detection and clustering
  • Near-duplicate detection using perceptual hashing (DINOHash, pHash, dHash)
  • Burst photo selection (finding best frame from 10-50 shots)
  • Screenshot vs photo classification
  • Meme/download filtering
  • NSFW content detection
  • Quick indexing for large photo libraries (10K+)
  • Aesthetic quality scoring (NIMA)

NOT for:

  • GPS-based location clustering → event-detection-temporal-intelligence-expert
  • Color palette extraction → color-theory-palette-harmony-expert
  • Semantic image-text matching → clip-aware-embeddings
  • Video analysis or frame extraction

Quick Decision Tree

What do you need to recognize/filter?
│
├─ Duplicate photos? ─────────────────────────────── Perceptual Hashing
│   ├─ Exact duplicates? ──────────────────────────── dHash (fastest)
│   ├─ Brightness/contrast changes? ───────────────── pHash (DCT-based)
│   ├─ Heavy crops/compression? ───────────────────── DINOHash (2025 SOTA)
│   └─ Production system? ─────────────────────────── Hybrid (pHash → DINOHash)
│
├─ People in photos? ─────────────────────────────── Face Clustering
│   ├─ Known thresholds? ──────────────────────────── Apple-style Agglomerative
│   └─ Unknown data distribution? ─────────────────── HDBSCAN
│
├─ Pets/Animals? ─────────────────────────────────── Pet Recognition
│   ├─ Detection? ─────────────────────────────────── YOLOv8
│   └─ Individual clustering? ─────────────────────── CLIP + HDBSCAN
│
├─ Best from burst? ──────────────────────────────── Burst Selection
│   └─ Score: sharpness + face quality + aesthetics
│
└─ Filter junk? ──────────────────────────────────── Content Detection
    ├─ Screenshots? ───────────────────────────────── Multi-signal classifier
    └─ NSFW? ──────────────────────────────────────── Safety classifier

Core Concepts

1. Perceptual Hashing for Near-Duplicate Detection

Problem: Camera bursts, re-saved images, and minor edits create near-duplicates.

Solution: Perceptual hashes generate similar values for visually similar images.

Method Comparison:

Method Speed Robustness Best For
dHash Fastest Low Exact duplicates
pHash Fast Medium Brightness/contrast changes
DINOHash Slower High Heavy crops, compression
Hybrid Medium Very High Production systems

Hybrid Pipeline (2025 Best Practice):

  1. Stage 1: Fast pHash filtering (eliminates obvious non-duplicates)
  2. Stage 2: DINOHash refinement (accurate detection)
  3. Stage 3: Optional Siamese ViT verification

Hamming Distance Thresholds:

  • Conservative: ≤5 bits different = duplicates
  • Aggressive: ≤10 bits different = duplicates

Deep dive: references/perceptual-hashing.md


2. Face Recognition & Clustering

Goal: Group photos by person without user labeling.

Apple Photos Strategy (2021-2025):

  1. Extract face + upper body embeddings (FaceNet, 512-dim)
  2. Two-pass agglomerative clustering
  3. Conservative first pass (threshold=0.4, high precision)
  4. HAC second pass (threshold=0.6, increase recall)
  5. Incremental updates for new photos

HDBSCAN Alternative:

  • No threshold tuning required
  • Robust to noise
  • Better for unknown data distributions

Parameters:

Setting Agglomerative HDBSCAN
Pass 1 threshold 0.4 (cosine) -
Pass 2 threshold 0.6 (cosine) -
Min cluster size - 3 photos
Metric cosine cosine

Deep dive: references/face-clustering.md


3. Burst Photo Selection

Problem: Burst mode creates 10-50 nearly identical photos.

Multi-Criteria Scoring:

Criterion Weight Measurement
Sharpness 30% Laplacian variance
Face Quality 35% Eyes open, smiling, face sharpness
Aesthetics 20% NIMA score
Position 10% Middle frames bonus
Exposure 5% Histogram clipping check

Burst Detection: Photos within 0.5 seconds of each other.

