A complete machine vision platform for building, training, and deploying inspection models
Browse images from local storage in-place
Define ROIs & choose model type
GPU-accelerated with live metrics
Multi-model batch inspection
Review, dispute & retrain
Click any model to learn more
Pass/fail classification using CNN architectures
Train with labeled good and defective images. Supports ResNet, EfficientNet, and MobileNet backbones with configurable hyperparameters.
Anomaly detection using only good images
Industry-leading anomaly detection that learns what "normal" looks like. Produces pixel-level heatmaps showing exact defect locations. Requires only good samples for training.
Detect anomalies via reconstruction error
Trains on normal images only — any deviation from the learned pattern triggers an alert. Uses a bottleneck architecture to learn compressed representations.
Locate and classify defects with bounding boxes
Identify multiple defect types and their exact positions in a single pass. Supports nano to large model sizes for the right speed/accuracy tradeoff.
Define what to inspect by drawing regions of interest (ROIs) on a golden reference image. Group identical regions across templates to share datasets and models.
Built API-first for seamless production integration
Full-featured API with Swagger docs. Every capability is accessible programmatically.
Trigger inspections, receive results, and automate quality gates in your MES.
Direct PLC communication for in-line inspection trigger workflows.
Auto-inspect new images as they arrive in configured directories.
Traditional systems are static. Sentinel learns from every inspection through its feedback pipeline.
Schedule a personalized demo to see how Sentinel fits your production environment.
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