DDC_Skills_for_AI_Agents_in_Construction progress-photo-analyzer
Analyze construction site photos to track progress, detect safety issues, and compare against BIM models using computer vision.
install
source · Clone the upstream repo
git clone https://github.com/datadrivenconstruction/DDC_Skills_for_AI_Agents_in_Construction
Claude Code · Install into ~/.claude/skills/
T=$(mktemp -d) && git clone --depth=1 https://github.com/datadrivenconstruction/DDC_Skills_for_AI_Agents_in_Construction "$T" && mkdir -p ~/.claude/skills && cp -r "$T/1_DDC_Toolkit/BIM-Analysis/progress-photo-analyzer" ~/.claude/skills/datadrivenconstruction-ddc-skills-for-ai-agents-in-construction-progress-photo-a && rm -rf "$T"
manifest:
1_DDC_Toolkit/BIM-Analysis/progress-photo-analyzer/SKILL.mdsource content
Progress Photo Analyzer
Business Case
Problem Statement
Site photos are underutilized for progress tracking:
- Manual review is time-consuming
- Subjective progress assessment
- No systematic comparison to plans
- Safety issues may be missed
Solution
AI-powered photo analysis system that extracts progress information, detects safety concerns, and compares site conditions to BIM models.
Business Value
- Automation - Reduce manual photo review
- Accuracy - Objective progress measurement
- Safety - Automatic hazard detection
- Documentation - Structured photo records
Technical Implementation
import pandas as pd from datetime import datetime, date from typing import Dict, Any, List, Optional, Tuple from dataclasses import dataclass, field from enum import Enum from pathlib import Path import base64 class PhotoType(Enum): """Types of construction photos.""" PROGRESS = "progress" SAFETY = "safety" QUALITY = "quality" GENERAL = "general" DELIVERY = "delivery" class AnalysisStatus(Enum): """Analysis status.""" PENDING = "pending" ANALYZING = "analyzing" COMPLETED = "completed" FAILED = "failed" class SafetyIssue(Enum): """Detected safety issues.""" MISSING_PPE = "missing_ppe" FALL_HAZARD = "fall_hazard" HOUSEKEEPING = "housekeeping" SCAFFOLDING = "scaffolding" ELECTRICAL = "electrical" EXCAVATION = "excavation" NONE = "none" class WorkActivity(Enum): """Detected work activities.""" EXCAVATION = "excavation" FOUNDATION = "foundation" CONCRETE_POUR = "concrete_pour" STEEL_ERECTION = "steel_erection" FRAMING = "framing" ROOFING = "roofing" MEP_ROUGH = "mep_rough" DRYWALL = "drywall" FINISHES = "finishes" EXTERIOR = "exterior" UNKNOWN = "unknown" @dataclass class PhotoMetadata: """Photo metadata.""" photo_id: str filename: str capture_date: datetime location: str level: str zone: str photo_type: PhotoType photographer: str = "" gps_coordinates: Optional[Tuple[float, float]] = None file_path: str = "" @dataclass class ProgressDetection: """Detected progress information.""" work_activity: WorkActivity confidence: float description: str completion_estimate: float # 0-100% elements_visible: List[str] = field(default_factory=list) @dataclass class SafetyDetection: """Detected safety information.""" issue_type: SafetyIssue confidence: float description: str severity: str # low, medium, high location_in_image: Optional[Tuple[int, int, int, int]] = None # bounding box @dataclass class PhotoAnalysisResult: """Complete photo analysis result.""" photo_id: str metadata: PhotoMetadata analysis_date: datetime status: AnalysisStatus progress_detections: List[ProgressDetection] safety_detections: List[SafetyDetection] weather_conditions: str worker_count: int equipment_visible: List[str] quality_issues: List[str] notes: str = "" bim_comparison: Optional[Dict[str, Any]] = None class ProgressPhotoAnalyzer: """Analyze construction site photos.""" def __init__(self, project_name: str): self.project_name = project_name self.photos: Dict[str, PhotoMetadata] = {} self.results: Dict[str, PhotoAnalysisResult] = {} self._photo_counter = 0 def register_photo(self, filename: str, capture_date: datetime, location: str, level: str = "", zone: str = "", photo_type: PhotoType = PhotoType.PROGRESS, photographer: str = "", file_path: str = "") -> PhotoMetadata: """Register a photo for analysis.""" self._photo_counter += 1 photo_id = f"PH-{self._photo_counter:05d}" metadata = PhotoMetadata( photo_id=photo_id, filename=filename, capture_date=capture_date, location=location, level=level, zone=zone, photo_type=photo_type, photographer=photographer, file_path=file_path ) self.photos[photo_id] = metadata return metadata def analyze_photo(self, photo_id: str, image_data: bytes = None) -> PhotoAnalysisResult: """Analyze a registered photo.""" if photo_id not in self.photos: raise ValueError(f"Photo {photo_id} not registered") metadata = self.photos[photo_id] # Perform analysis (simulated - would use CV/AI models) progress_detections = self._detect_progress(metadata, image_data) safety_detections = self._detect_safety(metadata, image_data) weather = self._detect_weather(metadata, image_data) worker_count = self._count_workers(image_data) equipment = self._detect_equipment(image_data) result = PhotoAnalysisResult( photo_id=photo_id, metadata=metadata, analysis_date=datetime.now(), status=AnalysisStatus.COMPLETED, progress_detections=progress_detections, safety_detections=safety_detections, weather_conditions=weather, worker_count=worker_count, equipment_visible=equipment, quality_issues=[] ) self.results[photo_id] = result return result def _detect_progress(self, metadata: PhotoMetadata, image_data: bytes = None) -> List[ProgressDetection]: """Detect work progress in photo.""" # Simulated detection based on metadata detections = [] # In real implementation, this would use computer vision location_lower = metadata.location.lower() if 'foundation' in location_lower or 'basement' in location_lower: detections.append(ProgressDetection( work_activity=WorkActivity.FOUNDATION, confidence=0.85, description="Foundation work visible", completion_estimate=60.0 )) elif 'steel' in location_lower or 'structure' in location_lower: detections.append(ProgressDetection( work_activity=WorkActivity.STEEL_ERECTION, confidence=0.90, description="Structural steel installation", completion_estimate=45.0 )) elif 'roof' in location_lower: detections.append(ProgressDetection( work_activity=WorkActivity.ROOFING, confidence=0.80, description="Roofing work in progress", completion_estimate=30.0 )) else: detections.append(ProgressDetection( work_activity=WorkActivity.UNKNOWN, confidence=0.50, description="General construction activity", completion_estimate=0.0 )) return detections def _detect_safety(self, metadata: PhotoMetadata, image_data: bytes = None) -> List[SafetyDetection]: """Detect safety issues in photo.""" # Simulated detection - real implementation would use AI models detections = [] # In production, this would analyze the actual image if metadata.photo_type == PhotoType.SAFETY: # Return empty for demonstration pass return detections def _detect_weather(self, metadata: PhotoMetadata, image_data: bytes = None) -> str: """Detect weather conditions from photo.""" # Simulated - would use image analysis return "clear" def _count_workers(self, image_data: bytes = None) -> int: """Count workers visible in photo.""" # Simulated - would use person detection return 0 def _detect_equipment(self, image_data: bytes = None) -> List[str]: """Detect equipment visible in photo.""" # Simulated - would use object detection return [] def compare_to_bim(self, photo_id: str, bim_render: bytes = None) -> Dict[str, Any]: """Compare photo to BIM model render.""" if photo_id not in self.results: return {'error': 'Photo not analyzed'} # Simulated comparison comparison = { 'similarity_score': 0.75, 'alignment_quality': 'good', 'discrepancies': [], 'notes': 'Photo roughly matches BIM model' } self.results[photo_id].bim_comparison = comparison return comparison def get_progress_summary(self, from_date: date = None, to_date: date = None) -> Dict[str, Any]: """Generate progress summary from analyzed photos.""" filtered_results = list(self.results.values()) if from_date: filtered_results = [r for r in filtered_results if r.metadata.capture_date.date() >= from_date] if to_date: filtered_results = [r for r in filtered_results if r.metadata.capture_date.date() <= to_date] # Aggregate by activity by_activity = {} for result in filtered_results: for detection in result.progress_detections: activity = detection.work_activity.value if activity not in by_activity: by_activity[activity] = { 'count': 0, 'avg_completion': 0, 'photos': [] } by_activity[activity]['count'] += 1 by_activity[activity]['avg_completion'] += detection.completion_estimate by_activity[activity]['photos'].append(result.photo_id) # Calculate averages for activity in by_activity: count = by_activity[activity]['count'] if count > 0: by_activity[activity]['avg_completion'] /= count # Safety summary total_safety_issues = sum(len(r.safety_detections) for r in filtered_results) return { 'total_photos': len(filtered_results), 'date_range': { 'from': from_date.isoformat() if from_date else None, 'to': to_date.isoformat() if to_date else None }, 'by_activity': by_activity, 'safety_issues_detected': total_safety_issues, 'average_worker_count': sum(r.worker_count for r in filtered_results) / len(filtered_results) if filtered_results else 0 } def export_report(self, output_path: str): """Export analysis results to Excel.""" with pd.ExcelWriter(output_path, engine='openpyxl') as writer: # Photos list photos_data = [] for result in self.results.values(): photos_data.append({ 'Photo ID': result.photo_id, 'Filename': result.metadata.filename, 'Date': result.metadata.capture_date, 'Location': result.metadata.location, 'Level': result.metadata.level, 'Type': result.metadata.photo_type.value, 'Status': result.status.value, 'Worker Count': result.worker_count, 'Weather': result.weather_conditions }) pd.DataFrame(photos_data).to_excel(writer, sheet_name='Photos', index=False) # Progress detections progress_data = [] for result in self.results.values(): for detection in result.progress_detections: progress_data.append({ 'Photo ID': result.photo_id, 'Activity': detection.work_activity.value, 'Confidence': detection.confidence, 'Completion %': detection.completion_estimate, 'Description': detection.description }) if progress_data: pd.DataFrame(progress_data).to_excel(writer, sheet_name='Progress', index=False) # Safety detections safety_data = [] for result in self.results.values(): for detection in result.safety_detections: safety_data.append({ 'Photo ID': result.photo_id, 'Issue': detection.issue_type.value, 'Severity': detection.severity, 'Confidence': detection.confidence, 'Description': detection.description }) if safety_data: pd.DataFrame(safety_data).to_excel(writer, sheet_name='Safety', index=False) return output_path def analyze_site_photos(photo_files: List[str], project_name: str, output_path: str = None) -> Dict[str, Any]: """Quick function to analyze multiple photos.""" analyzer = ProgressPhotoAnalyzer(project_name) for file_path in photo_files: path = Path(file_path) metadata = analyzer.register_photo( filename=path.name, capture_date=datetime.now(), location="Site", photo_type=PhotoType.PROGRESS, file_path=file_path ) analyzer.analyze_photo(metadata.photo_id) summary = analyzer.get_progress_summary() if output_path: analyzer.export_report(output_path) return summary
Quick Start
# Initialize analyzer analyzer = ProgressPhotoAnalyzer("Office Tower Project") # Register and analyze photos metadata = analyzer.register_photo( filename="site_photo_001.jpg", capture_date=datetime.now(), location="Level 3 - Core", level="Level 3", zone="Zone A", photo_type=PhotoType.PROGRESS, photographer="John Smith" ) result = analyzer.analyze_photo(metadata.photo_id) print(f"Detected activity: {result.progress_detections[0].work_activity.value}") print(f"Completion estimate: {result.progress_detections[0].completion_estimate}%")
Common Use Cases
1. Daily Progress Report
from datetime import date summary = analyzer.get_progress_summary( from_date=date.today(), to_date=date.today() ) print(f"Photos analyzed today: {summary['total_photos']}")
2. Safety Monitoring
safety_photos = [r for r in analyzer.results.values() if r.safety_detections] for result in safety_photos: for issue in result.safety_detections: print(f"Safety issue: {issue.issue_type.value} - {issue.severity}")
3. Export Analysis
analyzer.export_report("photo_analysis_report.xlsx")
Resources
- DDC Book: Chapter 4.1 - Site Data Collection
- Reference: Computer Vision for Construction