Deep dive: references/content-detection.md


4. Screenshot Detection

Multi-Signal Approach:

Signal Confidence Description
UI elements 0.85 Status bars, buttons detected
Perfect rectangles 0.75 >5 UI buttons (90° angles)
High text 0.70 >25% text coverage (OCR)
No camera EXIF 0.60 Missing Make/Model/Lens
Device aspect 0.60 Exact phone screen ratio
Perfect sharpness 0.50 >2000 Laplacian variance

Decision: Confidence >0.6 = screenshot

Deep dive: references/content-detection.md


5. Quick Indexing Pipeline

Goal: Index 10K+ photos efficiently with caching.

Features Extracted:

  • Perceptual hashes (de-duplication)
  • Face embeddings (people clustering)
  • CLIP embeddings (semantic search)
  • Color palettes
  • Aesthetic scores

Performance (10K photos, M1 MacBook Pro):

Operation Time
Perceptual hashing 2 min
CLIP embeddings 3 min (GPU)
Face detection 4 min
Color palettes 1 min
Aesthetic scoring 2 min (GPU)
Clustering + dedup 1 min
Total (first run) ~13 min
Incremental <1 min

Deep dive: references/photo-indexing.md


Common Anti-Patterns

Anti-Pattern: Euclidean Distance for Face Embeddings

What it looks like:

distance = np.linalg.norm(embedding1 - embedding2)  # WRONG

Why it's wrong: Face embeddings are normalized; cosine similarity is the correct metric.

What to do instead:

from scipy.spatial.distance import cosine
distance = cosine(embedding1, embedding2)  # Correct

Anti-Pattern: Fixed Clustering Thresholds

What it looks like: Using same distance threshold for all face clusters.

Why it's wrong: Different people have varying intra-class variance (twins vs. diverse ages).

What to do instead: Use HDBSCAN for automatic threshold discovery, or two-pass clustering with conservative + relaxed passes.

Anti-Pattern: Raw Pixel Comparison for Duplicates

What it looks like:

is_duplicate = np.allclose(img1, img2)  # WRONG

Why it's wrong: Re-saved JPEGs, crops, brightness changes create pixel differences.

What to do instead: Perceptual hashing (pHash or DINOHash) with Hamming distance.

Anti-Pattern: Sequential Face Detection

What it looks like: Processing faces one photo at a time without batching.

Why it's wrong: GPU underutilization, 10x slower than batched.

What to do instead: Batch process images (batch_size=32) with GPU acceleration.

Anti-Pattern: No Confidence Filtering

What it looks like:

for face in all_detected_faces:
    cluster(face)  # No filtering

Why it's wrong: Low-confidence detections create noise clusters (hands, objects).

What to do instead: Filter by confidence (threshold 0.9 for faces).

Anti-Pattern: Forcing Every Photo into Clusters

What it looks like: Assigning noise points to nearest cluster.

Why it's wrong: Solo appearances shouldn't pollute person clusters.

What to do instead: HDBSCAN/DBSCAN naturally identifies noise (label=-1). Keep noise separate.


Quick Start

from photo_curation import PhotoCurationPipeline

pipeline = PhotoCurationPipeline()

# Index photo library
index = pipeline.index_library('/path/to/photos')

# De-duplicate
duplicates = index.find_duplicates()
print(f"Found {len(duplicates)} duplicate groups")

# Cluster faces
face_clusters = index.cluster_faces()
print(f"Found {len(face_clusters)} people")

# Select best from bursts
best_photos = pipeline.select_best_from_bursts(index)

# Filter screenshots
real_photos = pipeline.filter_screenshots(index)

# Curate for collage
collage_photos = pipeline.curate_for_collage(index, target_count=100)

Python Dependencies

torch transformers facenet-pytorch ultralytics hdbscan opencv-python scipy numpy scikit-learn pillow pytesseract

Integration Points

  • event-detection-temporal-intelligence-expert: Provides temporal event clustering for event-aware curation
  • color-theory-palette-harmony-expert: Extracts color palettes for visual diversity
  • collage-layout-expert: Receives curated photos for assembly
  • clip-aware-embeddings: Provides CLIP embeddings for semantic search and DeepDBSCAN

References

  1. DINOHash (2025): "Adversarially Fine-Tuned DINOv2 Features for Perceptual Hashing"
  2. Apple Photos (2021): "Recognizing People in Photos Through Private On-Device ML"
  3. HDBSCAN: "Hierarchical Density-Based Spatial Clustering" (2013-2025)
  4. Perceptual Hashing: dHash (Neal Krawetz), DCT-based pHash

Version: 2.0.0 Last Updated: November 2025