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π Overview
This repository contains optimized AI models for XAIVA Kiosk Analysis System - an intelligent workplace safety and compliance monitoring solution. The models are specifically designed for real-time analysis in industrial environments.
π Model Collection
π― Detection Models
- best_0327.engine(131MB)- Type: Object Detection (TensorRT Optimized)
- Purpose: Safety equipment detection (caps, masks, gloves, boots, etc.)
- Input: RGB images
- Output: Bounding boxes with class predictions
 
π€ Human Analysis Models
- yolo11n-seg.engine(10.2MB)- Type: Instance Segmentation (TensorRT Optimized)
- Purpose: Person segmentation for workspace analysis
- Architecture: YOLOv11 Nano
- Output: Pixel-level person masks
 
- yolo11n-pose.engine(10.1MB)- Type: Pose Estimation (TensorRT Optimized)
- Purpose: Human pose detection for safety compliance
- Architecture: YOLOv11 Nano
- Output: 17-point keypoint coordinates
 
π Face Recognition Models
- facedet_fp16.trt(10.3MB)- Type: Face Detection (TensorRT FP16)
- Purpose: Real-time face detection in workplace
- Optimization: Half-precision for speed
- Output: Face bounding boxes with landmarks
 
- adaface_ir101.trt(132MB)- Type: Face Recognition (TensorRT Optimized)
- Purpose: Employee identification and access control
- Architecture: AdaFace with ResNet-101 backbone
- Output: 512-dimensional face embeddings
 
π οΈ Usage
Prerequisites
pip install torch torchvision
pip install ultralytics
pip install opencv-python
pip install tensorrt
ποΈ System Requirements
- GPU: NVIDIA GPU with Compute Capability 6.0+
- VRAM: 8GB+ recommended
- CUDA: 11.0+
- TensorRT: 8.0+
- Python: 3.8+
π Model Files
models/
βββ best_0327.engine          # Main detection model
βββ yolo11n-seg.engine        # Person segmentation
βββ yolo11n-pose.engine       # Pose estimation
βββ facedet_fp16.trt          # Face detection
βββ adaface_ir101.trt         # Face recognition
π§ Integration
These models are designed to work together as part of the XAIVA Kiosk system:
- Face Detection β Face Recognition for employee identification
- Detection β Safety equipment compliance checking
- Segmentation β Workspace occupancy analysis
- Pose Estimation β Safety posture monitoring
π’ About XIILAB
Developed by XIILAB - Advanced AI solutions for industrial automation and safety.
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