--- title: Anomaly Detection API emoji: 🔍 colorFrom: blue colorTo: red sdk: docker pinned: false license: mit --- # 🔍 Anomaly Detection API Real-time anomaly detection for electrical components using PatchCore + OpenCV classification. ## 🚀 Quick Start ### API Endpoint **POST** `/infer` **Request:** ```json { "image_url": "https://example.com/your-image.jpg" } ``` **Response:** ```json { "label": "Normal", "boxed_url": "https://cloudinary.com/boxed_image.jpg", "mask_url": "https://cloudinary.com/anomaly_mask.png", "filtered_url": "https://cloudinary.com/filtered_anomalies.png", "boxes": [] } ``` ### Example Usage ```bash curl -X POST "https://YOUR_USERNAME-anomaly-detection-api.hf.space/infer" \ -H "Content-Type: application/json" \ -d '{"image_url": "https://example.com/test.jpg"}' ``` ```python import requests response = requests.post( "https://YOUR_USERNAME-anomaly-detection-api.hf.space/infer", json={"image_url": "https://example.com/test.jpg"} ) result = response.json() print(f"Classification: {result['label']}") print(f"Boxed Image: {result['boxed_url']}") ``` ## 📋 Classification Labels - **Normal** - No anomalies detected - **Full Wire Overload** - Entire wire showing overload - **Point Overload (Faulty)** - Localized overload points ## 🔧 Technical Details - **Model:** PatchCore (anomaly detection) - **Classification:** OpenCV-based heuristics - **Response Time:** ~5 seconds - **Max Image Size:** Unlimited (auto-resized) ## 🌐 Endpoints | Endpoint | Method | Description | |----------|--------|-------------| | `/` | GET | API documentation | | `/health` | GET | Health check | | `/infer` | POST | Run inference | ## 📦 Output Files All processed images are uploaded to Cloudinary: - **boxed_url:** Original image with bounding boxes - **mask_url:** Grayscale anomaly heatmap - **filtered_url:** Filtered image showing only anomalous regions ## 🛠️ Built With - PyTorch 2.4.1 - Anomalib (PatchCore) - OpenCV - Flask - Cloudinary ## 📄 License MIT License